Electronic
Poster Session - Diffusion & Perfusion |
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video presentation. (Not all presentations are available.)
Tuesday 8 May 2012
Exhibition Hall |
16:00 - 17:00 |
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Computer # |
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3488. |
1 |
Measurement of multi-slice
cerebral blood flow with T1-normalized arterial spin
labeling MRI using a volume RF labeling coil
Phillip Zhe Sun1, Enfeng Wang1,
Xiaoan Zhang2, and Jerry S Cheung1
1Department of Radiology, Athinoula A.
Martinos Center for Biomedical Imaging, Charlestown, MA,
United States, 2Department
of Radiology, 3rd Affiliated Hospital, Zhengzhou
University, ZhengZhou, He Nan, China
Arterial spin labeling (ASL) MRI has been increasingly
used for examining acute stroke as a research tool.
However, CBF calculation requires acquisition of T1app
map, which is significantly shorter than the intrinsic
T1 map due to concomitant RF irradiation effects. As
such, the conventional approach of normalizing with a
single T1app value may not be sufficient to characterize
regional CBF. We showed that parametric T1app /T1 map
remained reasonably homogeneous so that T1app map can be
estimated from T1 map, permitting quantitative CBF
mapping. The proposed approach has been extended for
multi-slice CBF measurement in vivo.
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3489. |
2 |
A setup for continuous
arterial spin labeling with a 4 channel radiative labeling
coil allowing for high duty cycle labeling at 7T
Wouter Koning1, Johanneke H. Bluemink1,
Esben Petersen1, Alexander Raaijmakers1,
Anke Henning2, Cornelis A.T. van den Berg1,
Jaco Zwanenburg1, Peter Luijten1,
and Dennis W.J. Klomp1
1University Medical Center, Utrecht,
Netherlands, 2ETH
Zurich, Zurich, Switzerland
A setup is presented for the use of radiative antenna’s
as external labeling coils for cASL at 7T. Four
radiative antenna’s attached to a neck pillow filled
with heavy water are used to create a B1 field in the
neck. This neck pillow can be used in combination with a
head coil for labeling during ASL experiments. SAR
calculations show that using this setup labeling pulses
for cASL can be used with a factor 5.5 longer duration
than is allowed with the use of the head coil, while
remaining within SAR safety guidelines.
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3490. |
3 |
A sequence controlled RF
pulse switch at 7T for PASL with an external labeling coil
Reiner Umathum1, and Ann-Kathrin Homagk1
1German Cancer Research Center, Heidelberg,
Germany
A sequence controlled RF pulse switch at 7T for PASL
with an external labeling coil R. Umathum, A-K. Homagk
Department of Medical Physics in Radiology, German
Cancer Research Center (DKFZ), Im Neuenheimer Feld 280,
69120 Heidelberg, Germany Monitoring cerebral blood flow
(CBF) using a separate labeling coil for pulsed arterial
spin labeling (PASL) usually requires a fully equipped
additional RF transmit channel comprising a synthesizer,
pulse modulator, power amplifier and a special interface
controller. Here we present a solution which is
transparent for the scanner hardware, solely controlled
by any pulse sequence at run time and which can produce
any pulse shape and timing scheme which the ASL imaging
sequence is capable of. First results using a water
filled head phantom indicate reduced SAR at 300 MHz.
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3491. |
4 |
DC-CASL based Quantitative
Brain Perfusion Study with a Portable RF Transmitter System
Xing Lv1, Jing Wang2, Yudong Zhang3,
Jue Zhang1, Xiaoying Wang3,
Xiaoping Hu4, and Jing Fang1
1College of Engineering, Peking University,
Beijing, Beijing, China, 2Academy
for Advanced Interdisciplinary Studies, Peking
University, Beijing, China, 3Dept.
of Radiology, Peking University First Hospital, Beijing,
China, 4Biomedical
Imaging Technology Center, Emory University, Atlanta,
GA, United States
Among all kinds of arterial spin labeling (ASL)
techniques for multi-slice perfusion imaging, Continuous
ASL with a separate coil (or Dual-coil CASL) has been
proven to have the best SNR with eliminated magnetic
transfer interference. However, Most implementations of
Dual-Coil CASL(DC-CASL) in previous reports require two
independent sets of proton RF channel and amplifier,
which are not currently available on most clinical MRI
scanners. In this study, a portable RF transmitter,
which is based on a single chip microcomputer (SCM)+
Direct Digital Synthesizer (DDS) structure, designed and
tested for non-invasive perfusion imaging in clinic. The
quantitative CBF measurement results testified the
feasibility of this setup. With its high quality
imaging, minimized size and low cost, the separated coil
based CASL setup may be valuable for further clinical
usage.
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3492. |
5 |
Quantitative Mapping of
Cerebral Blood Flow with Alternate Ascending/Descending
Directional Navigation (ALADDIN)
Sung-Hong Park1, Jeffrey W. Barker1,2,
and Kyongtae Ty Bae1
1Radiology, University of Pittsburgh,
Pittsburgh, PA, United States, 2Bioengineering,
University of Pittsburgh, Pittsburgh, PA, United States
ALADDIN is a new imaging technique that enables us to
perform interslice perfusion-weighted (PW) imaging with
no separate preparation pulse. In this article, we
investigated the feasibility of quantitative mapping of
blood perfusion with ALADDIN at various flip angles.
Sensitivity of PW signals kept increasing with flip
angle. Centric phase-encode order provided twice higher
sensitivity than linear phase-encode order. These
experimental results agreed with the simulation results.
Cerebral blood flow measured with ALADDIN was close to
the values from pulsed arterial spin labeling. The
current study helps us to optimize and quantitatively
map ALADDIN PW signals.
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3493. |
6 |
Machine learning-based
cerebral blood flow quantification for ASL MRI
Ze Wang1, Anna Rose Childress1,
and John A Detre2
1Psychiatry, University of Pennsylvania,
Philadelphia, Pennsylvania, United States, 2Neurology,
University of Pennsylvania, Philadelphia, Pennsylvania,
United States
Arterial spin labeling (ASL) is not stable across time
but no one has taken this into account during perfusion
quantification. Due to the systematic labeling and
control labeling, ASL CBF quantification is a natural
two-class data classification process. Based on this
phenomenon, we used a powerful machine learning
algorithm, the support vector machine (SVM), to extract
the spin labeling function from the ASL data and used it
for CBF quantification. The method demonstrated
significantly improved temporal SNR and spatial image
quality for CBF quantification using normal healthy
subjects’ data and data from patients with Alzheimer’s
Disease.
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3494. |
7 |
Optimal kinetic PASL
design and CBF estimation with low SNR and Rician noise
Li Zhao1, and Craig Meyer1,2
1Biomedical Engineering, University of
Virginia, Charlottesville, Virginia, United States, 2Radiology,
University of Virginia, Charlottesville, Virginia,
United States
By designing optimal observation times (TI) in dynamic
PASL, we can achieve more accurate estimation of CBF.
Here, we compare optimal designs for the high/low SNR
case, White Gaussian/Rician noise model, and the results
from L1/L2 norm estimation. The results show a) optimal
sampling design gives accurate estimation, b) low SNR,
Rician noise could result biased estimation.
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3495. |
8 |
Improved Temporal
Resolution and Reduced Geometric Distortions using
Interleaved 3D Spiral Acquisition for Arterial Spin Labeling
Imaging
Youngkyoo Jung1,2, and Megan Johnston2
1Radiology, Wake Forest School of Medicine,
Winston-Salem, NC, United States, 2Biomedical
Engineering, Wake Forest School of Medicine,
Winston-Salem, NC, United States
3D ASL imaging provides high SNR benefit over 2D
methods. Segmented 3D acquisition methods covering the
entire k-space during multiple labeling periods are
often preferred to reduce blurring in the slice encoding
direction. However, applications of the segmented
acquisition are limited to baseline perfusion imaging.
We propose an interleaved 3D spiral FLASH imaging method
that collects the entire k-space within a single
labeling period which offers high temporal resolution,
and reduces geometric distortions. We also investigated
the trade-off between the number of interleaves and SNR
benefit. The proposed method would be beneficial to
various ASL applications.
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3496. |
9 |
PASL-like Pseudo Random
Amplitude Modulation: measure transit time distribution
Xiaowei Zou1,2, and Truman R. Brown2
1Columbia University, New York, NY, United
States, 2Medical
University of South Carolina, Charleston, SC, United
States
PASL-like Pseudo Random Amplitude Modulation sequence
using echo-planar imaging acquisition to measure CBF
transit time distribution
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3497. |
10 |
Effects of background
suppression on the sensitivity of dual-echo arterial spin
labeling MRI for BOLD and CBF signal changes
Eidrees Ghariq1, Michael A. Chappell2,3,
Sophie Schmid1, Wouter M. Teeuwisse1,
Mark A. van Buchem1, Andrew G. Webb1,
and Matthias J.P. van Osch1
1C.J.Gorter Center for High Field MRI, Leiden
University Medical Center, Leiden, Zuid-Holland,
Netherlands, 2Institute
of Biomedical Engineering, University of Oxford, Oxford,
United Kingdom, 3FMRIB
Centre, University of Oxford, Oxford, United Kingdom
Dual-echo arterial spin labeling (DE-ASL) facilitates
simultaneous acquisition of BOLD and perfusion-weighted
fMRI data. Background suppression (BGS) modules are
designed to improve the low intrinsic ASL SNR, but are
believed to be undesirable in DE-ASL, because they could
decrease BOLD functional sensitivity. In this study, the
effects of BGS-pulses on the sensitivity of DE-ASL for
BOLD and CBF signal changes were studied. BGS levels of
up to 90% were achieved, thereby increasing CBF
sensitivity significantly, while loss in BOLD
sensitivity remained small, suggesting the possibility
of DE-ASL fMRI with BGS.
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3498. |
11 |
In vivo blood T1
measurements at different field strengths: How much do we
gain in ASL by moving to higher field strengths?
Xingxing ZHANG1, Esben T. Petersen2,3,
Eidrees Ghariq1, Jill de Vis2,
Andrew G. Webb1, Wouter M. Teeuwisse1,
Jeroen Hendrikse2, and Matthias J.P. van Osch1
1The C.J.Gorter Center for High Field
Magnetic Resonance, Leiden University Medical Center,
Leiden, Zuid-Holland, Netherlands, 2Department
of Radiology, University Medical Center Utrecht,
Utrecht, Utrecht, Netherlands, 3Department
of Radiotherapy, University Medical Center Utrecht,
Utrecht, Utrecht, Netherlands
Blood T1 is a crucial parameter in the ASL technique,
especially for the quantification of CBF. The increase
in blood T1 at higher field strengths is one of the main
presumed advantages of ASL at higher field MRIs. In this
study the blood T1 was measured in the sagittal sinus at
three different field strengths: 1.5T, 3T and 7T. The
main findings were that the T1 increased linearly with
field strength and that the T1 at 7T (2087ms) was lower
than previously reported.
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3499. |
12 |
Revisiting the
determination of myocardial perfusion by T1 based
ASL methods applying Look-Locker readout
Thomas Kampf1, Xavier Helluy2,
Christian Herbert Ziener3, Peter Michael
Jakob2, and Wolfgang Rudolf Bauer4
1Experimental Physics 5, Universtity of
Wuerzburg, Wuerzburg, Bavaria, Germany, 2Experimental
Physics 5, University of Wuerzburg, Germany, 3Division
of Radiology, German Cancer Research Center, Germany, 4Department
of Internal Medicine I, Universitaetsklinikum Wuerzburg,
Germany
The effect of the Look-Locker readout scheme on
myocardial perfusion measurement applying ASL methods
based on T1 mapping
is investigated. Furthermore, the effect of partially
inverting the left ventricular blood during the slice
selective inversion is considered. Significant influence
of each issue on the obtained perfusion is found.
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3500. |
13 |
Rapid estimation of
pharmacokinetic parameters can be achieved through a simple
vector projection technique applied to DCE-MRI gadolinium
uptake curves
Matt N Gwilliam1, David J Collins1,
Martin O Leach1, and Matthew R Orton1
1CR-UK and EPSRC Cancer Imaging Centre,
Institute of Cancer Research, London, United Kingdom
The fitting of pharmacokinetic models to DCE-MRI
gadolinium uptake curves is computationally expensive
and complicated by several factors including a lack of
arterial input function. This work presents a method for
determining a simple projection vector, for various
pharmacokinetic parameters, that can directly project an
uptake curve into PK space. Projection vectors are
optimised using a robust fitting algorithm and a
training set of uptake curves. The projection vectors
are then applied to a set of uptake curves to a test set
from a different cohort and good correlation with model
fitting techniques is found.
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3501. |
14 |
A Cluster-Based Method for
Parametric Maps in Dynamic Contrast-Enhanced -MRI
Patrik Brynolfsson1, Anders Garpebring1,
Thomas Asklund2, and Tufve Nyholm1
1Dept. of Radiation Sciences, Umeå
University, Umeå, Sweden, 2Division
of Oncology, Dept. of Radiation Sciences, Umeå
University, Umeå, Sweden
An alternative method for generation of parametric maps
in dynamic contrast-enhanced MRI was investigated on in
vivo data. The method is based on clustering of voxels
with similar contrast agent kinetics. In this study, the
clustering method was compared with a conventional
voxel-by-voxel analysis. The results showed that the
calculation time was reduced by a factor 8 for a single
slice, and parametric maps looked visually similar.
However, a correlation analysis revealed that
improvements are needed for the cluster-based analysis
to reach its full potential.
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3502. |
15 |
Uncertainty in the
Pharmacokinetic Analysis of a Modified Reference Region
Model Using Dynamic Contrast-Enhanced MRI
Yen-Peng Liao1, Chi-Jen Chen1,2,
and Ho-Ling Liu3
1Department of Medical Imaging, Taipei
Medical University - Shuang Ho Hospital, New Taipei
City, Taiwan, Taiwan, 2Department
of Medicine, Taipei Medical University, Taipei City,
Taiwan, Taiwan, 3Medical
Imaging and Radiological Sciences, Chang Gung
University, Taoyuan County, Taiwan, Taiwan
A modified reference region (mRR) model including
vascular term for dynamic contrast-enhanced MR imaging (DCE-MRI)
can quantify physiological parameters without the need
of an arterial input function (AIF). However, inaccurate
assumptions of the parameters of a reference region (RR)
may induce large estimation error in the quantification
of a tissue of interest (TOI). This study aimed to
assess the uncertainty in the pharmacokinetic analysis
with a mRR model using computer simulations. The results
showed estimation errors of [+41.8 to -17.08], [+47.85
to -21.08], and [+37.67 to -24.33] for [-30% to +30%]
variations on inaccurate K trans,RR,
ve,RR and
vp,RR ,
respectively.
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3503. |
16 |
Principal components
analysis of whole trial onset aligned DCE-MRI gadolinium
uptake curves produces metrics that correlate with
conventional PK parameter estimates
Matt N Gwilliam1, David J Collins1,
Martin O Leach1, and Matthew R Orton1
1CR-UK and EPSRC Cancer Imaging Centre,
Institute of Cancer Research, London, United Kingdom
Analysing DCE-MRI Gadolinium uptake curves from a cohort
of patients using principal component analysis can
produce metrics that correlate with pharmacokinetic
parameters and retain their meaning across datasets
implying that treatment effects can be detected. This
work demonstrates that these correlations can be
improved further by taking into account onset time.
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3504. |
17 |
An Analytical Approach for
Quantification and Comparison between Signal Intensity and
Longitudinal Relaxation Rate Change (ΔR1) in MR
DCE-T1 Studies
Hassan Bagher-Ebadian1,2, Siamak P
Nejad-Davarani1,3, Rajan Jain4,
Douglas Noll3, Quan Jiang1,2, Ali
Syed Arbab4, Tom Mikkelsen5, and
James R Ewing1,2
1Neurology, Henry Ford Hospital, Detroit,
Michigan, United States, 2Physics,
Oakland University, Rochester, Michigan, United States, 3Biomedical
Engineering, University of Michigan, Ann Arbor,
Michigan, United States, 4Radiology,
Henry Ford Hospital, Detroit, Michigan, United States, 5Neurosurgery,
Henry Ford Hospital, Detroit, Michigan, United States
In Dynamic Contrast Enhanced (DCE- MRI) studies,
pharmacokinetic models rely on converting the time
course of the signal intensity to changes in the
longitudinal relaxation rate, ΔR1(t). However, many
researchers employ the normalized Signal Intensity, for
quantitative and semi-quantitative DCE analyses instead
of ΔR1(t). In this study, one-dimensional error
propagation is applied to the previously described
analytical approach in order to investigate the
difference between ΔR1(t) and normalized signal
intensity profiles. A full analytical methodology is
presented for quantifying and comparing the level of
agreement in the profiles in both techniques for
different levels of contrast enhancement ratios.
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3505. |
18 |
The effect of onset time
detection on reproducibility of vascular parameters derived
from DCE-MRI
Nina Tunariu1, David J Collins1,
Matthew Orton1, James A d'Arcy1,
Christina Messiou1, Veronica A Morgan1,
Sharon L Giles1, Catherine J Simpkin2,
and Nandita M deSouza1
1CR-UK and EPSRC Cancer Imaging Centre,
Institute of Cancer Research and Royal Marsden Hospital,
Sutton, London, United Kingdom, 2CR-UK
and EPSRC Cancer Imaging Centre, Institute of Cancer
Research and Royal Marsden Hospital, Sutton, United
Kingdom
Dynamic contrast enhanced MRI (DCE-MRI) has been
successfully used as biomarker of angiogenic activity in
preclinical and clinical trials. The time of arrival of
the bolus (onset time) definition has a great influence
on DCE parameter estimates and an incorrect onset time
can lead to a strong bias. In our experience the
automated methods can fail to detect an accurate onset
time in cases of tumors that show low contrast uptake,
and manual adjustment is essential. This study compares
the effect of the onset time as detected using four
different methods, on the DCE parameters estimates and
their reproducibility.
