13:30 |
0235. |
Introduction
Steven P. Sourbron
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13:42 |
0236.
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Comparison of Arterial
Input Functions by Magnitude and Phase Signal Measurement in
Dynamic Contrast Enhancement MRI using a Dynamic Flow
Phantom
Sangjune Laurence Lee1, Warren Foltz1,
Brandon Driscoll1, Ali Fatemi1,
Cynthia Menard1, Catherine Coolens1,
and Caroline Chung1
1Department of Radiation Oncology, University
of Toronto, Toronto, Ontario, Canada
Determining the arterial input function (AIF) is
critical for the accuracy of kinetic modeling of DCE MRI
measures. However, the magnitude signal derived AIF
suffers from in-flow, slice profile, and T2* effects.
Phase signal has been shown to be an alternative method
of acquiring the AIF data. Here, we evaluate the
accuracy of AIFs derived from the magnitude and phase
signal in a dynamic flow phantom, providing a
controlled, gold-standard framework. The phase-derived
AIF approached actual peak Gd-DTPA concentrations within
all imaging slices and at tested flow rates up to 7.5 mL/s,
while the magnitude-derived AIF was grossly attenuated.
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13:54 |
0237. |
Evaluation of
reproducibility of measured arterial input functions and DCE-MRI
derived model estimates obtained using either pre-bolus
individual AIF’s or population derived AIF’s
Mihaela Rata1, David Collins1,
James Darcy1, Christina Messiou1,
Nina Tunariu1, Martin Leach1,
Nandita Desouza1, and Matthew Orton1
1MRI Unit, CR-UK and EPSRC Cancer Imaging
Centre, Institute of Cancer Research and Royal Marsden
Hospital, Sutton, United Kingdom
Dynamic contrast enhanced MRI requires an
estimate/measurement of the arterial input function (AIF)
to derive pharmacokinetic parameters. This study
investigated a cohort of 21 patients, evaluating the
usefulness of measured patient specific AIF’s as derived
from pre-bolus compared with a population-based averaged
AIF. The variation of extracted AIF’s was explored over
3 vertical segments of the aorta in order to define the
most reproducible region. The reproducibility of the
pharmacokinetic parameter Ktrans was measured using
various AIF’s. The results suggest no improvement of the
study reproducibility when using the individual AIF
derived from coronal pre-bolus data.
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14:06 |
0238.
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The impact of overall
injection time on the arterial input function and pharmaco-kinetic
analysis using the Tofts model in DCE-MRI for prostate
cancer patients
Andrea Holt1, Edoardo Pasca1,
Stijn W. Heijmink2, Jelle Teertstra2,
Sara H. Muller2, and Uulke A. van der Heide1
1Department of Radiation Oncology, The
Netherlands Cancer Institute - Antoni van Leeuwenhoek
Hospital, Amsterdam, Netherlands, 2Department
of Radiology, The Netherlands Cancer Institute - Antoni
van Leeuwenhoek Hospital, Amsterdam, Netherlands
In prostate cancer patients, we studied the effect of
overall contrast agent injection time on the form of the
arterial input function and on the outcome of pharmaco-kinetic
analysis in healthy tissue. We found that below an
overall injection time of 10 s no further sharpening of
the first pass peak is observed.
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14:18 |
0239. |
Estimation of the Arterial
Input Function in a Mouse Tail from the Signal Phase of
Projection Profiles
Jennifer Moroz1, Andrew Yung1,
Piotr Kozlowski1, and Stefan Reinsberg1
1Physics and Astronomy, University of British
Columbia, Vancouver, British Columbia, Canada
Quantitative DCE-MRI analysis requires an accurate
measure of the arterial input function (AIF). The AIF
should have a high temporal resolution and be acquired
for each experiment. However, AIF acquisition in mice is
challenging because of their small size and rapid heart
rates. This work demonstrates that a high temporal
resolution AIF may be determined from a series of
projection scans using phase data. An AIF in a mouse
tail, having a temporal resolution of 100 ms, was
successfully measured. The results suggest that rapid
AIF acquisition in a mouse is possible and it may be
interleaved with DCE experiments.
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14:30 |
0240.
|
Reproducibility of Dynamic
Contrast-Enhanced MRI Perfusion Parameters on various
Computer Aided Diagnosis Workstations: Taking a Peek into
the Black Box.
Tobias Heye1, Matthew Davenport2,
Jeff Horvath1, Sebastian Feuerlein1,
Steven Breault1, Mustafa Bashir1,
Elmar M. Merkle1, and Daniel T. Boll1
1Department of Radiology, Duke University
Medical Center, Durham, NC, United States, 2Department
of Radiology, University of Michigan Health System, Ann
Arbor, MI, United States
Although many factors contributing to overall
measurement error have been identified, the effect of
commercially available DCE-MRI post-processing solutions
on quantitative (Ktrans, kep, ve) and semi-quantitative
(iAUGC) pharmacokinetic parameters has yet to be
defined. This study assessed the reproducibility of
pharmacokinetic parameters between various commercially
available post-processing solutions for DCE-MRI
(Tissue4DTM, Siemens, Germany; DynaCADTM,
Invivo, USA; AegisTM, Sentinelle Medical,
Canada; CADvueTM; iCAD, Inc., USA). There is
substantial variability (25.1-74.1% coefficient of
variation) for DCE-MRI pharmacokinetic parameters across
commercially available DCE-MRI post-processing
solutions. If DCE-MRI is to succeed as a widely
incorporated biomarker, the industry must agree on a
post-processing standard.
