Traditional Posters
: Functional MRI
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Click on
to view the
abstract pdf and click on
to view the pdf of the poster viewable in the poster hall.
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Functional Connectivity Studies
Thursday May 12th
Exhibition Hall |
13:30 - 15:30 |
1592. |
Reliability of
functional and effective connectivity of the
resting state motor network in healthy subjects
Tejaswini Kavallappa1, Steven
Roys2, Anindya Roy3,
Joel Greenspan2, Rao Gullapalli2,
and Alan McMillan2
1Dept. of Nuclear Medicine and
Diagnostic Radiology, Univeristy of Maryland
School of Medicine, Baltimore, MD, United
States, 2University
of Maryland School of Medicine, 3University
of Maryland Baltimore County
The reliability of functional and effective
connectivity (using structural equation
modeling [SEM]) was examined. Reliability
assessment was performed on four datasets
that were subject to various types of
physiological and mean brain signal
filtering. Path coefficients in effective
connectivity demonstrated a higher degree of
variability compared to correlation
coefficients in functional connectivity,
regardless of filtering method used. The
high variability from test-retest results
from SEM analysis suggests caution when
interpreting results from such analysis.
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1593. |
Two
new-discovered functional networks of resting
brains
Yi Chia Li1, and Jyh Horng Chen2
1Graduate Institute of Biological
Engineering and Bioinformatics, National
Taiwan University, Taipei, Taiwan, 2Interdisciplinary
MRI/MRS Lab, Department of Electrical
Engineering, National Taiwan University,
Taipei, Taiwan
Up to 10 functional networks contributed by
low frequency fluctuations (LFFs) have been
reliably identified to consistently exist in
human resting brains. These networks consist
of regions which are known to be involved in
function of motor, vision, execution,
auditory, pain perception, language,
cerebellum, and the so called default-mode
network (DMN). In our present work, we
analyzed resting-state fMRI data of 11
healthy participants to further investigate
functional networks which consistently exist
in resting brains. The functional networks
obtained in our work largely corresponded to
the findings in prior literatures.
Additionally, we discovered two new
functional networks: spatial cognition
network and facial sensory network. Spatial
cognition network consisted predominantly of
superior and inferior parietal gyrus (BA
7/40), which were crucial in visuo-spatial
processing during cognition-Chinese-language
paradigms (reading and writing). Facial
sensory network covered pons and medial
temporal pole, which served to process
sensory information from human faces such as
the sense of smell and taste.
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1594. |
Stimulating
brain tissue with light - resting state fMRI
analysis ![](poster.gif)
Tuomo Starck1,2, Juuso Nissilä3,
Antti Aunio3, Ahmed Abou Elseoud1,2,
Jukka Remes1, Juha Nikkinen1,
Markku Timonen4,5, Timo Takala6,
Osmo Tervonen1,2, and Vesa
Kiviniemi1,2
1Diagnostic Radiology, Oulu
University Hospital, Oulu, Finland, 2Diagnostic
Radiology, Oulu University, Oulu, Finland, 3Valkee
Ltd, Finland, 4Department
of Psychiatry, Oulu University, Finland,5Institute
of Health Sciences, Oulu University,
Finland, 6ODL
Health ltd, Oulu, Finland
Based on literature about opsin proteins and
anecdotal evidence of inherent
light-sensitivity of the human brain tissue
we tested the hypothesis that brain activity
would alter during bright light stimulation
via ear canal. ICA dual regression analysis
was performed for full band resting state
BOLD fMRI data between constant light
stimulus (n=24) and sham controls (n=26).
Lateral visual IC was significantly
different between the groups, light stimulus
subjects demonstrated slowly increasing
activity around the visual cortex and
related regions. Results suggest brain
tissue to be inherently light sensitive.
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1595. |
Self-organizing group level Independent
Component Analysis reveals task-related activity
as well as resting state networks during
auditory stimulation
Elizabeth Quattrocki Knight1,2,
Xiaoying Fan3, Blaise Frederick4,
Marc Kaufman4, and Bruce Cohen2,3
1Psychiatry, McLean Hospital,
Belmont, MA, United States, 2Psychiatry,
Harvard Medical School, Boston, MA, United
States, 3Frazier
Research Institute, McLean Hospital,
Belmont, MA, United States, 4Brain
Imaging Center, McLean Hospital, Belmont,
MA, United States
Although numerous fMRI studies have examined
visual processing, less work has focused on
the auditory system. With the exception of
sparse sampling techniques, interference
from scanner noise can impede the study of
auditory processing. Independent component
analysis (ICA), by isolating and removing
components in the data representing
extraneous sources of noise, can facilitate
fMRI data analysis. Here, we compare results
of a self-organizing group level ICA
(SogICA) to a random effects (RFX) general
linear model in an auditory listening study.