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3506. |
19 |
Sampling duration in DCE-MRI:
In vivo comparison using data acquired within a clinical
phase I study
Martin Buechert1, Henrik Gille2,
Jan Kuhlmann3, and Klaus Mross4
1MRDAC Magnetic Resonance Development and
Application Center, University Medical Center Freiburg,
Freiburg, Germany, 2Pieris
AG, Freising, Germany,3University Medical
Center, Freiburg, Germany, 4Klinik
für Tumorbiologie, Freiburg, Germany
For assessing treatment response DCE-MRI is a valuable
tool. Parameters calculated using pharmacokinetic
modeling may depend on the sampling duration which
equals the number of sampled data points for equally
distributed sampling. This was previously investigated
by computer simulations but there is limited
verification of these findings using real in vivo
patient data. This dependency on sampling duration of
the Ktrans, Ve and the fit accuracy were investigated
using patient data with a long sampling duration in
comparison to an artificial shortened sub set of these
data. Results were in agreement with the published
simulations.
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3507. |
20 |
Effect on time duration on
the precision of pharmacokinetic parameters in DCEMRI
Kumar Rajamani1, Dattesh Shanbhag1,
Rakesh Mullick1, and Sandeep N Gupta2
1Medical Image Analysis, GE Global Research,
Bangalore, Karnataka, India, 2Biomedical
Image Processing Laboratory, GE Global Research,
Niskayuna, NY, United States
We have demonstrated the precision of pharmacokinetic
parameters and its effect due to duration of the
time-intensity signal. Our results demonstrate that for
the prostate case it is preferable to have scan duration
of 5 minutes. Scan durations of more than 6 minutes do
not generally contribute to any further improvement in
the parameters.
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3508. |
21 |
Consistency of
permeability measurement using arterial input function and
venous output function in DCE-MRI for metastatic brain
tumors
Yi-Ying Wu1, Chen-Hao Wu1,2, Chih-Ming
Chiang1, Chi-Chang Chen1, and
Jyh-Wen Chai1
1Department of Radiology, Taichung Veterans
General Hospital, Taichung, Taiwan, 2Institute
of Biomedical Engineering, National Taiwan University,
Taipei, Taiwan
In DCE-MRI, the venous output function (VOF) from
superior sagittal sinus (SSS) is commonly used to
replace arterial input function (AIF) to measure
permeability of brain lesions. However, there is a lack
of comprehensive studies about how to sample the vessel
voxels for VOF measurements to achieve a good
consistency in quantification of permeability in DCE-MRI.
The aim of this study is to investigate the consistency
in permeability measurements of metastatic brain tumors
using VOF and AIF to analyze DCE-MRI with the
commercial-available automatic software.
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3509. |
22 |
Effects of AIF selection
and pharmacokinetic model selection on Discrimination of
Chronic Infective from Chronic Inflammatory Knee Arthritis
using DCE-MRI
Prativa Sahoo1, Rishi Awasthi2,
Ram KS Rathore1, and Rakesh Kumar Gupta2
1Mathematics & Statistics, Indian Institute
of Technology, Kanpur, Kanpur, Uttar Pradesh, India, 2Radiodiagnosis,
Sanjay Gandhi Post Graduate Institute of Medical
Sciences, Lucknow, India, Lucknow, Uttar Pradesh, India
DCE-MRI was performed on 46 patients with 32 patients
having Chronic Infective and 14 patients having Chronic
Inflammatory Knee Arthritis. Discriminate function
analysis was performed to discriminate tubercular and
non-tubercular inflammation. For DCE-MRI quantification
both local AIF and global AIF was used. Pharmacokinetic
analysis was performed using two compartmental and three
compartmental model. Our result suggest that Global AIF
and Local AIF does not effects the discrimination of
tuberculoma from non-tuberculoma however using three
compartment model instead of two compartment model
significantly improves the discrimination.
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3510. |
23 |
Phase-derived vascular
input functions for 2D DCE-MRI of cerebral gliomas:
reproducibility and diagnostic value
Greg O. Cron1,2, Thanh B. Nguyen1,2,
Rebecca E. Thornhill1,2, Jean-Francois
Mercier1, Claire Foottit1, Carlos
H. Torres1,2, Santanu Chakraborty1,2,
John Woulfe1,2, Jean-Michel Caudrelier1,2,
John Sinclair1,2, Matthew J. Hogan1,2,
Ian Cameron1,2, and Mark E. Schweitzer1,2
1The Ottawa Hospital, Ottawa, ON, Canada, 2The
University of Ottawa, Ottawa, ON, Canada
For DCE-MRI of cerebral gliomas, temporal resolution can
be increased using 2D sequences with limited coverage.
However, the resultant saturation and inflow effects
distort the measured vascular input function (VIF). A
relatively new way to solve this problem is
phase-derived VIFs (VIF ).
The purpose of this study was to compare the
reproducibility and diagnostic value of tracer kinetic
parameters (TKPs) calculated with individually-measured
VIF and
a published population-averaged VIF (VIFpop), in a group
of 31 patients. VIF was
superior to VIFpop for TKP reproducibility. VIF -
and VIFpop- derived TKPs were equally good at
distinguishing low- from high- grade tumors.
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3511. |
24 |
Phase-Based Vascular Input
Function Validation Using Near-Simultaneous PET-MRI
Dominique L. Jennings1, Daniel B. Chonde2,
Jayashree Kalpathy-Cramer1, Kim Mouridsen3,
Gregory Sorensen1, Alexander Guimaraes4,
Bruce Rosen1, Tracy Batchelor5,
Elizabeth R. Gerstner5, and Ciprian Catana1
1Athinoula A. Martinos Center for Biomedical
Imaging, Massachusetts General Hospital, Boston, MA,
United States, 2HST,
Massachusetts Institute of Technology, Boston, MA,
United States, 3Department
of Clinical Medicine, Aarhus University, Aarhus,
Denmark, 4Department
of Radiology, Massachusetts General Hospital, Boston,
MA, United States, 5Department
of Neurology and Cancer Center, Massachusetts General
Hospital, Boston, MA, United States
Phase-based DCE-MRI measurements of the vascular input
function are insensitive to common imaging-related
artifacts observed in magnitude-based vascular input
functions. Here we propose the use of PET-based vascular
input functions to evaluate the differences between the
two MR-based measurements and relative effects of both
on estimates of Ktrans.
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|
Electronic
Poster Session - Diffusion & Perfusion |
|
Click on
to view
the abstract pdf and click on
to view the
video presentation. (Not all presentations are available.)
Tuesday 8 May 2012
Exhibition Hall |
17:00 - 18:00 |
|
|
|
Computer # |
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3512. |
1 |
Accounting for
Pre-Capillary Signal in Arterial Spin Labelling Perfusion
Measurements
Michael A Chappell1,2, Thomas W Okell2,
Bradley J MacIntosh3, Peter Jezzard2,
and Stephen J Payne1
1Institute of Biomedical Engineering,
University of Oxford, Oxford, United Kingdom, 2FMRIB
Centre, University of Oxford, Oxford, United Kingdom,3Department
of Medical Biophysics, University of Toronto, Toronto,
Canada
There a number of sources of signal in Arterial Spin
Labelling perfusion measurements. The major components
that have been addressed to date are label undergoing
exchange in the capillaries from which blood flow
measurements can be obtained and that remaining in large
arteries. However, it has been proposed that signal in
impermeable small arterial vessels before the capillary
space may also need to be accounted for. In this work
the effects of pre-capillary signal on flow and blood
volume estimation using multi-inversion time data and a
model-based analysis strategy are examined.
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3513. |
2 |
3D High-Resolution
Whole-Brain Perfusion Measurment using Pseudo-Continuous ASL
at Multiple Post-Labeling Delays
Qin Qin1,2, Alan J Huang2,3, Jun
Hua1,2, Robert Stevens4, John E
Desmond5, and Peter C.M. van Zijl1,2
1Department of Radiology, Johns Hopkins
University, Baltimore, Maryland, United States, 2Kirby
Center, Kennedy Krieger Institute, Baltimore, Maryland,
United States, 3Department
of Biomedical Engineering, Johns Hopkins University,
Baltimore, Maryland, United States, 4Department
of Anesthesiology Critical Care Medicine, Johns Hopkins
University, Baltimore, Maryland, United States, 5Department
of Neurology, Johns Hopkins University, Baltimore,
Maryland, United States
Typically, cerebral blood flow (CBF) measurements using
Pseudo-Continuous ASL (PCASL) are acquired at a single
post-labeling delay assuming minimum difference of
arterial arrival times (AAT) across regions. We
performed 3D high-resolution whole-brain PCASL at
multiple post-labeling delays and analyzed the data
using a general kinetic model. Both voxel-based and ROI-based
fitting results displayed a heterogeneous distribution
of AAT in various regions. The PCASL measurements over a
series of delays can help estimate CBF and ATT
simultaneously, which will improve the accuracy of CBF
quantification. Implementation of this approach (15 min)
is demonstrated to be feasible on a 3T clinical scanner.
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3514. |
3 |
Resting State Regional
Correlation between FDG-PET and pCASL Perfusion MRI
Yoon Chung Kim1, Yoon-Hee Cha1,
Shruthi Chakrapani1, and Danny JJ Wang1
1University of California, Los Angeles, CA,
United States
Perfusion is normally coupled to metabolism and neural
function, and correlations of those for each brain
region would be useful in interpreting future studies
for investigating normal brain function or a diseased
state. However, existing studies comparing ASL and FDG-PET
are limited by small sample size. Thus, we performed a
systematic evaluation of resting pseudo-continuous ASL (pCASL)
and 18FDG-PET on 19 healthy subjects to determine the
correlation between perfusion and FDG-PET CMRglu
measurements across different brain regions. Our study
showed that there is generally a good correlation
between ASL CBF and PET CMRglu across pixels in the
group mean images whereas the correlation of mean CBF
and CMRglu values across 19 subjects is intermediate. We
also found that metabolism of caudate and putamen is
significantly higher relative to perfusion rate,
consistent with an earlier report. While susceptibility
effects and ROI size differences may to a certain degree
account for the observed regional variations, the
biophysical mechanism underlying the coupling and
uncoupling of glucose metabolism and perfusion across
brain regions warrants further investigation.
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3515. |
4 |
Hippocampal Longitudinal
Sub-region Perfusion Can Be Reliably Measured Using ASL
Xiufeng Li1, Jeffrey S. Spence2,3,
Subhendra N. Sarkar4, David E. Purdy5,
Gregory J. Metzger1, Robert W. Haley3,
and Richard W. Briggs3,6
1Center for Magnetic Resonance Research,
University of Minnesota, Minneapolis, MN, United States, 2Clinical
Sciences, UT Southwestern Medical Center, Dallas, TX,
United States, 3Internal
Medicine, UT Southwestern Medical Center, Dallas, TX,
United States, 4Radiology,
Harvard Med. School, Beth Israel Deaconess Med. Ctr.,
Boston, MA, United States, 5Siemens
Healthcare, Malvern, PA, United States, 6Radiology,
UT Southwestern Medical Center, Dallas, TX, United
States
Measuring hippocampal longitudinal sub-region perfusion
has significant clinical relevance, with potential for
better diagnosis and understanding of healthy and
pathological hippocampal physiology. To evaluate the
reliability of measuring hippocampal longitudinal
sub-region perfusion using arterial spin labeling (ASL)
imaging, measurement errors due to both random spatial
noise and temporal physiological noise in OPTIMAL FAIR
ASL studies of rCBF were evaluated. Results indicate
that hippocampal longitudinal sub-region perfusion can
be reliably measured using ASL imaging.
|
3516. |
5 |
Efficiency and Reliability
of Vessel Encoding PCASL
Rui Wang1, Zhentao Zuo1, Rong Xue1,
Yan Zhuo1, and Danny JJ Wang2
1State Key Lab of Brain and Congitive
Science, Beijing MRI Center for Brain Research,
Institute of Biophysics,Chinese Academy of Sciences,
Beijing, China, 2Neurology,UCLA,
Los Angeles, CA, United States
The goal of this study was to estimate the labeling
efficiency and longitudinal reliability of vessel
encoding pseudo-continuous ASL (VE-PCASL) for the 3 main
feeding arteries at 3T, utilizing phase-contrast (PC)
MRI as the reference standard. We calculated the global
labeling efficiency and those of the right internal
carotid (R), left internal carotid (L), and basilar
artery (B) of VE-PCASL. Our results demonstrated that
the labeling efficiency of VE-PCASL is reproducible and
is not sensitive to labeling locations. However, the
labeling efficiency of B was lower than that of the
carotid arteries.
|
3517. |
6 |
Comparison of regional
perfusion imaging between planning-free vessel-encoded and
super-selective pseudo-continuous arterial spin labeling MRI
Nolan S. Hartkamp1, Michael Helle2,3,
Reinoud P.H. Bokkers1, Jeroen Hendrikse1,
and Matthias J.P. van Osch4
1Department of Radiology, University Medical
Center Utrecht, Utrecht, Netherlands, 2Institute
of Neuroradiology, Christian-Albrechts-Universität,
Kiel, Germany, 3Philips
Technologie GmbH, Innovative Technologies, Research
Laboratories, Hamburg, Germany, 4C.J.
Gorter Center, Department of Radiology, Leiden
University Medical Center, Leiden, Netherlands
The aim of this study was to compare the differences of
perfusion territories determined by vessel-encoded and
super-selective pseudo-continuous arterial spin labeling
MRI. Cases are presented to illustrate the capability of
either technique to determine correct perfusion
territories in vascular variations and mixed perfusion
areas. The results of this study show that perfusion
territories of vessel-encoded and super-selective p-CASL
RPI agree reasonably well. Vessel encoded ASL however
fails to detect mixed perfusion areas, which leads to
erroneous boundaries in these areas.
|
3518.
|
7 |
Comparison of
Non-Selective and Vessel-Encoded Pseudocontinuous Arterial
Spin Labeling for Cerebral Blood Flow Quantification
Thomas W Okell1, Michael A Chappell2,
and Peter Jezzard1
1FMRIB Centre, Department of Clinical
Neurosciences, University of Oxford, Oxford, Oxfordshire,
United Kingdom, 2Institute
of Biomedical Engineering, Department of Engineering,
University of Oxford, Oxford, Oxfordshire, United
Kingdom
Quantification of cerebral blood flow (CBF) may be
confounded in brain regions fed by multiple arteries
with different transit delays, as may be the case in
patients with significant collateral flow.
Vessel-encoded pseudocontinuous arterial spin labeling (VEPCASL)
generates artery specific perfusion maps, allowing the
fitting of a kinetic model to each arterial component
separately. Here we compare CBF quantification and
signal-to-noise ratio (SNR) using VEPCASL to
conventional PCASL in healthy volunteers. Despite
reduced SNR, the CBF estimates from VEPCASL were
comparable to those from PCASL. Therefore VEPCASL may
improve CBF quantification in cases of mixed blood
supply.
|
3519. |
8 |
Quantitative Assessment of
collaterals from External Carotid Artery with Modified
Vessel Encoded Arterial Spin Labeling
Yi Dang1, Bing Wu2, Ying Sun3,
Dapeng Mo4, Xiaoying Wang1,2, Jue
Zhang1,3, and Jing Fang1,3
1Academy for Advanced Interdisciplinary
Studies, Peking University, Beijing, China, 2Dept.
of Radiology, Peking University First Hospital, Beijing,
China,3College of Engineering, Peking
University, Beijing, China, 4Dept.
of Neurosurgery, Peking University First Hospital,
Beijing, China
The contribution of collaterals from internal carotid
can be assessed by depicting of vascular perfusion
territories using arterial spin labeling. But so far
there is no method available to evaluate the collateral
perfusion territory from external carotid in MR. In this
study, we present a new labeling scheme on the basis of
the vessel-encoded arterial spin labeling to
quantitatively assess collaterals from external carotid.
The results demonstrate that the proposed method is able
to visualize the perfusion territory of ECA to depict
the status of collateral circulation and can be used as
a promising tool to assess cerebrovascular surgery.
|
3520. |
9 |
Regional Reduction in
Cerebral Blood Flow in Patients with Heart Failure
Rajesh Kumar1, Mary A Woo2, Danny
JJ Wang3, Paul M Macey2, Jennifer
A Ogren2, Gregg C Fonarow4, and
Ronald M Harper1
1Neurobiology, University of California at
Los Angeles, Los Angeles, CA, United States, 2UCLA
School of Nursing, University of California at Los
Angeles, Los Angeles, CA, United States, 3Neurology,
University of California at Los Angeles, Los Angeles,
CA, United States, 4Cardiology,
University of California at Los Angeles, Los Angeles,
CA, United States
Heart failure (HF) patients show brain injury in
autonomic, neuropsychological, and cognitive regulatory
sites, possibly resulting from localized hemodynamic
alterations; however, regional cerebral blood flow (CBF)
activity in those areas is unknown. We used non-invasive
arterial spin labeling (ASL) procedures to assess
regional CBF changes in HF subjects over controls.
Multiple localized brain sites in HF, including frontal,
parietal, and temporal regions, basal-ganglia, limbic,
brainstem, and cerebellar areas showed reduced CBF,
compared to controls. Regionally reduced CBF may stem
from initial injury to midline medullary raphe
regulatory sites, which cascades to modify vascular
supply to more-rostral and cerebellar areas.
|
3521. |
10 |
Evaluating transit time
and cerebral blood flow estimates in pulsed arterial spin
labeling data among patients with carotid stenoses
Bradley J MacIntosh1,2, Manus J Donahue3,
Michael A Chappell4, David E Crane1,
and Peter Jezzard5
1Imaging Research, Sunnybrook Research
Institute, Toronto, ONTARIO, Canada, 2Medical
Biophysics, University of Toronto, Toronto, ON, Canada,3Radiology,
Vanderbilt University School of Medicine, 4Institute
of Biomedical Engineering, University of Oxford, 5Clinical
Neurology, University of Oxford
Arterial spin labeling can be used to study stroke and
other cerebrovascular diseases. Using mutiple inflow ASL
(i.e. post-label delays), it is possible to estimate
cerebral blood flow (CBF) and other relevant parameters
like arterial transit time (ATT). We develop a metric to
determine the proportion of voxels whose ASL model fit
produces significant estimates of CBF and ATT.