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14:42 |
0241. |
Comparison of Signal
Intensity and Standard Techniques for Estimation of
Pharmacokinetic Parameters in DCE-T1 Studies of Glioblastoma:
Using Model Selection
Hassan Bagher-Ebadian1,2, Siamak P
Nejad-Davarani1,3, Rajan Jain4,
Douglas Noll3, Quan Jiang1, 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
DCE-pharmacokinetic models rely on the construction of
an observation equation which demands conversion of the
measured signal intensity (SI) profile into an indicator
concentration time-course. Recent studies have proposed
that the normalized SI [(St-S0)/S0] be used instead of
the longitudinal-relaxation-rate change (ΔR1) in DCE-MRI
permeability analyses. However, we know of no assessment
of the agreement in the estimated permeability
parameters using different measures of concentrations
(SI-ΔR1). The goal of this study is to evaluate the use
of SI, as opposed to ΔR1, in the estimation of
permeability parameters in
DCE-T1-3D-Spoiled-Gradient-Echo studies in the brains of
ten treatment-naïve patients with glioblastoma.
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14:54 |
0242. |
Uncertainty Maps in
Dynamic Contrast-Enhanced MRI
Anders Garpebring1, Patrik Brynolfsson1,
Jun Yu2, Ronnie Wirestam3, Adam
Johansson1, Thomas Asklund4, and
Mikael Karlsson1
1Dept. of Radiation Sciences, Umeå
University, Umeå, Sweden, 2Centre
of Biostatistics, Swedish University of Agricultural
Sciences, Umeå, Sweden,3Dept. of Medical
Radiation Physics, Lund University, Lund, 4Division
of Oncology, Dept. of Radiation Sciences, Umeå
University, Umeå, Sweden
In dynamic contrast-enhanced MRI, errors propagate in a
highly non-trivial way from a number of sources of
uncertainty to the parametric maps. A method for
uncertainty estimation, based on multivariate linear
error propagation, was developed and evaluated.
Comparison with Monte Carlo simulations showed good
agreement for uncertainties introduced by noise in the
dynamic signal, noise in baseline signal, noise in
baseline T1, and amplitude errors in the arterial input
function. The feasibility of spatially resolved maps of
uncertainty subdivided by origin was also demonstrated
on in vivo data.
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15:06 |
0243. |
The Comparison of Arterial
Spin Labeling Perfusion MRI and DCE-MRI in Patients with
Prostate Cancer
Wenchao Cai1, Feiyu Li1, Jing Wang2,
Jue Zhang2,3, Xiaoying Wang1,2,
and Xuexiang Jiang1
1Department of Radiology, Peking University
First Hospital, Beijing, Beijing, China, 2Academy
for Advanced Interdisciplinary Studies, Peking
University, Beijing, Beijing, China, 3College
of Engineering, Peking University, Beijing, Beijing,
China
Introduction:Arterial spin labeling (ASL) MRI has the
advantage of no administration of the extrinsic tracer
which are capable of absolutely quantitatively measuring
the microvascular perfusion characteristics of tissue.
Purpose: To explore the correlation between the BF from
ASL and kinetic parameters from DCE-MRI in patients with
prostate cancer.Methods: Six patients with
pathologically confirmed prostate cancer were recruited
in this study to take the PASL pulse sequence and DCE MR
examinations. Results:Significant positive correlations
between BF value and Ktrans, Kep were observed in all
four TI (p < 0.05, Spearman¡¯s correlation analysis).
However, no significant correlation between BF and Ve
was found. Conclusion:The arterial spin labeling
sequence with no contrast medium allows extraction of
blood flow information specific to the angiogenic
process of prostate.
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15:18 |
0244.
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Predictive value of MRI -
perfusion parameters in patients with liver metastases
Wieland H Sommer1, Marco Armbruster1,
Steven Sourbron1, Maximilian F Reiser1,
and Christoph Zech1
1Department of Clinical Radiology, University
of Munich, Großhadern Hospital, Munich, Bavaria, Germany
A dynamic contrast enhanced MRI protocol for the liver
was established in neuroendocrine tumors with liver
metastases. To find the clinical value of DCE-MRI
parameters, these were correlated with FDG-PET-CT
parameters and clinical parameters. We found that the
arterial plasma flow highly correlates with SUV vales
from PET-CT and therefore can monitor the metabolism of
the metastases. Other parameters correlated with tumor
markers or clinical outcome parameters.
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