SogICA identifies not only more extensive
task-related activity, but also reveals
underlying resting state networks.
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1596. |
Interference
of Default Mode Neural Network by Visual
Stimulation and Subject’s Attention Depending on
the Resting Functional MRI ![](poster.gif)
Yasuhiro Funakoshi1, Tomomi
Sumiyoshi2, Masafumi Harada3,
and Hitoshi Kubo3
1Medidcal Imaging, University of
Tokushima, Tokushima, Tokushima, Japan, 2University
of Tokushima, 3Health
Biosciences, University of Tokushima
The default mode neural network would be
interfered or localized in the smaller area
by the stimulation from the outside and
subject’s attention. In the case of clinical
application to patients, the stimulation
from the outside should be removed and it is
considered that the psychological resting
state is important to apply this technique
for the clinical diagnosis.
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1597. |
Functional
Network of Hand Prehension : validation by fMRI
network connectivity
Tzu-chen Yeh1,2, Chou-ming Cheng1,
Bi-yu Hsu1, and Jo-mei Huang2
1Department of Medical Research
and Education, Taipei Veterans General
Hospital, Taipei, Taiwan, 2Insitute
of Brain Science, National Yang-Ming
University, Taipei, Taiwan
Prehension is defined as the capacity to
reach and grasp which involves complex
neuro-coginitive architectures. Hand
prehension is composed of selection of grasp
model and transformation of motor command.
Wide network of motor hierarchy involves
action initiation of parietal cortices,
premotor, supplementary motor area and
primary motor cortex. A visuo-motor flanker
task was implemented for the fMRI study to
validate the prehension control model via
dorsal stream. By lag correlation of the
prehension-related components derived from
spatial independent component analysis, the
functional network of hand prehension echoed
the theoretical construct and demonstrated
major and minor connectivity of functional
correlates.
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1598. |
Hippocampal
connectivity modulated by menstrual cycle:a
resting state study ![](poster.gif)
Xinyuan Miao1, Thomas Zeffiro2,
and Yan Zhuo1
1Institute of Biophysics, Chinese
Academy of Sciences, Beijing, China,
People's Republic of, 2Neural
Systems Group, Massachusetts General
Hospital, United States
In this preliminary study, we used ROI-based
functional connectivity of resting-state
functional MRI to investigate changes in
inter-regional correlations in women’s
different menstrual phases. Our results
showed that the functional connectivity of
the left hippocampus and parahippocampus
with the bilateral superior occipital gyrus
and cuneus, and the right middle frontal
gyrus was higher in the early follicular
phase than in the mid-luteal phase. The
patterns of functional connectivity shown in
this study may provide new clues for
understanding the mechanism of how spatial
abilities are modulated by hormone during
menstrual cycle.
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1599. |
Task
modulation of intrinsic low-frequency temporal
connectivity in the brain default mode network ![](poster.gif)
Jingyuan Chen1, Catie Chang2,
Kui Ying1, Yan Zhu1,
and Gary Glover2
1Tsinghua University, Beijing,
Beijing, China, People's Republic of, 2Stanford
University, Stanford, CA, United States
In our study, we used both cluster analysis
and marginal/partial correlation analysis to
quantify and compare how low-frequency
temporal connectivity of the brain default
mode network (DMN) changes during sustained
tasks that activate and deactivate major
regions in the network. We found that
low-frequency temporal connectivity was not
extinguished but attenuated within most
major regions of DMN under tasks that
deactivate its nodes relative to rest, and
that more prefrontal regions were engaged in
the network under such task modulation.
Moreover, we noticed the persistence of
low-frequency temporal connectivity in
subjects whose DMN was activated by external
task.
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Traditional Posters
: Functional MRI
|
Click on
to view the
abstract pdf and click on
to view the pdf of the poster viewable in the poster hall.
|
Functional Connectivity Analysis
Monday May 9th
Exhibition Hall |
14:00 - 16:00 |
1600. |
Impact of the global
average in resting state functional connectivity:
quantification of anti-correlations ![](poster.gif)
Felix Carbonell1, Pierre Bellec2,
and Amir Shmuel1
1Montreal Neurological Institute, Montreal,
Quebec, Canada, 2Centre
de recherche de l'institut de Gériatrie de Montréal
In the current work we introduce the notion of Impact of
the Global Average in Functional Connectivity (IGAFC)
for quantifying the sensitivity of seed-based
correlation analysis to the inclusion of the global
average signal as a confounding effect. The IGAFC index
is defined as the correlation between the GA and the
BOLD at a particular voxel times the correlation between
the GA and the seed time course of interest. This
definition enables the calculation of a threshold at
which the impact of the GA would be large enough to
artificially introduce negative correlations.