Participants had a range of carotid artery disease of
which case some went on to have a carotid endarterectomy
(CEA). Fewer significant CBF voxels were detected in the
hemisphere with greater stenosis and among individuals
went for CEA surgery.
|
3522. |
11 |
Intra-scan reproducibility
of white matter perfusion in dementia using
pseudo-continuous arterial spin labeling
Henri JMM Mutsaerts1, Dennis FR Heijtel1,
Charles BLM Majoie1, Edo Richard2,
and Aart J Nederveen1
1Radiology, Academic Medical Center,
Amsterdam, North-Holland, Netherlands, 2Neurology,
Academic Medical Center, Amsterdam, North-Holland,
Netherlands
The present data of 34 patients with varying degrees of
dementia suggest that total WM perfusion can be obtained
from relatively short scantimes (2 min.) using p-CASL
with background suppression. Rather than disregarding WM
perfusion data because of too low SNR for voxel-wise
analyses, this data encourages to analyze the whole WM
perfusion as potential extra marker. This could be a
clinically relevant marker as WM degradation is involved
in, and may even be the onset of, many neurological
disorders.
|
3523. |
12 |
Perfusion-based functional
connectivity mapping of stroke: an arterial spin labeling
fcMRI study
Iris Asllani1, Christian Habeck2,
Ronald Lazar2, and Randolph Marshall2
1Columbia Universtiy, New York, NY, United
States, 2Columbia
Universtiy
One of the most significant challenges in stroke
neurology is predicting outcomes. While fMRI has played
a key role in our understanding of how stroke affects
brain function and cognition, translation of imaging
data into clinically useful outcomes has been largely
ineffectual. This is mainly due to inherent limitations
of task-based BOLD fMRI and to a lack of integration of
imaging data with other physiological variables. In this
study we address these shortcomings by: 1) Acquiring
resting functional connectivity networks of cerebral
blood flow (CBF) using arterial spin labeling (ASL)
perfusion fMRI. 2) Assessing how focal injury affects
the integrity of these networks. 3) Investigating the
relationship between these networks and other
physiological correlates of disease. We focus on carotid
occlusive disease as an ideal model for testing
perfusion based functional networks. We plan to use
tissue specific ASL fMRI to identify perfusion resting
state functional networks (pRFNs) in patients with
carotid occlusive disease and healthy controls. Our
primary goal is to assess how pRFNs are affected by
infarction, hypoperfusion, functional state, and
collateral flow.
|
3524. |
13 |
A generalized methodology
for detection of vascular input function with dynamic
contrast enhanced perfusion data
Dattesh D Shanbhag1, Sandeep N Gupta2,
Kumar T Rajamani1, Yingxuan Zhu3,
and Rakesh Mullick4
1Medical Image Analysis Laboratory, GE Global
Research, Bangalore, Karnataka, India, 2Biomedical
Image Processing Laboratory, GE Global Research,
Niskayuna, NY, United States, 3Image
Analytics Laboratory, GE Global Research, Niskayuna, NY,
United States, 4GE
Global Research, Biosignatures & Signal Processing,
Bangalore, Karnataka, India
A completely automated and generalized methodology for
detection of vascular input functions with dynamic
contrast enhancement data is presented. The technique is
demonstrated for brain and prostate DCE data with
excellent correlation (~0.97) between manually defined
VIF and that detected using automated method. The method
provides consistent and reliable VIF well suited to
anatomy being studied: in brain (sagittal sinus) and in
prostate (femoral artery
|
3525. |
14 |
An Automatic Computation
Tool for the Estimation of B1-Corrected Pharmacokinetic
Parameters
Robert Merwa1, and Gernot Reishofer2
1Medical Engineering, Upper Austria
University of Applied Sciences, Linz, Austria, 2Department
of Radiology, Medical University of Graz, Graz, Austria
DCE T1-weighted MRI provides a technique for the
determination of human tissue parameters. For field
strength above 1.5 T B1-inhomogeneities occur which
produce considerable intensity variations and the
estimation of these tissue parameters fails. In order to
tackle this challenge a huge amount of images and
complex mathematical calculations are used hence the
manual handling is pretty difficult and not fail-save.
The aim of this work was to develop a software package
for the automatic calculation of the (a) T1-relaxation
time, (b) concentration of the contrast agent, (c) AIF
in a major artery and (d) tissue parameters for defined
regions.
|
3526. |
15 |
Quantification of contrast
agent in human brain using quantitative susceptibility
mapping
Tian Liu1, Yinghua Ma2, Min Lou3,
Timothy Vartanian2, and Yi Wang4
1MedImageMetric LLC, New York, NY, United
States, 2Neuroscience
and Neurology, Weill Cornell Medical College, New York,
New York, United States,3Neurology, The
Second Affiliated Hospital, Zhejiang University School
of Medicine, Hang Zhou, Zhe Jiang, China, 4Radiology,
Weill Cornell Medical College, New York, New York,
United States
In vivo quantification of contrast agent using T1/T2*
based methods are subject to large errors due to
quenching effects. On the other hand, superparamagnetic
iron oxide or gadolinium based contrast agents are
highly paramagnetic, making them ideal candidates for
quantitative susceptibility mapping. In this study, we
demonstrated the feasibility of using QSM for the
investigation of vasculature in the human brain tumor.
|
3527. |
16 |
A Method of Reducing
Fat-Caused Bias in DCE-MRI Perfusion Measurement
Su-Chin Chiu1, Chun-Jung Juan2,
Hsiao-Wen Chung1, Cheng-Chieh Cheng1,
Hing-Chiu Chang3, Cheng-Yu Chen2,
and Guo-Shu Huang2
1Biomedical Electronics and Bioinformatics,
National Taiwan University, Taipei, Taiwan, 2Radiology,
Tri-Service General Hospital, Taiwan, 3GE
Healthcare, Taiwan
The effects of fat saturation on quantitative perfusion
measurements using dynamic contrast-enhanced (DCE) in
parotid glands have been proved. In this study, it is
proposed to select a pre-contrast baseline of low-fat
tissue to reduce the effect, which is effective in
reducing bias from fat content in DCE-MRI of the parotid
gland. The disagreements between perfusion measurements
with and without fat saturation scan are reduced to the
level without statistical significance (p>0.05) both in
phantom and in vivo experiments.
|
3528. |
17 |
Quantitative contrast
media concentration and proton density images
Federico Pineda1, Marko Ivancevic2,
Gillian Newstead1, Hiroyuki Abe1,
Johannes Buurman2, and Gregory Karczmar1
1University of Chicago, Chicago, IL, United
States, 2Philips
Healthcare, Best, Netherlands
Calibration phantoms that can be inserted in a breast
coil during a routine DCE-MRI of the breast were
developed. These phantoms provide reference signals that
can be used to generate quantitative concentration of
contrast media and MRI-detectable proton density maps.
To date 23 patients have been scanned with these
phantoms, peak concentration values suggest a
correlation between malignancy and concentration.
MRI-detectable proton density may be a novel source of
diagnostically useful information. These quantitative
images have the potential to provide standardized,
quantitative information that is independent of
acquisition parameters, which could facilitate
comparisons across different scanners and/or
institutions.
|
3529. |
18 |
Quantitative Analysis of
DCE-MRI Kinetic Parameter Deviation Induced by
Dual-flip-angle T1 Mapping in Head and Neck
Jing Yuan1, Steven Kwok Keung Chow1,
David Ka Kwai Yeung1, Anil T Ahuja1,
and Ann D King1
1Imaging and Interventional Radiology, The
Chinese University of Hong Kong, Shatin, NT, Hong Kong
This study is to quantitatively evaluate the kinetic
parameter estimation deviation with dual-flip-angle
(DFA) T1 mapping in head and neck (HN). 23 patients with
HN tumors received DCE-MRI. T1 maps were generated based
on multiple-flip-angle (MFA) method and DFA
combinations. kep, Ktrans and vp maps based on MFA and
DFAs were calculated and compared in primary tumor,
salivary gland and muscle. The results showed that
DFA-induced T1 deviations could result in significant
errors in kinetic parameter estimation, particularly
Ktrans and vp, even with the optimized DFAs. MFA is
suggested for accurate pharmacokinetic analysis in HN if
scan time permitted.
|
3530. |
19 |
High SNR DCE Imaging for
Whole-Brain Perfusion Assessment
Philippe Gauderon1,2, Marina Salluzzi2,3,
Michel Louis Lauzon2,3, Michael Richard Smith1,4,
and Richard Frayne2,3
1Biomedical Engineering, University of
Calgary, Calgary, Alberta, Canada, 2Seaman
Family MR Research Centre, Calgary, Alberta, Canada, 3Radiology,
University of Calgary, Calgary, Alberta, Canada, 4Electrical
and Computer Engineering, University of Calgary,
Calgary, Alberta, Canada
A fast 3D SPGR sequence is suitable for dynamic contrast
enhanced (DCE) cerebral perfusion imaging is
demonstrated. As a proof of concept, the investigation
validated the suitability of the imaging sequence for
quantitative perfusion imaging using a static phantom.
Perfusion maps generated from initial in vivo
acquisitions were in agreement with literature values.
The main shortcoming of the sequence was the low
contrast-to-noise ratio (CNR) in cerebral tissue, though
this concern was somewhat mitigated by increasing TR and
using other approaches to preserve temporal resolution.
|
3531. |
20 |
DCE-MRI in Endometrial
Carcinomas
Renate Gruner1,2, Ingfrid Salvesen Haldorsen1,
Torfinn Taxt1,2, and Helga Salvesen2,3
1Dept of Radiology, Haukeland University
Hospital, Bergen, Bergen, Norway, 2University
of Bergen, Bergen, Bergen, Norway, 3Dept
of Obstetrics and Gynecology, Haukeland University
Hospital, Bergen, Bergen, Norway
The purpose was to explore the feasibility of dynamic
contrast enhanced MRI (DCE-MRI) in endometrial
carcinomas and investigate possible correlation between
perfusion derived parameters and the apparent diffusion
coefficient (ADC) estimated from diffusion weighted
imaging. Endometrial carcinoma is the most common
gynecological malignancy in industrialized countries,
and the incidence is increasing. Tracer kinetic modeling
was performed using the adiabatic approximation model of
Johnson and Wilson (aaJW). The endometrial carcinomas
displayed lower post contrast enhancement and faster
contrast was-out compared to normal myometrium. These
first results in ten patients show that DCE-MRI
acquisition and modeling in highly feasible in
endometrial carcinomas.
|
3532. |
21 |
Comparison of permeability
estimates derived from DCE-MRI and DCE-CT data in a rodent
stroke model
Andrea Kassner1,2, Meah Gao2,
Jackie Leung1, Madison McGregor2,
Neil Sokol2, and David Mikulis2,3
1Diagnostic Imaging, The Hospital for Sick
Children, Toronto, Ontario, Canada, 2Medical
Imaging, University of Toronto, Toronto, Ontario,
Canada,3Medical Imaging, Toronto Western
Hospital, Toronto, Ontario, Canada
Loss of blood-brain barrier (BBB) integrity in acute
ischemic stroke is a precursor to hemorrhagic
transformation. Dynamic contrast enhanced (DCE) CT and
MR imaging can quantify the integrity of the BBB when
used with a suitable pharmacokinetic model. We compared
DCE-CT and DCE-MRI permeability ratios in a rodent
stroke model using the same pharmacokinetic model and
determined a statistically significant correlation
between the two modalities. The results of this study
open up the possibility for multi-modal DCE studies.
|
3533. |
22 |
DCE-MRI informs on
proteasome activity on apoptosis of CT26 colon cancer by
vascular disrupting agent KML001.
HyunJin Park1, Jin Seo2, Young Han
Lee2, Ho-Taek Song*2, Chang Hoon
Moon3, Hee-Soon Lee3, Ho Yong Lee3,
Hee-Jung Cha4, and Young Joo Min3
1Brain Korea 21 Project for Medical Science,
Yonsei University, Seoul, Korea, 2College
of Medicine, Yonsei University, Seoul, Korea, 3Biomedical
Research Center, Ulsan University Hospital, Korea, 4Department
of Pathology, Ulsan University Hospital, Korea
Dynamic contrast enhanced MRI (DCE-MRI) technique can
provides quantitative information about the tumor
vasculature and it has been widely used to evaluate the
biological activity of targeted therapy in clinical
trials. However, there has been little known about the
quantitative imaging validation of proteasome activity
driven by vascular disrupting agent (VDA) in a cancer
model by MRI. Therefore, we investigated antivascular
effects of VDA in CT26 colon cancer xenograft mouse
model following treatment with the KML001 by DCE-MRI.
Significant decrease (p<0.05) of Kep was observed in
post treatment of KML001.
|
3534. |
23 |
In-vivo imaging of hind
paws micro vessel damage in the STZ-induced diabetes rat
using dynamic contrast enhanced-MRI
Shigeyoshi Saito1, Yuto Kashiwagi2,
Ryota Ogihara1, Akie Sugiura1,
Takashi Konishi1, Shin Takamatsu1,
Yuuki Takeuchi1, Mana Tsugeno1,
Kohji Abe2, and Kenya Murase1
1Department of Medical Physics and
Engineering, Osaka University, Suita, Osaka, Japan, 2Innovative
Drug Discovery Research Laboratories, Shionogi & Co.,
Ltd, Toyonaka, Osaka, Japan
Hyperglycemia causes damage in the blood vessels and
nerves of the body, which in turn develop into the major
complications of diabetes. Peripheral neuropathy and
peripheral circulatory disorder may induce diabetic foot
lesions Our purpose of this study was to assess
peripheral micro-vessel damage in streptozotocin (STZ)-induced
diabetic rats by using dynamic contrast-enhanced
magnetic resonance imaging (DCE-MRI) and histological
experiment.
|
3535. |
24 |
Pharmacological MRI in
mice with the Rapid Steady State T1-technique and
intraperitoneal contrast agent administration
Teodora-Adriana Perles-Barbacaru1, Francois
Berger1, and Hana Lahrech1
1Grenoble Institute of Neurosciences, INSERM
U836, Grenoble, France
The Rapid Steady State T1 (RSST1)
MRI technique, previously used with intravenous
injections, can be used with intraperitoneal (i.p.)
injections of Gd-DOTA to acquire cerebral blood volume
fraction (BVf) maps in mice. The longer time window
after i.p. administration of Gd-DOTA is used to study
the sensitivity of the RSST1-technique to BVf
changes induced by the vasodilator Acetazolamide. A 20%
BVf increase was observed within 10 minutes after
Acetazolamide injection confirming the vascular
biodistribution of Gd-DOTA and validating the technique.
The RSST1-technique with i.p. administration
of Gd-DOTA can therefore be used for pharmacological MRI
experiments in mice.
|
|
|
Electronic
Poster Session - Diffusion & Perfusion |
|
Diffusion Acquisition, Confounds & Amelioration
Click on
to view
the abstract pdf and click on
to view the
video presentation. (Not all presentations are available.)
Tuesday 8 May 2012
Exhibition Hall |
16:00 - 17:00 |
|
|
|
Computer # |
|
3536. |
25 |
Nucleus Size Determination
in Q-Space Analysis of Three-Dimensional Cells
Gregory S. Duane1, Yanwei W. Wang2,
Blake R. Walters2, and Jae K. Kim2
1Thunder Bay Regional Research Institute,
Thunder Bay, ON, Canada, 2Thunder
Bay Regional Research Institute
The impulse-propagator (matrix) method is extended to a
three-dimensional idealized cell geometry describing
nucleus, cytoplasm, and extracellular fluid. A basis is
constructed, appropriate for the boundary conditions
specified on spheres, consisting of spherical Bessel
functions of radius multiplied by spherical harmonics in
the angular variables. For a PGSE sequence, clear
diffraction patterns are obtained for both nucleus and
cytoplasm, with cytoplasm dominating the total signal.
Results compare favorably with Monte Carlo simulation
results. With OGSE, the nuclear diffraction pattern
dominates. In either case, vestiges of the diffraction
pattern in the total signal could potentially be used to
assess nucleus size.
|
3537. |
26 |
Rotationally Invariant
Gradient Schemes for Diffusion MRI
Carl-Fredrik Westin1, Ofer Pasternak1,
and Hans Knutsson2
1Department of Radiology, BWH, Harvard
Medical School, Boston, MA, United States, 2Department
of Biomedical Engineering, Medical Informatics,
Linköping University, Linköping, Sweden
Minimizing the error propagation that a diffusion MRI
gradient scheme introduces is an important task in the
design of robust and un-biased experiments. We propose
two schemes for the construction of rotationally
invariant multiple-shells. The first is a dual frame
method that optimizes the rotation invariance of any set
of samples. The second uses a subset of the icosahedral
set that can intuitively be used for nested rotationally
invariant schemes with pre-defined number of samples.
Rotationally invariance produces orientationally
unbiased estimates and reduces the correlation of the
samples, which is an important feature for
reconstruction methods such as multiple shells and
compressed sensing.
|
3538. |
27 |
Multichannel Diffusion MR
Image Reconstruction: How to Reduce Elevated Noise Floor and
Improve Fiber Orientation Estimation
Christophe Lenglet1, Stamatios Sotiropoulos2,
Steen Moeller1, Junqian Xu1,
Edward J Auerbach1, Essa Yacoub1,
David Feinberg3, Kawin Setsompop4,
Lawrence Wald4, Tim E Behrens2,
and Kamil Ugurbil1
1Center for Magnetic Resonance Research,
University of Minnesota, Minneapolis, MN, United States, 2Centre
for Functional MRI of the Brain, University of Oxford,
Oxford, United Kingdom, 3Advanced
MRI Technologies, Sebastopol, CA, United States, 4Department
of Radiology, Massachusetts General Hospital,
Charlestown, MA, United States
Signal intensity in magnitude MR images follows a Rician
distribution when single-channel receiver coils are
employed. For multi-channel coil acquisitions, noise
properties change, and the observed noise levels depend
on the image reconstruction method used to combine
information from different coils. This is problematic
for diffusion-weighted MRI, where any artificial
elevation of the noise floor limits the ability to
properly quantify the signal attenuation and,
ultimately, estimate fiber orientation for tractography.
We propose to use a multi-channel SENSE1 reconstruction
of GRAPPA un-aliased data, which exhibits Rician noise
properties, and demonstrate its advantage over the RSoS
reconstruction for fiber orientation estimation.
|
3539. |
28 |
Mapping complex white
matter structures with d-PFG MRI 3D acquisition scheme
Michal E Komlosh1,2, Evren Ozarslan1,2,
Martin J Lizak3, and Peter J Basser1
1STBB,PPITS,NICHD,NIH, Bethesda, MD, United
States, 2CNRM,USUHS,
Bethesda, MD, United States, 3NMRF,NINDS,NIH,
Bethesda, MD, United States
A novel 3D acquisition scheme was used to map the
average axon diameter of a complex white matter
structure with double-PFG filtered MRI. The method was
tested on a coronal slice of a rat brain where the
orientation of white matter within the corpus callosum
is known to vary.
|
3540. |
29 |
b-value Dependency of DWI
Quantitation and Diagnostic Performance in Detecting
Malignant Breast Lesions
April M Chow1, Victor Ai2, Polly
SY Cheung3, Siu Ki Yu1, and Gladys
G Lo2
1Medical Physics & Research Department, Hong
Kong Sanatorium & Hospital, Happy Valley, Hong Kong SAR,
China, 2Department
of Diagnostic and Interventional Radiology, Hong Kong
Sanatorium & Hospital, Happy Valley, Hong Kong SAR,
China, 3Breast
Care Center, Hong Kong Sanatorium & Hospital, Happy
Valley, Hong Kong SAR, China
Diffusion-weighted imaging (DWI) characterizes the
random microscopic motion of molecules and enables
assessment of tissue microstructure. This technique has
been widely used to characterize malignant and benign
breast lesions. A number of studies have been reported
to optimize b-value for improving the detection of
changes in pathologies in various organs. However, study
on effect of b-value on DWI quantitation in detecting
malignant breast lesion has been limited. In this study,
the effect of b-value on the absolute quantitation of
ADC and their diagnostic performance in detecting
malignant breast lesions was investigated at 3 T. The
results showed that the apparent diffusivities generally
decreased with b-value in both malignant breast lesions
and normal fibroglandular tissue. The diagnostic
accuracy of ADC in detecting malignant breast lesions
increased with b-value.
|
3541. |
30 |
Probing Neural Structure
Using Diffusion Spectrum Imaging and Temporal Diffusion
Spectroscopy
Jun-Cheng Weng1,2, Fatima Ali Nasrallah3,
and Kai-Hsiang Chuang3
1School of Medical Imaging and Radiological
Sciences, Chung Shan Medical University, Taichung,
Taiwan, 2Department
of Medical Imaging, Chung Shan Medical University
Hospital, Taichung, Taiwan, 3MRI
Group, Singapore Bioimaging Consortium, A*STAR,
Singapore, Singapore
Diffusion MRI is a technique for studying various
aspects of microscopic tissue composition and
organization in the central nervous system (CNS). The
diffusion time is a key parameter to determine
restricted diffusion in microstructures and hence the
sensitivity of diffusion MRI to different spatial
dimensions. However, it is not straightforward to
implement pulsed gradient spin echo (PGSE) diffusion
experiments with short diffusion times that are needed
to highlight structures at microscopic scales. One
alternative is to use oscillating gradient spin echo (OGSE)
or the so-called temporal diffusion spectroscopy, which
allows short diffusion time better than PGSE sequence,
to provide a unique way to measure water diffusion.
Diffusion spectrum imaging (DSI) is one of the diffusion
MRI techniques that can map complex fiber architecture
in the brain. We sought to apply OGSE DSI to identify
minuscule neuroarchitecture in the brain. By applying
oscillating diffusion-sensitive magnetic gradients to
tag translational motion of water molecules, 3D
probability density function (PDF) of molecular
displacement can be reconstructed from the measured OGSE
DSI data. For comparison, diffusion tensor images (DTI)
of the rat brain were acquired using the OGSE and PGSE
sequences. We demonstrate DSI maps with oscillating
gradient revealed novel tissue contrast in the rat
hippocampus.
|
3542. |
31 |
Optimizing diffusion
weighting scheme by Cramer-Rao Lower Bound Analysis and
Monte Carlo Simulation
Yong Wang1, and Sheng-Kwei Song1
1Radiology, Washington University in St.
Louis, Saint Louis, MO, United States
Diffusion basis spectrum imaging has recently been
developed to resolve the crossing fiber and partial
volume effects of inflammation or CSF. However,
prototype DBSI diffusion scheme has not been optimized.
This study employed Cramer-Rao lower bound analysis to
compare the precision of DBSI using a multiple-shell
scheme vs. the grid scheme. Monte Carlo simulation was
employed to examine the effect of signal quality,
diffusion weighting strength, and diffusion gradient
distribution on the accuracy and precision of DBSI. We
found that grid scheme with higher SNR, stronger
diffusion weighting, and optimized diffusion gradient
distribution can significantly improve the quality of
DBSI solution.
|
3543. |
32 |
In vivo High Angular
Resolution Diffusion Imaging at 16.4 Tesla
Othman I Alomair1, Graham J Galloway1,
Ian M Brereton1, Maree Smith2, and
Nyoman D Kurniawan1
1Centre for Advanced Imaging, University of
Queensland, Brisbane, Queensland, Australia, 2Pharmacy
School, University of Queensland, Brisbane, Queensland,
Australia
Segmented echo planar imaging diffusion weighted imaging
has been robust in acquiring data at 16.4 Tesla magnetic
field with HARDI reconstruction within experimental time
frame.
|
3544. |
33 |
MR evaluation of internal
gradients in porous systems: SE vs DDIF method.
Giulia Di Pietro1,2, Marco Palombo2,3,
and Silvia Capuani2,3
1IIT@Sapienza, Physics Department, Rome,
Italy, Italy, 2“Sapienza”
University of Rome, Physics Department, Rome, Italy, 3CNR
IPCF UOS Roma, Physics Department, “Sapienza” University
of Rome, Rome, Italy
Effective Gi measured by using Spin-Echo (SE), Diffusion
Decay Internal Field (DDIF) and Modified Diffusion Decay
Internal Field (DDIF(M)) method for discriminating
porous systems characterized by different pores size
were compared. The behaviors of Gi extracted from SE,
DDIF and DDIF(M) as a function of beads sizes, show
similar trends. However, Gi values extracted from SE
decay better discriminates between different porous
systems when compared to Gi extracted from DDIF and
DDIF(M) decays. Finally SE method, unlike DDIF method,
can be easily implemented on clinical scanners and
requires less time for data acquisition and data
processing than DDIF one.
|
3545. |
34 |
The Diffusion Sensitivity
of Turbo Spin Echo Sequences Significantly Depends on the
Relaxation Times and Diffusion Coefficient
Matthias Weigel1, and Jürgen Hennig1
1Dept. of Radiology, Medical Physics,
University Medical Center Freiburg, Freiburg, Germany
Recent work showed that ‘modern’ types of turbo spin
echo sequences (TSE) using low and varying refocusing
flip angles and high resolution such as SPACE, VISTA,
and CUBE have an inherent diffusion sensitivity b_eff,
which can generate participating diffusion contrast in
the image. The current work demonstrates that these
b_eff are not sequence-specific constants, on the
contrary, they notably depend on the relaxation times
and T2 in particular, as well as on the diffusion
coefficient. Thus, TSE inherent diffusion sensitivity
significantly depends on the tissue, which is also valid
for TSE based preparation schemes such as the
superstimulated echo mechanism.
|
3546. |
35 |
Image Distortion and
Inter-Station Discontinuity Reduction using High Order Eddy
Current Correction in Whole Body Diffusion Weighted Imaging
Dan Xu1, Gaohong Wu2, Kenichi
Kanda2, Joe K. Maier2, and Kevin
F. King1
1Applied Science Lab, GE Healthcare,
Waukesha, WI, United States, 2MR
Engineering, GE Healthcare, Waukesha, WI, United States
High order eddy currents (HOEC) can cause significant,
direction-dependent image distortions and image
shape/intensity discontinuities between station
boundaries in whole body diffusion weighted imaging (WB-DWI).
In this paper, we use a combined prospective and
retrospective compensation method to correct HOEC
induced distortions. WB-DWI volunteer results show that
the method can effectively reduce in-plane distortion,
misregistration, and station boundary discontinuities,
thus significantly improving WB-DWI image quality.
|
3547. |
36 |
Potential
Misinterpretation of Diffusion Tensor Imaging Data due to
Head Motion
A. Alhamud1, M Dylan Tisdall2,3,
Khader M Hasan 4,
André J.W. van der Kouwe2,3, and Ernesta M
Meintjes1
1University of Cape Town, Cape Town, WC,
South Africa, 2Athinoula
A. Martinos Center for Biomedical Imaging, 3Department
of Radiology, Harvard Medical School, 4University
of Texas Health Science Center, Houston, United States
Previously, we introduced volumetric navigators (3D-EPI)
to perform prospective motion correction in diffusion
tensor imaging (DTI) that allows real-time tracking of
head pose. The navigated diffusion sequence has been
further modified to reacquire motion corrupted diffusion
volumes during which the motion exceeded a pre-defined
threshold. The purpose of this work is to highlight the
effect of subject head motion and the effects of
retrospective and prospective motion correction with the
reacquisition on the diffusion data, in particular, the
fractional anisotropy (FA) of the whole brain-white
matter (WM).
|
3548. |
37 |
A combined approach for
the elimination of partial volume effects in diffusion MRI
Klaus H. Fritzsche1,2, Bram Stieltjes2,
Thomas van Bruggen2, Hans-Peter Meinzer2,
Carl-Fredrik Westin1, and Ofer Pasternak1
1Laboratory of Mathematics in Imaging,
Harvard Medical School, Boston, Massachusetts, United
States, 2German
Cancer Research Center, Heidelberg, Germany
Partial volume is a major confounding factor in the
analysis of diffusion tensor imaging datasets. The
mixing effects of different compartments within each
voxel are non-linear, acquisition dependent, and likely
to exceed microstructural effects of interest. In this
work, we combine two approaches to ameliorate these
problems: Free-water elimination that eliminates intra-voxel
CSF contamination and partial volume clustering that
classifies and probabilistically selects all
non-contaminated voxels. We demonstrate the increased
sensitivity of this method in a tract specific analysis
of the corpus callosum, recognizing abnormalities on a
clinical dataset of Alzheimer’s disease, compared with
matched controls.
|
3549. |
38 |
High-Field Compatible
Methods for Reduction of Cerebrospinal Fluid Partial Volume
Effects in DTI
Corey Allan Baron1, and Christian Beaulieu1
1Biomedical Engineering, University of
Alberta, Edmonton, AB, Canada
Conventional DTI can be impaired by partial volume
effects, particularly for brain structures adjacent to
cerebrospinal fluid (CSF). We describe two methods of
CSF signal reduction that do not increase SAR nor affect
scan time: 1) a reduction of repetition time by
acquiring DTI data in smaller sets of slices to reduce
the signal contributions from long T1 CSF; 2) the
application of a small degree of diffusion weighting on
the minimal b values to attenuate CSF (i.e. do not
acquire b=0 images). The techniques are evaluated using
deterministic tractography of the fornix in five
individuals.
|
3550. |
39 |
Error analysis and
correction of ADC measurements for gradient non-linearity
Dariya I. Malyarenko1, Brian D. Ross1,
and Thomas L. Chenevert1
1Radiology - MRI, University of Michigan, Ann
Arbor, Michigan, United States
Gradient non-linearity leads to spatially-dependent
b-values and consequently significant non-uniformity
error (~10-20%) in ADC measurements over
clinically-relevant FOVs. For quantitative analysis of
ADC errors, a gradient correction tensor model of
spatially-dependent gradient fields was used. The model
included the effect of imaging gradients, gradient
cross-terms and their influence in presence of media
anisotropy. All-inclusive error analysis allowed finding
minimal number of spatial correction terms to achieve
sufficient ADC error reduction (by 75-95%) for
tissue-like diffusion anisotropy. Simplified ADC
correction algorithm is suggested for implementation on
MR systems based on known gradient hardware properties
|
3551. |
40 |
Straightforward Method to
Improve Sensitivity in Diffusion Imaging Studies of Subjects
Who Move
Joelle E Sarlls1, Philip Shaw2,3,
Nancy E Adleman4, and Vinai Rooopchansingh5
1NINDS/NIH MRI Research Facility, National
Institutes of Health, Bethesda, MD, United States, 2NIMH,
National Institutes of Health, 3NHGRI,
National Institutes of Health, 4NIMH/Emotion
and Development Branch, National Institutes of Health, 5NIMH/Functional
MRI Facility, National Institutes of Health
A retrospective study of pediatric imaging data revealed
widespread corruption of diffusion images due to large
head motion. Using an automated real-time software
framework, and straightforward calculations in AFNI,
diffusion-weighted imaging volumes that have been
corrupted by large motions can be detected and
reacquired within a scan session. This rapid diffusion
QA method provides an efficient way for consistent
diffusion data sets to be acquired, with minimal scan
time. Reacquiring the corrupted diffusion data avoids
potential bias due to removal of variable numbers of
corrupted volumes and potentially increases sensitivity
to detect change in diffusion properties in populations
that tend to move.
|
3552. |
41 |
Effects of Diffusion
Weighted Image Interpolation for Motion and Distortion
Correction on Tensor Statistics
Mustafa Okan Irfanoglu1,2, Lindsay Walker1,2,
Raghu Machiraju3, and Carlo Pierpaoli1
1NIH, NICHD, Bethesda, MD, United States, 2Center
for Neuroscience and Regenerative Medicine, Uniformed
Services University of the Health Sciences, Bethesda,
MD, United States, 3Computer
Sciences & Engineering, The Ohio State University,
Columbus, OH, United States
Diffusion imaging data generally requires additional
postprocessing in order to correct for artifacts and
distortions. Typical correction methodologies involve
the use of image registration techniques, which employ
some form of interpolation to generate the final
corrected images. The effects of these interpolation
steps have generally been disregarded in the community.
In this work, we show that even with the same data and
fixed registration correction parameters, the choice of
interpolation technique can have a profound effect on
the distribution of tensor derived scalar quantities,
hence can affect the outcomes of histogram based
analysis.
|
3553. |
42 |
Automated detection,
evaluation and removal of DWI-related artifacts
Danilo Scelfo1, Laura Biagi1,
Mauro Costagli1,2, and Michela Tosetti1,2
1IRCCS "Stella Maris" Scientific Institute,
Pisa, Italy, Italy, 2IMAGO7,
Pisa, Italy
We proposed algorithm for the automatic detection and
removal of diffusion-related artifacts which seems to be
a useful tool to be exploited in the normal DW images
pre-processing. It allows the user to detect and
evaluate potential artifacts and, if required, to remove
the volume corresponding to the detected artifact and
rearrange the coordinate table of the applied diffusion
gradients.
|
3554. |
43 |
Using wild bootstrap to
evaluate the effect of spatial resolution on MR diffusion
parameters
Daniel Güllmar1, Catharina Lange1,2,
Christian Ros1, Andreas Deistung1,
and Jürgen R Reichenbach1
1Medical Physics Group / IDIR I, Jena
University Hopital, Jena, Thuringia, Germany, 2University
of Applied Sciences, Jena, Thuringia, Germany
We have used DTI wild bootstrapping method to evaluate
different diffusion protocol settings in order to
optimize spatial resolution in terms of standard
deviation of typical diffusion tensor properties like
fractional anisotropy and cone of uncertainty.
|
3555. |
44 |
Mask-Based Motion and
Eddy-Current Correction of High b-value Diffusion-Weighted
Images
David Raffelt1,2, J-Donald Tournier1,3,
Olivier Salvado2, and Alan Connelly1,3
1Brain Research Institute, Florey
Neuroscience Institutes, Melbourne, VIC, Australia, 2The
Australian E-Health Research Centre, CSIRO, Brisbane,
QLD, Australia, 3Department
of Medicine, University of Melbourne, Melbourne, VIC,
Australia
Tractography and voxel-based analysis of
diffusion-weighted images (DWI) benefit from
higher-order models that require the acquisition of a
large number of diffusion orientations at high b-values.
The associated long scan times increase the likelihood
of subject motion. Furthermore, high b-value DWI is also
more prone to eddy-current induced distortions. Existing
methods to correct motion and eddy-current artefacts are
inadequate due to the poor SNR associated with high
b-values. We present a robust method to correct motion
and eddy-current artefacts in high b-value data.