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1601. |
A graph-theory approach to
study the effect of cognitive load on resting state networks ![](poster.gif)
Tommaso Gili1, Paolo Barucca2,
Francesco De Santis2, Guido Caldarelli3,
Emiliano Macaluso4, Bruno Maraviglia2,
and Federico Giove2
1Cardiff University Brain Research Imaging
Centre (CUBRIC), School of Psychology, Cardiff
University, Cardiff, Wales, United Kingdom, 2Dipartimento
di Fisica, Università di Roma Sapienza, Roma, Italy, 3CNR-ISC
Dipartimento di Fisica, Università di Roma Sapienza,
Roma, Italy, 4Neuroimaging
Laboratory, Santa Lucia Foundation, Roma, Italy
The interaction between different brain structures in
the study of functional connectivity is a good
conceptual match for considering the brain as a graph,
or complex network, of nodes and links. In this
representation, image voxels or parcellated brain
regions represent the nodes and a measure of similarity
in their responses defines the links between them. In
this work we focused on a particular type of method that
identifies nodes, which play central roles within the
network structure. Specifically we calculated
Eigenvector Centrality maps of the brain at rest and
during a 2-back verbal working memory task.
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1602. |
Incorporation of regional
homogeneity in seed definition for the resting-state
functional MRI analysis ![](poster.gif)
Feng-Xian Yan1, Yuan-Yu Hsu2,
Shi-Yu Cheng1, Kun-Eng Lim2, and
Ho-Ling Liu1,3
1Department of Medical Imaging and
Radiological Sciences, Chang Gung University, Kwei-Shan,
Tao-Yuan, Taiwan, 2Department
of Medical Imaging, Buddhist Tzu Chi General Hospital,
Taipei, Taiwan, 3Department
of Medical Imaging and Intervention, Chang Gung Memorial
Hospital, Tao-Yuan, Taiwan
This study proposed a method to improve the conventional
seed-based correlation analysis (SCAC) of resting-state
(RS) fMRI by incorporating the regional homogeneity
information (SCAReHo) in seed selection. Data from
twelve healthy subjects were analyzed with five seed
locations found in literatures: three in posterior
cingulate cortex for default mode network and two for
amygdale (right and left). The results showed that
SCAReHo was more sensitive in detecting functional
connectivity and less subject to variations in seed
locations. This method is applicable to all RS-fMRI
analysis and may be particular helpful when subjects
exhibit distinct functional anatomy compared with normal
populations.
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1603. |
Beyond thresholding:
fully-weighted graph representations of brain functional
connectivity ![](poster.gif)
Adam J Schwarz1, and John McGonigle2
1Psychological and Brain Sciences, Indiana
University, Bloomington, IN, United States, 2Computer
Science, University of Bristol, Bristol, United Kingdom
Functional connectivity analyses of fMRI data have
leveraged recent advances in complex network theory, but
these approaches have conventionally used a cut-off
inter-node connection strength to threshold the network.
This results in a sparse adjacency matrix amenable to
conventional graph theoretic treatment, but requires the
choice of a hard threshold (and verification of results
over a range of such thresholds). We characterize the
properties of fully-weighted human brain networks
obtained by retaining all edges along with connection
strength information, including the parametric
dependence of a power law adjacency function (replacing
the hard thresholding operation).
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1604. |
A Resting-State
Connectivity Index With No Dependence on SNR and CNR ![](poster.gif)
Ali Mohammad Golestani1, and Bradley G
Goodyear1,2
1Biomedical Engineering, University of
Calgary, Calgary, Alberta, Canada, 2Radiology
& Clinical Neuroscience, University of Calgary, Calgary,
Alberta, Canada
Resting-state fMRI analysis is often performed by
averaging the time courses in seed and target ROIs and
then computing the strength of connectivity using
temporal cross-correlation. A good connectivity index
should be sensitive to meaningful physiological changes
(e.g. change in connectivity strength in response to a
disease), but remain insensitive to SNR and CNR, which
can change between sessions. We introduce a
resting-state connectivity index that is normalized to
the connectivity of the seed to itself. This
normalization of connectivity within the given data set
removes the dependence on changes in SNR and CNR.