Validation experiments demonstrate that the proposed
method can accurately correct b=3000s/mm 2 data
with typical noise levels.
|
3556. |
45 |
Effect of Registration on
Fractional Anisotropy Values
Kurt Hermann Bockhorst1, Priya Goel1,
and Ponnada A Narayana1
1DII, University of Texas, Houston, Texas,
United States
Registration is commonly used during the post processing
of medical imaging data. However, the effect of
registration on the quantification of imaging metrics as
DTI has not been reported recently. The submitted
abstract documents a significant decrease of FA values
(up to 20%) in the white matter (splenium and genu) of
rat brains after registration. We studied this
phenomenon with four different types of registration:
AIR, FSL, DTI-TK (tensor based) and ANTS. All of these
methods caused a significant decrease in FA.
|
3557. |
46 |
Diffusion Tensor
Uncertainty: Visualization and Similarity Metrics
Mustafa Okan Irfanoglu1,2, Michael Curry1,
Evren Özarslan1,2, Cheng Guan Koay1,
Sinisa Pajevic1, and Peter J. Basser1
1NIH, NICHD, Bethesda, MD, United States, 2Center
for Neuroscience and Regenerative Medicine, Uniformed
Services University of the Health Sciences, Bethesda,
MD, United States
The uncertainty inherent in the estimated diffusion
tensors can have profound effects on the analysis
outcomes. In this word, we propose a novel method to
visualize DTI uncertainty along with similarity metrics
that incorporate this information. These metrics can be
employed in a variety of applications including tensor
field image registration or tensor image segmentation.
|
3558. |
47 |
Impact of noise correction
on diffusion kurtosis estimation
Elodie André1, Evelyne Balteau1,
Christophe Phillips1, Ezequiel Farrher2,
Ivan Maximov2, Farida Grinberg2,
and N. Jon Shah2,3
1Cyclotron Research Centre, University of
Liège, Liège, Belgium, 2Institute
of Neuroscience and Medicine - 4, Forschungszentrum
Jülich GmbH, Jülich, Germany, 3JARA
- Faculty of Medicine, RWTH Aachen University, Aachen,
Germany
Low SNR is a critical issue in diffusion kurtosis
imaging because of the use of high b-values (up to 3000
s mm-2). We tested different noise correction methods
prior to kurtosis fitting and show that noise correction
is a necessary step in kurtosis processing, providing
higher tissue contrast and better parameter estimates.
|
3559. |
48 |
Local regularization of
the diffusion tensor by means of independent component
ananlysis and total variation - application to high
resolution DTI
Gernot Reishofer1, Karl Koschutnig2,
Christian Langkammer3, Stefan Ropele3,
Stephen Keeling4, Robert Merwa5,
and Franz Ebner6
1Radiology, Medical University of Graz, Graz,
Styria, Austria, 2Psychology,
University of Graz, 3Neurology,
Medical University of Graz, 4Mathematics
and Scientific Computing, University of Graz, 5Medical
Engeneering, Upper Austria University of Applied
Sciences, 6Radiology,
Medical University of Graz
Advanced scan techniques in diffusion tensor imaging
(DTI), such as readout segmented EPI enable high
resolution DTI, but suffer from low signal to noise
ratio. In this work we present a novel method for the
spatially dependent regularization of the diffusion
tensor based on independent component analysis and total
variation regularization. We demonstrate that the
diffusion tensor evaluated from noisy DWI data is
successfully denoised, while fine structural details are
preserved. This allows for the application of high
resolution DTI in a clinically acceptable time.
|
|
|
Electronic
Poster Session - Diffusion & Perfusion |
|
Acquisition for Microstructural Imaging, Noise, & Model Fitting
Click on
to view
the abstract pdf and click on
to view the
video presentation. (Not all presentations are available.)
Tuesday 8 May 2012
Exhibition Hall |
17:00 - 18:00 |
|
|
|
Computer # |
|
3560. |
25 |
Optimal b-Value Range in
Diffusion Kurtosis Imaging
Ezequiel Farrher1, Farida Grinberg1,
and N. Jon Shah1,2
1Institute of Neuroscience and Medicine - 4,
Forschungszentrum Juelich, Juelich, Germany, 2JARA
- Faculty of Medicine, RWTH Aachen University, Aachen,
Germany
In the recent years, diffusion kurtosis imaging has
become an important method for the quantification of the
non-Gaussian diffusion in brain tissue by means of
magnetic resonance imaging. In this work we carry out an
experimental investigation of the optimal allowed range
of b-values according to the type of tissue under
examination and an applied set of gradient directions.
We examine how the mean-diffusivity and mean-kurtosis
maps are influenced by the chosen range of b-values and
propose an optimization scheme.
|
3561. |
26 |
Gaussian Phase
Distribution Approximation of the Square Wave Oscillating
Gradient Spin-Echo (SWOGSE) Diffusion Signal
Andrada Ianus1, Bernard Siow1, Hui
Zhang1, and Daniel C. Alexander1
1University College London, London, United
Kingdom
This work presents analytical formulae for both free and
restricted diffusion NMR signal from a square wave
oscillating gradient spin-echo (SWOGSE) sequence. The
expressions are computed using the Gaussian Phase
Distribution approximation and we demonstrate for
cylindrical geometry. The results for different radii,
frequencies, and gradient strengths are compared with
the values obtained from Monte Carlo diffusion
simulation. In all cases the error was less than 3% of
the signal and the total computation time was reduced by
several orders of magnitude, which enables model fitting
applications, e.g. to generate whole brain parameter
maps.
|
3562. |
27 |
Neurite Density Measured
in Human Subject using Hybrid Diffusion Imaging
Shiyang Wang1,2, Michael Chopp1,2,
Siamak Pourabdollah Nejad D.1, JiaNi Hu3,
and Quan Jiang1,2
1Neurology, Henry Ford Hospital, Detroit, MI,
United States, 2Physics,
Oakland University, Rochester, MI, United States, 3Radiology,
Wayne State University, Detroit, MI, United States
Neurite density measured in healthy volunteers using
hybrid diffusion. Neurite density measured in TBI
patient using simultaneous image refocusing sequence
combined with hybrid gradient encoding scheme.
|
3563. |
28 |
In Vivo Human
Brain Measurements of Axon Diameter Distributions in the
Corpus Callosum using 300 mT/m Maximum Gradient Strengths
Jennifer A. McNab1, Thomas Witzel1,
Himanshu Bhat2, Keith Heberlein2,
Boris Keil1, Julien Cohen-Adad1,
M. Dylan Tisdall1, and Lawrence L. Wald1,3
1A.A. Martinos Center for Biomedical Imaging,
Radiology, Massachusetts General Hospital, Harvard
Medical School, Boston, MA, United States,2Erlangen
USA Inc., Siemens Medical Solutions, Charlestown, MA,
United States, 3Harvard-MIT
Division of Health Sciences and Technology,
Massachusetts Institute of Technology, Cambridge, MA,
United States
In this work we use a novel gradient coil AS302 which is
part of a new 3T system (MAGNETOM Skyra CONNECTOM,
Siemens Healthcare) capable of up to 300 mT/m to
measure, in the in
vivo human
brain, the full axon diameter distribution in the corpus
callosum as determined by the AxCaliber method.
|
3564. |
29 |
Double wave vector
diffusion weighting in Wallerian degeneration
Martin A. Koch1,2, and Jürgen Finsterbusch1
1Systems Neuroscience, Neuroimage Nord,
University Medical Center Hamburg-Eppendorf, Hamburg,
Germany, 2Institute
of Medical Engineering, University of Lübeck, Lübeck,
Germany
Double wave vector diffusion weighting is a new approach
for assessing tissue characteristics such as mean pore
size and shape: for restricted diffusion the MR signal
acquired with two successive diffusion weighting periods
may depend on the angle between the two applied gradient
directions. At short mixing times, the signal difference
between parallel and antiparallel gradient orientations
can be related to the mean pore size. It is investigated
whether the size estimate derived from this signal
difference is sensitive to pathological changes in the
tissue microstructure of the corticospinal tracts.
|
3565. |
30 |
Diffusion MR Imaging at
varying of diffusion time to give more on the heterogeneous
porous systems.
Marco Palombo1,2, Cesare Cametti1,
Mariella Dentini3, and Silvia Capuani1,2
1“Sapienza” University of Rome, Physics
Department, Rome, Rome, Italy, 2CNR
IPCF UOS Roma, Physics Department “Sapienza” University
of Rome, Rome, Italy, 3“Sapienza”
University of Rome, Department of Chemistry, Rome, Italy
We introduce a novel imaging method to characterize and
to map anomalous diffusion processes of water in
heterogeneous systems by means of diffusion weighted NMR
techniques at varying of the diffusion time. The
approach is based on the theory of the
Continuous-Time-Random-Walk and introduces the á index,
which quantify sub-diffusion processes. We present the
first á-map obtained in two controlled porous phantoms
characterized by the same void and interconnect size
distribution but by different type of porous matrix
walls (smooth or rough). Our results show that á-maps,
unlike the conventional MD-maps, are able to
discriminate between these two samples.
|
3566. |
31 |
AN EFFICIENT PROTOCOL FOR
COMPREHENSIVE ASSESSMENT OF WHITE MATTER MICROSTRUCTURE BY
COMBINING RELAXATION AND DIFFUSION IN ONE MODEL
Silvia De Santis1, Tim Vivian-Griffiths1,
Sonya Bells1, Yaniv Assaf2, Sean
Deoni3, and Derek K Jones1
1CUBRIC, Cardiff University, Cardiff, United
Kingdom, 2Tel
Aviv University, Tel Aviv, Israel, 3Brown
University, United States
In this work, we develop an efficient and
clinically-applicable protocol that provides
comprehensive assessment of WM microstructure, providing
not only estimates of FA, but also of the attributes of
WM that drive differences in FA. Combining relaxometric
and diffusion acquisition maps, the axonal diameter
distribution can be obtained with a clinical setup. The
resulting protocol comprehensively characterizes WM
features (AD, myelination, axon density), overcoming the
lack of specificity of DTI measures and thus allowing
specific conclusions to be drawn when looking at group
differences.
|
3567. |
32 |
Investigating tissue
microstructure using diffusion MRI: How does the resolution
limit of the axon diameter relate to the maximal gradient
strength?
Markus Nilsson1, and Daniel Alexander2
1Department of Medical Radiation Physics,
Lund University, Lund, Sweden, 2Centre
for Medical Image Computing, Department of Computer
Science, University College London, London, United
Kingdom
The resolution limit in diffusion MRI determines the
minimal structural size, e.g. axon diameter, that is
possible to estimate accurately. In q-space analysis,
this limit scales according to the inverse cube root of
the maximal gradient strength (Gmax). In this study, we
show by theoretical analysis and simulations that the
resolution limit scales as the inverse square root of
Gmax for model-based diffusion MRI.
|
3568. |
33 |
Sub-Voxel
Micro-Architecture Assessment by Diffusion of Mechanical
Shear Waves
Lauriane Jugé1, Simon Auguste Lambert1,
Simon Chatelin1, Leon ter BEEK2,
Valérie Vilgrain1, Bernard E Van BEERS1,
Lynne E Bilston3, Bojan Guzina4,
Sverre Holm5, and Ralph Sinkus1
1U773-CRB3, INSERM, Paris, France, 2Philips
Medical Systems, Best, Netherlands, 3University
of New South Wales, Neuroscience Research Australia, New
South Wales, Australia, 4Dept.
of Civil Engineering, University of Minnesota,
Minneapolis, MN, United States, 5Informatics,
University of Oslo, Oslo, Norway
In diffusion-weighted imaging, micro-structural
information is lost due to the massive averaging that
occurs within the imaging voxel and can only be revealed
when exploring the tissue using different b-values.
Similarly, for the first time we demonstrated using
magnetic resonance elastography (MRE) that the
frequency-dependence of mechanical shear wave diffusion
can allow probing sub-voxel distributions of scattering
structures and as a consequence overcome the spatial
resolution limitation relying intrinsically on the MR
imaging sensitivity. This technique opens perspective of
detecting small metastases or neo-vascularisation which
could really justify the use of MRE as a powerful
clinical diagnosis tool.
|
3569. |
34 |
Measuring Cell
Permeability with Diffusion-Weighted Simultaneous Spin-Echo
and Stimulated Echo EPI
Sharon Peled1, Saadallah Ramadan2,
and Carl-Fredrik Westin1
1Radiology, Brigham and Women's Hospital,
Boston, MA, United States, 2School
of Health Sciences, University of Newcastle, Callaghan,
NSW, Australia
A comparison of the spin echo and stimulated echo DWI
signals may yield an in vivo biomarker reflecting the
permeability and/or thickness of the myelin sheath. The
spin echo and stimulated echo DW-EPI signals can both be
measured after a single excitation.
|
3570. |
35 |
Measurement of post-mortem
brain microstructure using a clinical MR scanner with
oscillating gradients
Wilfred W Lam1, Saad Jbabdi1, and
Karla L Miller1
1FMRIB Centre, University of Oxford, Oxford,
Oxon, United Kingdom
A model that fits the extracellular diffusivity spectrum
of square-packed, non-abuttting cylinders was developed
and validated with simulation. A combination of sine-
and cosine-modulated oscillating gradients provided
sensitivity to the intracellular and extracellular
compartments. Values for intracellular volume fraction,
effective intracellular and extracellular radii, and
diffusivity spectra of the splenium of a post-mortem
macaque brain were acquired using a clinical MR scanner.
|
3571. |
36 |
Average Axon Diameter
Mapping of Pig Spinal Cord Using d-PFG Filtered MRI
Michal E Komlosh1,2, Evren Ozarslan1,3,
Martin J Lizak4, Iren Horkayne-Szakaly5,
Raisa Z Freidlin6, and Peter J Basser1
1STBB,PPITS,NICHD,NIH, Bethesda, MD, United
States, 2CNRM,USUHS,
Bethesda, MD, United States, 3CNRM,USUHS,
United States, 4NMRF,NINDS,NIH,
Bethesda, MD, United States, 5Neuropathology
and Ophthalmic Pathology, Armed Forces Institute of
Pathology, United States, 6CIT,NIH,
Bethesda, MD, United States
Double-PFG filtered MRI was used with a theoretical
model to obtain an average fiber diameter map of fixed
pig spinal cord. K-means segmentation and histological
analysis were performed to verify the result. This study
demonstrates that d-PFG filtered MRI is a powerful tool
for mapping axon diameter, and potentially other
microstructural features of tissues.
|
3572. |
37 |
The Rician bias in
diffusion MRI: a technical overview
Jelle Veraart1, and Jan Sijbers1
1Vision Lab, University of Antwerp, Antwerp,
Belgium
Many diffusion models require highly diffusion-weighted
MR images, which suffer from low signal-to-noise ratio (SNR).
Not only the precision of the diffusion model parameter
estimators depends on the SNR, the estimator’s accuracy
will also be affected if the Rice distribution of
magnitude MR data is not accounted for. We will give a
technical overview of –on the one hand - the effect of
the so-called Rician bias on diffusion model parameters
- on the other hand – some techniques, which were
proposed to reduce/remove the Rician bias.
|
3573.
|
38 |
Denoising
Diffusion-Weighted MR Images Using Low Rank Structure and
Edge Constraints
Fan Lam1,2, S. Derin Babacan2,
Norbert Schuff3, and Zhi-Pei Liang1,2
1Electrical and Computer Engineering,
University of Illinois at Urbana-Champaign, Urbana, IL,
United States, 2Beckman
Institute, University of Illinois at Urbana-Champaign,
Urbana, IL, United States, 3Center
for Imaging of Neurodegenerative Diseases, VA Medical
Center, San Francisco, CA, United States
A novel method is proposed to denoise diffusion weighted
image sequences. The proposed method uses a penalized
maximum likelihood formulation that handles Rician noise
and incorporates low rank structure and prior edge
information. The proposed method has been evaluated
using experimental DTI data, and provides superior
performance on recovering image features, anisotropy and
orientation information of diffusion tensors originally
corrupted by noise. We expect the proposed method to
prove useful for achieving higher measurement precision
and/or reducing data acquisition time for diffusion MRI.
|
3574. |
39 |
Computed Diffusion
Weighted Imaging under Rician Noise Distribution
Tokunori Kimura1, and Yuataka Machii1
1MRI development department, Toshiba Medical
Systems Corp., Otawara, Tochigi, Japan
A technique of computed diffusion weighted imaging (cDWI)
allowing to generate high b-value equivalent DWI images
from low b-value images was assessed. In this study,
simulation, phantom and volunteer study were performed
to optimize b-values for the range of biologic tissue
ADC under Rician noise. cDWI could provide better SNR
images than the mDWI when original data SNRs were kept
>3, by reducing background signals below noise bias
which is problematic on standard mDWI. In conclusion,
cDWI at optimum conditions can provide high CNR body
diffusion imaging especially for higher ADC and shorter
T2 tissues under Rician noise.
|
3575. |
40 |
Conditional least squares
estimation of diffusion MRI parameters
Jelle Veraart1, Sofie Van Cauter2,
Stefan Sunaert2, and Jan Sijbers1
1University of Antwerp, Antwerp, Antwerp,
Belgium, 2Department
of Radiology, University Hospitals of Leuven, Leuven,
Belgium
Many diffusion models require highly diffusion-weighted
images, which suffer from low signal-to-noise ratio,
eddy current distortions, and subject motion. Prior to
diffusion model fitting, those distortions should be
corrected; That data correction alters the underlying
Rician data distribution. Therefore, previously proposed
methods remove the Rician bias might be suboptimal. We
propose a conditional least squares estimator (CLS),
which is from theoretically an equivalent to the maximum
likelihood estimator (MLE). However, the CLS remains,
unlike the MLE, in well-defined cases unbiased after
data correction as it can rely on the linearity of the
expectation operator in high SNR and homogeneous
regions.
|
3576. |
41 |
The Parallel Kalman
Filter: an efficient tool to deal with real-time non central noise
correction
Veronique Brion1, Olivier Riff1,
Maxime Descoteaux2, Jean-François Mangin1,
Denis Le Bihan1, Cyril Poupon1,
and Fabrice Poupon1
1NeuroSpin, CEA/I²BM, Gif-sur-Yvette, France, 2Sherbrooke
University, Sherbrooke, Canada
This abstract proposes a novel real-time non central χ
noise correction method for diffusion-weighted MR data
that are known to be particularly sensitive to noise, as
the diffusion indicator in the tissues corresponds to a
signal loss. The technique is based on a Parallel Kalman
Filter which is well adapted for non-Gaussian noise
distributions, and which is as suitable for real time
purposes as the standard Kalman filter. The results on
simulated and real HARDI data show that it outperforms
the standard Kalman Filter approach since non-Gaussian
noise distributions are directly embedded in the process
through their Gaussian mixture approximation.
|
3577. |
42 |
A Robust and Automated
Method for Estimating the Expected Signal Standard Deviation
in DWI Datasets
Lin-Ching Chang1, and Carlo Pierpaoli2
1Department of Electrical Engineering and
Computer Science, The Catholic University of America,
Washington, DC, United States, 2National
Institutes of Health, Bethesda, MD, United States
Correctly estimating the expected signal standard
deviation (SD) due to thermal noise in diffusion
weighted images (DWIs) is important for controlling
image quality, correctly computing the chi-squares
value, image registration and outlier detection. For
single channel acquisitions, signal SD could be
estimated from a ghost-free region of the image
background. However, the signal in the background of
DWIs acquired on modern clinical scanners cannot be used
for this purpose. This paper proposes an object-based
method taking advantage of robust regression and
residual analysis to estimate signal SD. Results from
simulation indicate that the proposed method performs
very well even in the presence of DWI volumes which are
completely corrupted.
|
3578. |
43 |
Outlier Detection based on
the Neural Network for Tensor Estimation
Zhenyu Zhou1,2, Yijun Liu3, Guang
Cao1, Karen M. von Deneen3, and
Dongrong Xu2
1Global Applied Science Laboratory, GE
Healthcare, Beijing, Beijing, China, 2MRI
Unit, Columbia University, New York, NY, United States, 3McKnight
Brain Institute, University of Florida, Gainesville, FL,
United States
Diffusion weighted imaging is always influenced by both
thermal noise and spatially and/or temporally varying
artifacts such as subject motion and cardiac pulsation.
Motion artifacts are particularly prevalent, especially
when scanning an uncooperative population with several
disorders. In this study, we proposed a classifier work
frame which can classify DWIs as normal images or motion
artifacts. It achieves better performance in tensor
estimation by automatic unvoxel-wise outlier rejection
compared with manual and visual inspection, and previous
voxel-wise outlier rejection methods. The proposed
method could potentially remove the influence of
unexpected motion artifacts in DWI acquisitions.
|
3579. |
44 |
Maximum likelihood ADC
parameter estimates improve selection of metastatic cervical
nodes for patients with head and neck squamous cell cancer
Nikolaos Dikaios1, Shonit Punwani2,
Valentin Hamy1, Pierpaolo Purpura2,
Heather Fitzke3, Scott Rice2,
Stuart Taylor3, and David Atkinson3
1Department of Medical Physics and
Bioengineering, University College London, London,
Greater London, United Kingdom, 2Department
of Radiology, University College London Hospital, 3Centre
for Medical Imaging, University College London
The aim of this work was to determine whether
classification of benign and metastatic cervical nodes
based on diffusion weighted imaging (DWI) could be
improved by use of a maximum likelihood algorithm for
derivation of ADC parameters. A non linear least squares
(LSQ) algorithm is usually used to fit parameters to the
measured MR signal intensities as a function of b-value.
LSQ assumes that the noise in high b-values is normally
distributed whereas in reality it follows a Rice
distribution. To account for the Rician noise, maximum
likelihood (ML) algorithms have been proposed that
provide unbiased ADC estimates. In this work the
monoexponential, stretched exponential and biexponential
models were examined, with their involved parameters
calculated using the LSQ and the ML algorithms.
|
3580. |
45 |
DWI denoising using
overcomplete Local PCA Decomposition
Jose V Manjon1, Pierrick Coupe2,
Luis Concha3, Antoni Buades4,
Louis Collins5, and Montserrat Robles6
1IBIME, UPV, valencia, Spain, 2LaBRI,
Bourdeaux, France, 3UNAM,
Mexico, 4Universite
Paris Descartes, France, 5MNI,
Canada, 6IBIME,
UPV, Valencia, Spain
Diffusion Weighted Images normally show a low SNR due to
the presence of noise from the measurement process which
complicates and potentially bias the estimation of the
diffusion parameters. In this paper, a new denosing
method is proposed which takes into consideration the
multicomponent nature of DW images. This new filter
reduces random noise in multicomponent Diffusion MR
images by locally shrinking less significant Principal
Components using an overcomplete approach. The proposed
method is compared with similar state of art methods
using synthetic and real clinical MR images showing an
improved performance in all cases analyzed.
|
3581. |
46 |
Outlier detection for high
b-value diffusion data
Kerstin Pannek1, David Raffelt2,
Christopher Bell1, Jane Mathias3,
and Stephen Rose1
1The University of Queensland, Brisbane,
Queensland, Australia, 2Brain
Research Institute, Australia, 3University
of Adelaide, Australia
Diffusion weighted images are prone to artefacts caused
by physiological noise. Existing model based approaches
for voxel-wise identification of such artefacts rely on
the diffusion tensor model, which is problematic in
crossing fibre areas and at higher b-values required for
high angular resolution diffusion imaging. We developed
a voxel-wise identification method based on a higher
order model of diffusion, and compared outlier
probability maps obtained using the tensor model with
those obtained using a higher order model in a cohort of
103 healthy participants.
|
3582. |
47 |
SNR-adaptive Inhomogeneous
Noise Correction combined with Uniform filter and
Sensitivity map (INCUS) applying to Diffusion Weighted Image
with Parallel Imaging
Tokunori Kimura1, and Takashi Shigeta1
1MRI development department, Toshiba Medical
Systems Corp., Otawara, Tochigi, Japan
The purpose of this study was to assess a technique
named INCUS (inhomogeneous noise correction combined
with uniform filter and sensitivity map) for correcting
spatially inhomogeneous noise on parallel imaging (PI)
adaptively by combing with the Wiener filter (WF). Three
types of WF were compared between INCUS and uniform type
to DWI images. The INCUS could naturally reduce such
noises while minimizing blur, and the minimum RMSE was
smaller in the INCUS-WF than in the uniform-WF. We
concluded that INCUS-WF is simple but very effective to
optimally and automatically improve the spatially
inhomogeneous noise on PI.
|
3583. |
48 |
Reliability of
bi-exponential parameter estimation
Koichi Oshio1
1Department of Diagnostic Radiology, Keio
University School of Medicine, Shinjuku-ku, Tokyo, Japan
The shape of bi-exponential fitting errors in the
parameter space was calculated and visualized. From
these plots, it is suggested that parameter estimation
with bi-exponential curve fitting is not reliable, even
though the fitting itself is good, especially for small
range of b-value. Using a new set of parameters, D and
d, it is possible to estimate the parameters more
reliably, and the parameter interpretation becomes more
straightforward.
|
|
|
Electronic
Poster Session - Diffusion & Perfusion |
|
HARDI & Advanced Clinical DWI
Click on
to view
the abstract pdf and click on
to view the
video presentation. (Not all presentations are available.)
Tuesday 8 May 2012
Exhibition Hall |
16:00 - 17:00 |
|
|
|
Computer # |
|
3584.
|
49 |
HARDI-based methods for
fiber orientation estimation
Ben Jeurissen1, Alexander Leemans2,
Jacques-Donald Tournier3,4, and Jan Sijbers1
1Vision Lab, University of Antwerp, Antwerp,
Belgium, 2Image
Sciences Institute, University Medical Center Utrecht,
Utrecht, Netherlands, 3Brain
Research Institute, Florey Neuroscience Institutes
(Austin), Melbourne, Victoria, Australia, 4Department
of Medicine, University of Melbourne, Melbourne,
Victoria, Australia
In voxels containing multiple fiber orientations,
diffusion tensor imaging (DTI) has been shown to provide
misleading white matter orientation ‘integrity’
information. Several methods have been proposed to
extract fiber orientation information from the
diffusion-weighted signal, many of them relying on the
high angular resolution diffusion imaging (HARDI)
protocol. The purpose of this presentation is to review
the most widely-used methods for extracting fiber
orientation information from single-shell HARDI data.
From this overview, the need for multi-fiber
reconstruction algorithms should be clear as well as the
advantages and limitations of the different multi-fiber
reconstruction methods.
|
3585. |
50 |
Assessing the implications
of complex fiber configurations for DTI metrics in real data
sets
Ben Jeurissen1, Alexander Leemans2,
Jacques-Donald Tournier3,4, Derek K Jones5,
and Jan Sijbers1
1Vision Lab, University of Antwerp, Antwerp,
Belgium, 2Image
Sciences Institute, University Medical Center Utrecht,
Utrecht, Netherlands, 3Brain
Research Institute, Florey Neuroscience Institutes
(Austin), Melbourne, Victoria, Australia, 4Department
of Medicine, University of Melbourne, Melbourne,
Victoria, Australia, 5CUBRIC,
School of Psychology, Cardiff University, Cardiff,
United Kingdom
A recent study, using high quality diffusion weighted
data and CSD, has shown that multiple fiber orientations
can be detected consistently in approximately 90% of all
WM voxels. In this work, we assess the impact on DTI
fiber tractography and WM ‘integrity’ metrics by
measuring: 1) the angle between the primary DTI
eigenvector and the nearest CSD orientation; 2) the
volume fraction of the non-dominant CSD fiber
orientations. We show that errors in the DTI fiber
orientations are widespread throughout the WM and that
many voxels contain contributions from non-dominant
orientations that would be sufficiently large to affect
tensor-derived measures.
|
3586. |
51 |
Tract Coherence Imaging
(TCI): Quantifying the intra-voxel fiber tract heterogeneity
Sjoerd B Vos1, Max A Viergever1,
and Alexander Leemans1
1Image Sciences Institute, University Medical
Center Utrecht, Utrecht, Netherlands
Complementary to track-density imaging (TDI), we have
proposed tract coherence imaging, TCI, as a new MRI
contrast to investigate the local architectural
configuration of tract pathways. TCI quantifies the
local consistency of fiber tract orientations for a
given voxel resolution, limited between ‘0’ (random
orientations) and ‘1’ (perfectly aligned fibers),
providing an elegant framework for quantitative
evaluations that can be used in a super-resolution
framework. TCI does not depend on voxel size in
homogenous tract configurations, facilitating
quantitative analyses. Furthermore, the peak fiber
orientations can be extracted from the tract pathways in
each voxel to further understand the architectural
complexity.
|
3587. |
52 |
An Optimization Protocol
for Generalized Diffusion Tensor Imaging with Higher Order
Tensors
Nicole Murphy 1, Ching-Po Lin 2, and
Chunlei Liu 3
1Brain Imaging Analysis Center, Duke
University, Durham, North Carolina, United States, 2Department
of Biomedical Imaging and Radiological Sciences,
National Yang-Ming University, Taipei, N/A, Taiwan, 3Department
of Radiology, Duke University, Durham, NC_3129, United
States
|
3588. |
53 |
Pitfalls in the
Reconstruction of Fibre ODFs Using Spherical Deconvolution
of Diffusion MRI Data
Greg D Parker1, and Derek K Jones1
1CUBRIC, School of Psychology, Cardiff
University, Cardiff, South Glamorgan, United Kingdom
We report a previously overlooked pitfall in spherical
deconvolution approaches for reconstructing fibre
orientation distribution functions (fODFs) through a
spherical-harmonic (SH) basis. By examining single-fibre
population (fibres along the same axis) cases, we are
able to uncover descriptive deficiencies in the SH
representation that result in spurious fODF peaks once
the assumed and actual diffusive properties of the
target fibrous tissue no longer agree (e.g. local
degradation through disease). Through comparison with an
alternative that does not rely on spherical harmonics,
we are also able to suggest a viable alternative for
cases where a 'one-size-fits-all' single-fibre
diffusivity assumption is inappropriate.
|
3589. |
54 |
Multi-directional
anisotropy obtained from the diffusion propagator
Ek T Tan1, Luca Marinelli1,
Christopher J Hardy1, Kevin F King2,
Jonathan I Sperl3, and Marion I Menzel3
1GE Global Research, Niskayuna, NY, United
States, 2GE
Healthcare, Waukesha, WI, United States, 3GE
Global Research, Garching, Germany
Diffusional anisotropy is an important indicator for
axonal integrity, but conventional DTI-based fractional
anisotropy (FA) is not well-suited to describing
anisotropy of multi-directional diffusivities. A
multi-directional anisotropy (MDA) metric was proposed,
which is analytically and experimentally shown to be
equivalent to FA in single-fibers. In double-fibers, the
mean MDA was higher than FA, while the variation of MDA
was smaller than FA. In addition, fiber counts can be
inferred from the diffusion propagator. The availability
of both MDA and fiber counting can be useful for
multi-parametric analysis of anisotropy in
crossing-fiber and gray matter regions.
|
3590. |
55 |
Fast DSI Acquisition and
Reconstruction Based on Sparse Diffusion Propagator
Representations
Antonio Tristán-Vega1, and Carl-Fredrik
Westin1
1Laboratory of Mathematics in Imaging,
Brigham and Women's Hospital, Boston, Massachusetts,
United States
Compressed Sensing grants the possibility of reducing
the number of samples required to describe a signal
below its Nyquist rate. When applied to the estimation
of the diffusion propagator in diffusion spectrum
imaging, it arises the need to find a basis for which
the propagator is sparse, which is not trivial. We
address this problem by two means: 1) mapping the
propagator to a space where it is sparse, and 2) using a
model that explicitly isolates a non-sparse residual. We
provide two reconstruction algorithms for such model,
notably improving the estimation accuracy and sparsity
compared to previous approaches.
|
3591. |
56 |
High angular resolution
diffusion imaging methods: a diffusion phantom study
Ezequiel Farrher1, Tony Stöcker1,
Farida Grinberg1, and N. Jon Shah1,2
1Institute of Neuroscience and Medicine - 4,
Forschungszentrum Juelich, Juelich, Germany, 2JARA
- Faculty of Medicine, RWTH Aachen University, Aachen,
Germany
Diffusion-weighted magnetic resonance imaging provides a
unique, non-invasive tool to characterize tissue
microstructure and orientation. In order to enable a
quantitative validation of the proposed physical models
to elucidate tissue orientation, it is necessary to have
artificial systems with well-known structure and
physical properties. In this work, we demonstrate the
application of a multi-section diffusion phantom used
for comparison of the performance of two models for high
angular resolution diffusion imaging (HARDI) data
analysis, i.e. the so-called Q-ball Imaging (QBI) and
the constrained spherical deconvolution (CSD) methods.
|
3592. |
57 |
Quantification of fiber
bundle properties using a decomposition of the fiber
orientation distribution function
Till Riffert 1, Thomas Knösche 1,
and Alfred Anwander 1
1Cortical Networks and Cognitive Functions,
Max Planck Institute for Human Cognitive and Brain
Sciences, Leipzig, Germany
|
3593. |
58 |
Comparison of In
Vivo Human, In
Vivo Macaque
and Ex Vivo Human
Measurements of Diffusion Orientation in the Cerebral Cortex
Jennifer A. McNab1, Jonathan R Polimeni1,
Ruopeng Wang1, Jean C. Augustinack1,
Kyoko Fujimoto1, Allison Player1,
Christina Triantafyllou1,2, Thomas Janssens3,
Reza Farivar1, Wim Vanduffel1,3,
and Lawrence L Wald1,4
1A.A. Martinos Center for Biomedical Imaging,
Radiology, Massachusetts General Hospital, Harvard
Medical School, Boston, MA, United States, 2A.A.
Martinos Center at the McGovern Institute for Brain
Research, Massachusetts Institute of Technology,
Cambridge, MA, United States, 3Laboratory
for Neuro- and Psychophysiology, K.U. Leuven Medical
School, Campus Gasthuisberg, Leuven, Belgium, 4Harvard-MIT
Health Sciences and Technology Division, Massachusetts
Institute of Technology, Cambridge, MA, United States
We compare cortical diffusion anisotropy in in
vivo human
(1 mm iso), in
vivo macaque
(0.7 mm iso) and in ex
vivo human
tissue (0.5 mm iso). All data sets show radial diffusion
in M1 and tangential diffusion in S1, although the ex
vivo human
data also shows some regions of radial diffusion in S1.
|
3594. |
59 |
High-resolution
diffusion-weighted imaging of the orientational structure of
motor and somatosensory cortex in human cadaver brain
Christoph Wolfram Ulrich Leuze1, Alfred
Anwander1, Stefan Geyer1,
Pierre-Louis Bazin1, and Robert Turner1
1Max Planck Institute for Human Cognitive and
Brain Sciences, Leipzig, Sachsen, Germany
Diffusion-weighted imaging (DWI) at high spatial and
angular resolution was performed at 9.4 T on a block of
fixed human cadaver brain tissue containing part of the
motor-(M1) and somatosensory (S1) cortex. Analysis of
the radiality of the diffusion showed that, unlike
stated in earlier studies, the prevalent diffusion
direction in S1 is not entirely tangential but rather
that neighbouring layers with alternating tangential and
radial diffusion properties in both M1 and S1 exist.
High DWI spatial resolution is therefore clearly of
great importance for correct conclusions regarding
cortical orientational structure in the cortex.
|
3595. |
60 |
Towards assessing spatial
normalizations employing DTI and HARDI models
Luke Bloy1, Alex R Smith2, Madhura
Ingalhalikar2, Robert T Schultz3,
Timothy P.L. Roberts4, and Ragini Verma2
1Section of Biomedical Imaging, University of
Pennsylvania, Philadelphia, PA, United States, 2Section
of Biomedical Imaging, Univeristy of Pennsylvania,
Philadelphia, PA, United States, 3Center
for Autism Research, Children's Hospital of
Philadelphia, Philadelphia, PA, United States, 4Lurie
Family Foundation's MEG Imaging Center, Children's
Hospital of Philadelphia, Philadelphia, PA, United
States
This study compares the results of using DTI and HARDI
based diffusion models as the driving force behind
spatial normalization algorithms. Each modality
underwent separate state of the art registration
pipelines designed to optimally take advantage of each
contrast. The deformations resulting from each pipeline
were applied to the images of the other modality,
allowing for three means of comparison. Both
registration pipelines perform similarly when FA
variance was used as a means of comparison, however
using either FOD or normalized FOD variance HARDI
registration performed better. This demonstrates the
importance of using HARDI when accurate registration is
required.
|
3596. |
61 |
Diffusion-weighted
Spectroscopic Imaging of Multiple Metabolites in Rat Brains
after Middle Cerebral Artery Occlusion
Yoshitaka Bito1, Yuko Kawai2, Koji
Hirata1, Toshihiko Ebisu3, Yosuke
Otake1, Satoshi Hirata1, Toru
Shirai1, Yoshihisa Soutome1,
Hisaaki Ochi1, Masahiro Umeda2,
Toshihiro Higuchi4, and Chuzo Tanaka4
1Central Research Laboratory, Hitachi, Ltd.,
Kokubunji-shi, Tokyo, Japan, 2Medical
Informatics, Meiji University of Integrative Medicine,
Kyoto, Japan,3Neurosurgery, Nantan General
Hospital, Kyoto, Japan, 4Neurosurgery,
Meiji University of Integrative Medicine, Kyoto, Japan
Diffusion-weighted echo-planar spectroscopic imaging
with a pair of bipolar diffusion gradients (DW-EPSI with
BPGs) was used to acquire changes in apparent diffusion
coefficient (ADC) for multiple metabolites, namely, N-acetylaspartate
(NAA), creatine (Cr) and choline (Cho), in rat brains
after a right middle cerebral artery occlusion (MCAO).
The acquired changes in ADC maps of the metabolites and
water were analyzed by using Gaussian mixture
distribution, which takes advantage of the multiple
spatial pixels acquired simultaneously by
diffusion-weighted spectroscopic imaging. It is shown
that DW-EPSI with BPGs is effective for investigating
spatially varying ADC changes for metabolites and that
this technique may be useful for understanding
intra-cellular dynamics by using multiple metabolites as
probes.
|
3597. |
62 |
Assessing
Anti-inflammation and Axonal Preservation Effect of FTY720
Using Diffusion MRI
Xiaojie Wang1, Yong Wang2, Cheryl
Nutter3, and Sheng-Kwei Song2
1Chemistry, Washington University, Saint
Louis, Missouri, United States, 2Radiology,
Washington University, Saint louis, United States, 3Pfizer
Inc., United States
Multiple sclerosis (MS) is an inflammatory demyelinating
disease with axonal injury causing permanent
neurological disabilities. Axonal preservation remains a
significant challenge in current anti-inflammatory
therapies of MS. In the present study, we demonstrate
the efficacy of anti-inflammation and axonal
preservation of FTY720 on experimental autoimmune
encephalomyelitis (EAE) mice examined using diffusion
MRI. The effect of increased cellularity and vasogenic
edema associated with inflammation on diffusion tensor
imaging parameters was also examined.
|
3598.
|
63 |
Diffusion Basis Spectrum
Imaging detects evolving axonal injury, demyelination and
inflammation in the course of EAE
Tsang-Wei Tu1, Yong Wang2,
Chia-Wen Chiang3, Tsen-Hsuen Lin4,
Ying-Jr Chen3, Anne Cross5, and
Sheng-Kwei Song2
1Radiology, Washington University, Saint
Louis, Missouri, United States, 2Radiology,
Washington University, 3Chemistry,
Washington University,4Physics, Washington
University, 5Neurology,
Washington University
A novel diffusion basis spectrum imaging (DBSI) was
recently introduced to resolve inflammation in presence
of axon and myelin damage in a mouse model of multiple
sclerosis. Besides the anisotropic indices provided by
DTI, the isotropic diffusion reflects inflammation,
through the estimation of cellularity and water
fraction. In current study, in vivo DBSI of the lumbar
spinal cord from EAE mice was performed, followed by
histological validation. DBSI parameters revealed
evolving multiple neuropathologies in the EAE course.
Histological findings substantiated in vivo DBSI
results. The quantification of cell and water fractions
successfully identified the spatial and temporal
evolution of inflammation.
|
3599. |
64 |
Increase of structural
disorder along neurites is leading cause for diffusivity
drop in acute ischemia
Dmitry S. Novikov1, Jens H. Jensen2,
and Joseph A. Helpern2
1Radiology, NYU School of Medicine, New York,
NY, United States, 2Radiology
and Radiological Science, Medical University of South
Carolina, Charleston, SC, United States
The types of microstructural architecture in any media
(including living tissues) are classified in terms of
the long-time tail exponent in the molecular velocity
autocorrelation function. The specific value of the
power-law exponent obtained from the oscillating
gradient spin echo measurement in rat cerebral gray
matter characterizes the relevant tissue anatomy that
restricts water diffusion. It is argued that short-range
disorder, likely due to spines and varicosities,
provides the chief hindrance to diffusion along
dendrites and axons and that the increase in this
structural disorder is a primary cause of the
diffusivity drop in ischemic stroke.
|
3600.
|
65 |
Direct evidence for
decreased intra-axonal diffusivity in ischemic human stroke
Els Fieremans1, Jens H. Jensen2,
Edward S. Hui2, Dmitry S. Novikov1,
Ali Tabesh2, Leonardo Bonilha2,
and Joseph A. Helpern2
1Center for Biomedical Imaging, Radiology,
New York University School of Medicine, New York, NY,
United States, 2Radiology
and Radiological Science, Medical University of South
Carolina, Charleston, SC, United States
The decrease of the water diffusion coefficient in
ischemic stroke provides a sensitive and reliable
diagnostic tool. However, the underlying biophysical
mechanisms for the diffusion drop are still not fully
understood. In this study, we characterize changes in
the white matter microstructure in human subacute stroke
by applying a recently developed white matter model for
diffusional kurtosis imaging, which yields estimates for
the intra-axonal and extra-axonal diffusivities and for
the axonal water fraction. A large change of 55% is
observed in the intra-axonal diffusivity, consistent
with axonal beading as a primary mechanism underlying
the diffusion drop associated with ischemia.
|
3601. |
66 |
Diffusional Kurtosis
Imaging Detects Age-related Grey matter Changes in the
Normal Mouse Brain
Maria F Falangola1, David Guilfoyle2,
Edward S Hui1, Caixia Hu2, Scott
Gerum2, John LaFrancois3, Xingju
Nie1, Jens Jensen1, Ali Tabesh1,
and Joseph A Helpern,1
1Radiology, Medical University of South
Carolina (MUSC), Charleston, SC, United States, 2Medical
Physics, Nathan Kline Institute, Orangeburg, New York,
NY, United States, 3Dementia
Research, Nathan Kline Institute, Orangeburg, New York,
NY, United States
Since the transition from young to aged adult during the
normal aging process leads to changes in grey matter
morphology, characterizing the age-related diffusion
patterns in the rodent brain is important for
interpreting and differentiating the changes associated
with pathological process in rodents’ models of
neurodegenerative diseases. Diffusional Kurtosis Imaging
(DKI) quantifies the non-Gaussian behavior of water
diffusion, contributing additional information beyond
that provided by diffusion tensor imaging. Here we
report that the DKI can characterize the age-related
microstructural changes in the cortex and sub-cortical
regions in the normal mouse brain.
|
3602. |
67 |
High resolution ex vivo
diffusion kurtosis imaging of chronic perilesional brain
changes in a rat stroke model
Umesh Rudrapatna1, Pavel Yanev1,
Karsten Ruscher2, Annette van der Toorn1,
Tadeusz Wieloch2, and Rick Dijkhuizen1
1Biomedical MR Imaging and Spectroscopy
Group, Image Sciences Institute, University Medical
Center Utrecht, Utrecht, Netherlands, 2Laboratory
for Experimental Brain Research, Department of Clinical
Sciences Lund, Lund University, Lund, Sweden
Elucidation of structural plasticity in lesion
borderzones after stroke may lead to development of
recovery-enhancing strategies. While diffusion tensor
imaging (DTI) allows assessment of white matter
reorganization, there is no established MR contrast for
measurement of structural remodeling in grey matter. In
this study we analyzed to what degree diffusion kurtosis
imaging (DKI) allows detection of microstructural
changes in perilesional grey matter. Our high resolution
ex vivo study in a rat stroke model shows that at
chronic time points, DKI parameters were significantly
altered in perilesional cortex and striatum, and to a
larger extent than DTI parameters. We speculate that DKI
may significantly help to unravel the complex,
heterogeneous microstructural changes associated with
post-stroke tissue plasticity.
|
3603. |
68 |
Diffusion Kurtosis Imaging
Analysis of Microstructural Differences between Patients
with Alzheimer's Disease and Mild Cognitive Impairment
Nanjie Gong1, Chun Sing Wong1,
Chun Chung Chan2, Lam Ming Leung2,
Yiu Ching Chu3, and Queenie Chan4
1Diagnostic Radiology, The University of Hong
Kong, Hong Kong, China, 2United
Christian Hospital, Hong Kong, 3Kwong
Wah Hospital, Hong Kong, 4Philips
Healthcare, Hong Kong
To investigate the sensitivity of the measurements from
DKI for differentiating between patients with MCI and
patients with AD and detecting microstructural changes
in both white matter and grey matter, we used region of
interest (ROI) analysis focusing on the ROIs that have
been previous investigated using DTI model in other
studies. We hypothesize that with more precise model and
additional information provided by DKI matrix, we could
not only better differentiate between MCI and AD, but
also better characterize the microtructural
alternations. This study was approved by Institutional
Review Board in Hong Kong. From 2011/03-2011/09, totally
24 patients (13 male, 11 female) were recruited from a
local tertiary referring center. While none previous
studies, in which DTI model were used, of Alzheimerfs
disease and MCI found any significant difference between
these two groups in regions like whole brain grey
matter, temporal lobe white matter or grey matter, our
study, with a more precise diffusion model of DKI, found
promising difference in these regions which may
characterize brain tissue microstructural changes during
the disease deteriorating. In addition, the extra
measurement of Kaxial bears possibility of providing
information in new aspects which will help improve the
understanding and delineation of this disease. Further,
only a few studies had demonstrated the correlation
between MD or FA and MMSE score, and the results were
controversial. It is worth nothing that in our study, in
addition to MD and FA, Daxial and Dradial along with the
new measurements of Kaxial, Kradial, and MK also
significantly correlated with MMSE score. It suggests
that DKI modelfs measurements may be more sensitive
indicators for reflecting Alzheimerfs disease
progression.
|
3604. |
69 |
Diffusional kurtosis
imaging: Towards optimal subacute assessment of the
microenvironment of ischemic tissue
Edward S. Hui1, Chu-Yu Lee2, Josef
P. Debbins2, Timothy Q. Duong3,
and Joseph A. Helpern1
1Dept of Radiology, Medical University of
South Carolina, Charleston, South Carolina, United
States, 2Dept
of Electrical Engineering, Arizona State University,
Tempe, Arizona, United States, 3Research
Imaging Institute, UTHSCSA, San Antonio, Texas, United
States
The diagnostic value of ADC obtained from DWI is often
dwarfed by its pseudonormalization during subacute
stroke. It is therefore necessary to find an alternative
that is more sensitive and specific to the underlying
structural changes along the course of ischemic
infarction. One potential technique is diffusion
kurtosis imaging (DKI) which measures non-Gaussianity of
water diffusion. The current study showed that MK is a
sensitive biomarker for ischemic injury, especially
subacute stroke where MD and T2W pseudonormalize as a
result of vasogenic edema. DKI could potentially
complement conventional DWI for improving stroke
diagnosis, particularly during the subacute phase.
|
3605. |
70 |
Diffusion Tensor and
Kurtosis Imaging Analysis of Idiopathic Normal Pressure
Hydrocephalus: by Using Corticospinal Tract
Issei Fukunaga1,2, Masaaki Hori2,
Yoshitaka Masutani3, Nozomi Hamasaki2,
Shuuji Sato2, Takaaki Hattori4,
Koji Kamagata2, Masakazu Miyajima5,
Madoka Nakajima5, Atsushi Nakanishi2,
Shigeki Aoki2, and Atsushi Senoo1
1Graduate School of Health Promotion Science,
Tokyo Metropolitan University, Nerima ward, Tokyo,
Japan, 2Department
of Radiology, Juntendo University, Bunkyo ward, Tokyo,
Japan, 3Department
of Radiology, Graduate School of Medicine, The
University of Tokyo, Bunkyo ward, Tokyo, Japan,4Department
of Neurology, Kanto Central Hospital, Setagawa ward,
Tokyo, Japan, 5Department
of Neurosurgery, Juntendo University, Bunkyo ward,
Tokyo, Japan
We studied the diffusion characteristics of the brain in
patients with idiopathic normal pressure hydrocephalus
and in age-matched controls by using tract-specific
analysis.
|
3606. |
71 |
Water Diffusional Kurtosis
Imaging (DKI) Analysis of Ischemic Stroke Model in Juvenile
Rats
Renaud NICOLAS1, Gérard RAFFARD2,
Stéphane SANCHEZ2, Eric PETERSON2,
Florent AUBRY1, Isabelle BERRY1,
Pierre CELSIS1, and Bassem HIBA2
1Imagerie cérébrale et handicaps
neurologiques; UMR 825, INSERM, F-31059 Toulouse,
France, 2Centre
de Résonance Magnétique des Systèmes Biologiques,UMR
5536, CNRS, F-33076 Bordeaux, France
DWI images of 7 juvenile rats following MCAO were
acquired with b-factors up to 2500 s/mm² and with three
diffusion times (10,30,50 ms)and analysed with the
Statistical Model of Diffusion Imaging that provide a
way to estimate Diffusional Kurtosis of ischemic brain
regions. A statistically significant change for Dapp (40
% reduction) and Kapp (55 % rise) were observed in
ischemic versus healthy cortex. No significant effects
of diffusion times were observed in this preliminary
study.
|
3607.
|
72 |
Diffusivity/Kurtosis
Mismatch in Acute Ischemic Stroke: Potential Indicator of
Reversible Ischemic Injury
Jerry S Cheung1, Enfeng Wang1,2,
and Phillip Zhe Sun1
1Athinoula A. Martinos Center for Biomedical
Imaging, Department of Radiology, MGH and Harvard
Medical School, Charleston, MA 02129, United States, 2Department
of Radiology, 3rd Affiliated Hospital, Zhengzhou
University, China
By providing detailed properties on water diffusion and
therefore more specific information on microstructural
environment, diffusional kurtosis imaging (DKI) may
allow better characterization on heterogeneous ischemic
cerebral tissue. In this study, we examined and compared
mean diffusion (MD) and mean kurtosis (MK) lesions in a
transient middle cerebral artery occlusion (MCAO)
ischemia rat model. Our results demonstrated that
substantial mismatch between MD and MK lesions existed
during MCAO, yet largely vanished following reperfusion.
These initial findings suggest that diffusional kurtosis
in addition to water diffusivity may improve
understanding of the diffusion changes related to
microstructural disturbances following acute cerebral
ischemic injury.
|
|
|
Electronic
Poster Session - Diffusion & Perfusion |
|
Connectivity, Networks, & Kurtosis
Click on
to view
the abstract pdf and click on
to view the
video presentation. (Not all presentations are available.)
Tuesday 8 May 2012
Exhibition Hall |
17:00 - 18:00 |
|
|
|
Computer # |
|
3608. |
49 |
Exploring the Structure of
the Thalamus with DTI
Sarah Mang1
1German Cancer Research Center DKFZ,
Heidelberg, DE, Germany
Presentation and comparison of different DTI based
methods for the segmentation of substructures in the
Thalamus. Advantages and disadvantages of the different
method types are discussed.
|
3609. |
50 |
Quantitative Analysis of
Structural Connectivity Using Fiber Tracking and
Non-Parametric Statistics
Bagrat Amirbekian1,2, and Roland Henry1
1University of California San Francisco, San
Francisco, California, United States, 2UC
Berkeley & UCSF Graduate Program in Bioengineering, San
Francisco, California, United States
Fiber tracking is a powerful method to explore
structural connectivity of white matter. However,
without statistical methods to estimate the
uncertainties associated with quantitative connectivity
measures it is very hard to compare fiber tracking
results. This study looks at the possibility of using
the residual bootstrap with fiber tracking to establish
confidence intervals on connectivity measures.
|
3610. |
51 |
Validation of DTI-tractography-based
measures of white matter pathways originating from the
primary motor area
Yurui Gao1,2, Ann S. Choe1,2, Xia
Li1, Iwona Stepniewska3, and Adam
W. Anderson1,4
1VUIIS, Vanderbilt University, Nashville, TN,
United States, 2BME,
Vanderbilt University, Nashville, TN, United States, 3Psychology,
Vanderbilt University, Nashville, TN, United States, 4BME,
Radiology and Radiological Science, Vanderbilt
University, Nashville, TN, United States
In our previous study, we validated DTI-tractography-based
measures of primary motor area (M1) cortical-cortical
connectivity. To further understand our previous result
of validation, in this study we investigated the
agreement between DTI-tractography-derived white matter
pathways and histological pathways. We reconstructed the
3D pathway of histological fibers as well as DTI fibers
originating from the M1 forelimb subarea in the squirrel
monkey and then quantitatively measured the agreement
between the DTI-derived pathway and the histology. We
also describe potential reasons for the failure of DTI
tractography to align perfectly with histological
tracts.
|
3611. |
52 |
A semi-automatic approach
for the extraction of white matter fiber bundles across
subjects
Christian Ros1, Daniel Güllmar1,
Martin Stenzel2, Hans-Joachim Mentzel2,
and Jürgen Rainer Reichenbach1
1Medical Physics Group, Department for
Diagnostic and Interventional Radiology I, Jena
University Hospital, Jena, Thuringia, Germany, 2Pediatric
Radiology, Department for Diagnostic and Interventional
Radiology I, Jena University Hospital, Jena, Thuringia,
Germany
With this contribution we present a new method for the
semi-automatic, consistent extraction of fiber bundles
from multiple tractography data sets. For every fiber
bundle, reliability maps were computed to assess the
contribution of every voxel to the bundle. The
reliability maps were then used to classify the fiber
tracts of each data set. Due to the use of multiple
tractography data sets, we were able to correct
erroneous or wrongly labeled tracts that usually occur
in individual data sets. Resulting fiber bundles are
more consistent across subjects compared to bundles that
are extracted with the ROI based methods.
|
3612. |
53 |
Comparison of thalamus
parcellation by cortical projections using three
tractography methods in neonates
Angela Downing1, Serena J Counsell1,
Daniel Rueckert2, A David Edwards1,
and Jo V Hajnal1
1Robert Steiner MRI Unit, Imaging Sciences
Department, MRC Clinical Sciences Centre, Hammersmith
Hospital, Imperial College, London, London, United
Kingdom, 2Department
of Computing, Imperial College, London, London, United
Kingdom
The development of thalamo-cortical projections is a key
process in neonatal brain development. Parcellation of
the thalamus according to thalamo-cortical connections
found from DTI is becoming well established in adults
but is currently uncertain in neonates. We have tested
three methods, partial volume, constrained spherical
deconvolution and global fibre reconstruction, using
32-direction HARDI data in term infants. Each method
provided a parcellation in all cases and these were
consistent to >63%. Whole brain seeding approaches were
found to be the most consistent with each other and
across subjects, as opposed to just considering paths
seeded in the thalamus.
|
3613. |
54 |
Hippocampal subfield ICA
multifiber tractography using 3T clinical diffusion data
Manbir Singh1, and Bryce Wilkins1
1Radiology and Biomedical Engineering,
University of Southern California, Los Angeles, CA,
United States
Hippocampal connectivity is a key objective of many
clinical studies particularly of elderly subjects. Using
a recently reported multi-fiber per voxel streamline
tractography approach that can construct up to 3 fiber
orientations per voxel in DTI data acquired with as few
as 25 gradient directions, and hippocampal subfield
demarcation by FreeSurfer, we show tracts connecting
individual hippocampal subfields to the entire brain.
Despite partial volume effects of the 2x2x2 mm-3 DTI
acquisition, which would lead to overlapping tracts,
differences in the subfield connections consistent with
biologically known hippocampal connectivity are apparent
in these results.
|
3614. |
55 |
Visualizing tractography
metrics of cortical-connectivity integrity in diffusion
imaging
Radu Jianu1, Wenjin Zhou1, Ryan
Cabeen1, Daniel Dickstein2,3, and
David H. Laidlaw1
1Computer Science, Brown University,
Providence, RI, United States, 2Psychiatry
& Human Behavior, Brown University, Providence, RI,
United States,3Bradley Hospital, Providence,
RI, United States
We present a circular visualization interface of the
tractography metrics for assessing cortical-connectivity
integrity. We subdivided the gray matter into 80
regions-of-interest (ROIs) and calculated two metrics
for each region-pair from the whole-brain tractography
model produced from high angular resolution diffusion
imaging. Three healthy control (HC) and three bipolar
patients (BP) were examined in the visualization for
their difference and location-specific changes in
tractography metrics were identified.
|
3615. |
56 |
Variance of structural
network for different fiber tracking schemes
Hu Cheng1, Ruopeng Wang2, and Aina
Puce1
1Indiana University, Bloomington, IN, United
States, 2Harvard
University, Boston, MA, United States
We investigated the effect of different fiber tracking
schemes on the construction of structural brain
networks. Our results show that HARDI and DTI, FACT and
Tensorline, both result in similar networks with
correlation coefficients greater than 0.9. HARDI is
superior to DTI in terms of tracking efficiency and
test-retest reliability. Tensorline algorithm is able to
track longer fibers than FACT but also produces more
variances. The use of white matter mask can effectively
remove spurious fibers that normally cannot survive over
long range tracking. The networks constructed with and
without white matter mask are very different.
|
3616. |
57 |
Neocortical Network Damage
Assessment by Homotopic Lesion Mapping on Healthy Subjects
Emil Harald Jeroen Nijhuis1,2, Douwe P
Bergsma3,4, Albert V van den Berg5,6,
Anne-Marie van Cappellen van Walsum2,7, and
David G Norris1,8
1Donders Institute for Brain, Cognition and
Behaviour, Radboud University, Nijmegen, Gelderland,
Netherlands, 2MIRA
Institute for Biomedical Technology and Technical
Medicine, University of Twente, Enschede, Overijssel,
Netherlands, 3Department
of Functional Neurobiology, Utrecht University,
Helmholtz Research School, Netherlands, 4Department
of Cognitive Neuroscience, University Medical Centre St
Radboud, Netherlands, 5Department
of Cognitive Neuroscience, Utrecht University, Helmholtz
Research School, Netherlands, 6Department
of Cognitive Neuroscience, University Medical Centre St
Radboud, Nijmegen, Netherlands, 7Department
of Anatomy, University Medical Centre St Radboud,
Nijmegen, Netherlands, 8Erwin
L Hahn Institute for MRI, Universität Duisburg-Essen,
Germany
To determine the impact of a cerebral lesion on the
neocortical network it is necessary to know its state in
unharmed condition. We circumvent this problem by
homotopically mapping a lesion to a healthy sample
population and simulating its impact using a
reachability and distance based measure.
|
3617. |
58 |
Whole-brain patterns of
structural connectivity predict neurodevelopmental outcome
in premature infants
Anand Pandit1, Emma Robinson2,
Paul Aljabar3, Ioannis S Gousias1,
Daniel Rueckert3, Serena J Counsell1,
and David Edwards1
1Centre for the Developing Brain,
MRC/Imperial College, London, London, United Kingdom, 2FMRIB,
University of Oxford, Oxford, United Kingdom,3Department
of Computing, Imperial College, London, London, United
Kingdom
In this study we combine a novel probabilistic
tractography framework with Elastic Net LASSO regression
in order to identify the structural connectivity
patterns which are most predictive of neurodevelopmental
outcome in prematurely born two-year old infants.
Specific connections are shown to be responsible for
effective neurological function. This work represents
the first combined application of the tractography
framework and regression method to this type of imaging
data.
|
3618. |
59 |
Evaluating Tractography in
Spatially Normalized DTI Data
Nagesh Adluru1, Do P. M. Tromp1,
Hui Zhang2, and Andrew L. Alexander1
1University of Wisconsin-Madison, Madison,
WI, United States, 2University
College London, United Kingdom
Tract specific analyses allow for statistical mapping of
individual differences in specific white matter (WM)
pathways. A crucial step involved in such advanced
analyses is performing tractography in spatially
normalized diffusion tensor imaging (DTI) data. Spatial
normalization of DTI data often involves highly
non-linear transformations of the acquired data with
embedded interpolations of the data. Our study aims at
investigating the effects of such transformations on the
anatomical consistency of the normalized space
tractography compared to the acquired space
tractography. Our results demonstrate that DTI spatial
normalization does preserve properties of WM
tractography with a high degree of consistency.
|
3619. |
60 |
Inter hemispheric transfer
time and axon diameter properties of the corpus callosum
Assaf Horowitz1, Daniel Barazany2,
Galit Yovel2, and Yaniv Assaf2
1Tel Aviv University, Tel Aviv, Israel,
Israel, 2Tel
Aviv University
The corpus callosum (CC) is one of the largest fiber
systems in the brain connecting and transferring
information between the two hemispheres. Axcaliber is a
diffusion MRI methodology the thorough analysis of
multi-diffusion time, high b value DWI acquisition,
allows the estimation of the axon diameter distribution
(ADD). In this study we aimed to examine the
inter-hemispheric transfer time (IHTT) and its relation
to different axonal properties of the CC. We found that
the ADD micro-structural differences at different parts
of the CC are the base for the behavioral reaction time
(IHTT) differences.
|
3620. |
61 |
Resolving Non-Gaussian
Diffusion in Mouse Trigeminal Nerve using both Diffusion
Kurtosis Imaging (DKI) and Diffusion Basis Spectrum Imaging
(DBSI)
Yong Wang1, Els Fieremans2, Peng
Sun1, and Sheng-Kwei Song1
1Radiology, Washington University in St.
Louis, Saint Louis, MO, United States, 2Radiology,
New York University, New York, NY, United States
Diffusion kurtosis imaging (DKI) has been proposed as a
clinically feasible method to estimate the intra- and
extra-axonal diffusivities, and the intra-axonal water
fraction. Diffusion basis spectrum imaging (DBSI) has
been recently introduced to model multiple diffusion
compartments of crossing fibers and inflammatory
response in white matter injury. We hypothesize that by
incorporating restricted intra-axonal water diffusion
component, DBSI can also quantify the intra-axonal water
fraction. In this study, DBSI and DKI are applied to
mouse trigeminal nerves. Preliminary results have
demonstrated that DBSI obtained similar estimation on
both intra-axonal water fraction and other associated
indices as DKI counterparts.
|
3621. |
62 |
Analysis of Effect of
Short Diffusion Time in Diffusion Kurtosis Imaging using
Oscillating Gradient
Matthew M. Cheung1,2, Leon C. Ho1,2,
Abby Y. Ding1,2, Condon Lau1,2,
and Ed X. Wu1,2
1Biomedical Imaging and Signal Processing,
The University of Hong Kong, Pokfulam, Hong Kong SAR,
China, 2Department
of Electrical and Electronic Engineering, The University
of Hong Kong, Pokfulam, Hong Kong SAR, China
It has been known that kurtosis measurements are
dependent on the diffusion time (Δ), due to restricted
diffusion, heterogeneity of diffusion compartments or
water exchange over different compartments. In this
study, we applied oscillating diffusion gradient to
investigate the diffusion time effect to DKI
measurements in rat brain tissues in vivo. Mean
diffusivity and kurtosis were found to increase and
decrease respectively with Δ, indicating increased
restriction and microstructure heterogeneity. The Δ
dependency may provide insights into the complex
cellular properties in normal and diseased neural
tissues.
|
3622. |
63 |
General closed-form
expressions for DKI parameters and their application to fast
and robust DKI computation based on outlier removal
Yoshitaka Masutani1, and Shigeki Aoki2
1Radiology, The University of Tokyo Hospital,
Bunkyo-ku, Tokyo, Japan, 2Radiology,
Juntendo Hospital, Bunkyo-ku, Tokyo, Japan
Non-Gaussianity quantification of water diffusion
through diffusional kurtosis imaging (DKI) is expected
in clinical applications such as classification of
abnormal tissues. For faster computation of DKI
parameters; K, D, and S0, we show that it is possible to
obtain general closed-form expressions also for data
sets by more than three b-values. In addition, we
propose a fast and robust computation technique based on
greedy removal of outlier sample pair of b-value and DWI
signal. By using six data sets of brain from clinical MR
scanner, the technique was proved to be fast, robust and
effective for clinical DKI.
|
3623. |
64 |
Local variations of
magnetic susceptibility affect the contrast of Kurtosis
maps: validation in phantom at 9.4T and in human brain at
3T.
Marco Palombo1,2, Silvia Gentili1,
Silvia De Santis1,3, Marco Bozzali4,
and Silvia Capuani1,2
1“Sapienza” University of Rome, Physics
Department, Rome, Rome, Italy, 2CNR-IPCF
UOS Roma, "Sapienza" University of Rome, Rome, Rome,
Italy,3CUBRIC, School of Psychology, Cardiff
University, Cardiff, United Kingdom, 4ISC
- CNR Rome, Neuroimaging Laboratory Santa Lucia
Foundation, Rome, Rome, Italy
The goal of this work was to investigate the influence
of magnetic susceptibility ( )
variations (quantified by the T2* parameter) on
non-Gaussian water diffusion, evaluated by means of
Diffusional Kurtosis Imaging method. To make our
investigation more significant, the dependence of
kurtosis indices were studied in both controlled phantom
(characterized by pore size from 4 to 10 m
and 10 -6 in
SI) and human brain.Experimental results reported here
show that variations
are correlated with the amount of deviation from
Gaussian behavior observed in diffusive decay of water
in both controlled phantoms and human brains using
Kurtosis approach.
|
3624. |
65 |
Comparison between
kurtosis and biexponential models for diffusion-weighted
brain imaging with high resolution and high b-factor
Bibek Dhital1, and Robert Turner1
1Max Planck Institute for Human Cognitive and
Brain Sciences, Leipzig, Germany
B-factors greater than 2000 s.mm-2 are
rarely used in diffusion-weighted imaging, due to the
consequent loss of adequate SNR. Early studies at high
b-factor used biexponential fitting, but recently its
appropriateness for human brain imaging has been
questioned, and kurtosis analysis has been proposed as
an alternative with fewer fit parameters. Benefitting
from the high SNR of diffusion-weighted STEAM-EPI at 7T,
we acquired diffusion-weighted images with a resolution
of 2 mm isotropic and maximum b-value of 8000 s.mm-2 .
Comparing biexponential fits to kurtosis fits for each
voxel, we found that biexponential fits showed much
superior goodness-of-fit throughout the brain.
|
3625. |
66 |
USING THE CHARMED MODEL TO
ELUCIDATE THE UNDERPINNINGS OF CONTRAST IN DIFFUSIONAL
KURTOSIS IMAGING
Silvia De Santis1, Yaniv Assaf2,
and Derek K Jones1
1CUBRIC, Cardiff University, Cardiff, United
Kingdom, 2Tel
Aviv University, Tel Aviv, Israel
The CHARMED model was used to understand whether and
where DKI contrast could be explained in terms of the
underlying axonal geometry, calculating K directly from
the propagator used in the CHARMED model and verifying
the correlation between K and the CHARMED parameters in
vivo. This work demonstrates that the information
contained in DKI overlaps with the information extracted
by CHARMED in areas of higher intra-voxel directional
coherence, while a different information content in
areas of non-negligible fibre dispersion.
|
3626. |
67 |
Multi-TE diffusion
kurtosis imaging in vivo
Alexandru Avram1, Arnaud Guidon2,
Chunlei Liu3, and Allen W Song3
1Section on Tissue Biophysics and
Biomimetics, NICHD, National Institutes of Health,
Bethesda, Maryland, United States, 2Biomedical
Engineering Department, Duke University, Durham, NC,
United States, 3Brain
Imaging and Analysis Center, Duke University Medical
Center, Durham, NC, United States
In this report we compare in vivo diffusion kurtosis
measurements acquired with short and long echo times
(TE) and discuss their potential for deriving a
diffusional kurtosis measures for myelin water in vivo.
Our findings provide initial evidence that the apparent
kurtosis coefficient vary significantly with TE
indicating differences between diffusional
characteristics of T2 water pools in white matter.
|
3627. |
68 |
Accuracy of Diffusional
Kurtosis Imaging in Resolving White Matter Fiber Crossings
Ali Tabesh1, Jens H. Jensen1, and
Joseph A. Helpern1,2
1Radiology and Radiological Science, Medical
University of South Carolina, Charleston, South
Carolina, United States, 2Neurosciences,
Medical University of South Carolina, Charleston, South
Carolina, United States
The accuracy of diffusional kurtosis imaging (DKI) in
resolving crossing fiber bundles was compared via
simulations to those of diffusion spectrum imaging (DSI)
and Q-ball imaging (QBI). The accuracies of these
techniques and DTI were also investigated when a
dominant fiber bundle intersects with an admixture of a
subdominant bundle. The simulations utilized the
analytical orientation distribution function
representation for each technique. DSI provided the most
accurate estimates in both comparisons, whereas QBI with
b = 4000 s/mm2 and DKI with b = 2000-2500 s/mm2 offered
similar accuracies. Finally, DKI was superior to DTI in
estimating the dominant fiber bundle direction.
|
3628. |
69 |
Power and variability
analysis in diffusion kurtosis imaging: Sample size
estimation in three white matter structures
Filip Szczepankiewicz1,2, Alexander Leemans3,
Pia Sundgren1,4, Ronnie Wirestam2,
Freddy Ståhlberg1,2, Danielle van Westen1,4,
Jimmy Lätt4, and Markus Nilsson2
1Department of Diagnostic Radiology, Lund
University, Lund, Sweden, 2Department
of Medical Radiation Physics, Lund University, Lund,
Sweden,3University Medical Center Utrecht,
Image Sciences Institute, Utrecht, Netherlands, 4Center
for Medical Imaging and Physiology, Skåne University
Hospital, Lund, Sweden
Statistical power and variability analysis was performed
using 20 sets of DKI data. The mean diffusivity (MD),
fractional anisotropy (FA), mean kurtosis (MK) and
radial kurtosis (RK) were determined in the cingulum,
corpus callosum and corticospinal tract. Sample sizes
required to detect a 10% difference with a power of 0.9
were calculated. Variability was divided into
inter-subject biological differences and that arising
from measurement noise. Minimum sample sizes varied
across structures and metrics, but were approximately 15
for MD, FA and MK, and approximately 30 for RK. The
inter-subject biological variability was the main
contributor to total variability.
|
3629. |
70 |
The effect of the kurtosis
on the accuracy of diffusion tensor based fiber tractography
Chantal M.W. Tax1, Sjoerd B. Vos1,
Jelle Veraart2, Jan Sijbers2, Max
A. Viergever1, and Alexander Leemans1
1Image Sciences Institute, University Medical
Center Utrecht, Utrecht, Netherlands, 2Visionlab,
Department of Physics, University of Antwerp, Antwerp,
Belgium
In addition to DTI, DKI quantifies the degree to which
the diffusion is non-Gaussian and it can be used to
estimate typical DTI measures more accurately but with
lower precision. In this work, the difference in
orientation information of the diffusion tensor was
compared between DTI and DKI. There is a systematic
deviation in orientation of the principle eigenvector,
showing the difference in accuracy. In addition,
deterministic and probabilistic fiber tracking on real
diffusion MRI data confirms this difference in
orientation information. In conclusion, the
architectural configuration of the DKI based fiber
pathways is more accurate than that of DTI.
|
3630. |
71 |
Regional values of the
diffusional kurtosis in the healthy brain
Danielle Van Westen1,2, Markus Nilsson3,
Nils Karlsson2, Mikael Johansson4,
Freddy Ståhlberg2,3, Pia C Sundgren1,2,
and Jimmy Lätt1
1Center for Medical Imaging and Physiology,
Skane University Hospital, Lund, Sweden, 2Diagnostic
Radiology, Lund University, Lund, Sweden, 3Department
of Medical Radiation Physics, Lund University, Lund,
Sweden, 4Institute
for Psychology, Lund University, Lund, Sweden
Regional values of the diffusional kurtosis, previously
reported in a very limited number of structures, were
determined in thirty-six healthy individuals in a large
number of anatomically defined areas. Mean kurtosis
varied from 1.38 in the splenium of the corpus callosum
to 0.66 in the caudate head. Estimates in previously
studied areas were well in line with those. Linear
age-dependency for mean kurtosis was found in some
regions, but no quadratic relationship with age, which
may be due to the limited number of individuals studied.
|
3631. |
72 |
Optimal Diffusion Kurtosis
Imaging for Clinical Use – Fewer diffusion weightings or
diffusion directions?
Jiachen Zhuo1, Jonathan Z. Simon2,
and Rao P Gullapalli1
1Diagnostic Radiology and Nuclear Medicine,
University of Maryland School of Medicine, Baltimore,
MD, United States, 2Electrical
& Computer Engineering, Biology, University of Maryland
College Park, College Park, MD, United States
Diffusion kurtosis imaging (DKI) has gained much
interest lately as a tool that can reveal subtle tissue
microstructure changes over and beyond available from
diffusion tensor imaging (DTI). The main challenge for
clinical applications of DKI is the long imaging
acquisition time due to the increased measurements
needed to fit a more complex model (21 model
parameters). Here we study the effect of diffusion
weightings and diffusion directions in estimated DKI
parameters to determine the optimal DKI imaging schemes
within a clinically feasible image acquisition time (<
10min), and to understand the estimation variability in
using these optimal DKI schemes.
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