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1605. |
Estimation of Resting
State Network Activity Using Multivariate Prediction
Analysis Regression (MVPA-R)
Cameron Craddock1, and Stephen M LaConte1
1School of Biomedical Engineering and
Sciences, Virginia Tech, Blacksburg, VA, United States
We propose a method for deriving functional connectivity
maps using multivariate prediction analysis regression.
This method provides accurate estimation of the time
course of activity for a resting state network (RSN) of
interest from a never-before-seen dataset. This approach
is evaluated for 10 RSNs on a resting state test-retest
dataset acquired from 26 subjects. The proposed method
is able to accurately estimate RSN activity when at
least 5 minutes of data are available for training. This
method provides a framework for tracking RSN activity in
real-time as well as comparing methodological tradeoffs
inherent in resting state functional connectivity
analyses.
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1606. |
Individual brain
parcellation based on single subject ICA
Erik van Oort1, and David Norris1
1MR Techniques in Brain Function, Radboud
University Nijmegen, Donders Institute, Nijmegen,
Gelderland, Netherlands
Standard brain atlases are commonly used in neurological
applications of MRI, particularly fMRI studies. This
abstract describes research attempting to develop a
method to create an individual parcellation based on a
single subject ICA. High quality (35 minutes) rs-fMRI
data were acquired from 47 healthy subjects at 3T. A
single subject ICA was performed. The components
containing anatomical information were used to
parcellate the brain, without the use of any other prior
anatomical information. This parcellation was compared
to the AAL template, and shows several anatomical
features present in this template.
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1607. |
Principal Components
Analysis Reveals the Correlation Structure of Resting-State
fMRI Data ![](poster.gif)
Hongjian He1, and Thomas T Liu2
1Zhejiang University, Hangzhou, Zhejiang,
China, People's Republic of, 2Center
for Functional MRI and Department of Radiology, UC San
Diego, La Jolla, California, United States
We use principal components analysis to generate
low-dimensional approximations of resting-state fMRI
correlation maps, where the components are ranked by
their contribution to the original correlation map.
Applying this approach to connectivity maps with a seed
region in the posterior cingulate cortex, we find that
the first ranked component map represents correlation
with the global signal, while the second component shows
the anti-correlated relation between the default mode
network and task positive network. Our results support
the general validity of global signal regression and the
existence of anti-correlated resting-state networks.
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1608. |
On connectivity within the
Default Mode Network: an ICA and tractography approach
Erik van Oort1, and David Norris1
1MR Techniques in Brain Function, Radboud
University Nijmegen, Donders Institute, Nijmegen,
Gelderland, Netherlands
This abstract describes detailed connectivity within the
DMN. High quality rs-fMRI (35 minutes) and DWI (256
directions) data of 47 healthy subjects was acquired at
3T. The rs-fMRI data was examined using ICA methods on
single subject level. The DMN was extracted using a
group-ICA. Its regions were examined for local
connectivity using sub-regions from the single-subject
ICA using a partial correlation analysis. This analysis
found nodes of connectivity in the PCC region of the
DMN. The locations of these nodes show a good
correspondence to the fiber tracking results.
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1609. |
Dynamic functional
connectivity measures using fcMRI ![](poster.gif)
Thomas W. Allan1, Matthew J. Brookes1,
Susan T. Francis1, and Penny A. Gowland1
1SPMMRM, University of Nottingham,
Nottingham, United Kingdom
Electrophysiological measurements of functional
connectivity (fc) have shown marked changes in fc over
the time scale of typical resting state fcMRI
recordings. Here we investigate whether these dynamic
changes are observable in fcMRI. We 1) describe a
technique to derive the statistical significance of fc
maps constructed using varying length time windows; 2)
measure dynamic changes in motor and default mode
network connectivity showing a significant change in fc
over time; 3) confirm that networks are active on both a
short (20s) and long (300s) time scale.
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1610. |
The spectral power of
brain oscillations predicts the functions of brain networks
Yi Chia Li1, and Jyh Horng Chen2
1Graduate Institute of Biological Engineering
and Bioinformatics, National Taiwan University, Taipei,
Taiwan, 2Interdisciplinary
MRI/MRS Lab, Department of Electrical Engineering,
National Taiwan University, Taipei, Taiwan
Up to 10 functional networks contributed by low
frequency fluctuations (LFFs) have been reliably
identified to consistently exist in human resting
brains. These networks consist of regions which are
known to be involved in function of motor, vision,
execution, auditory, pain perception, language,
cerebellum, and the so called default-mode network (DMN).
Based on the concept proposed by Weisskoff et al. that
the baseline of LFF power spectrums followed a 1/f
curve, we analyzed resting-state fMRI data of 11 healthy
participants with 1/f model, to further investigate the
spectral characteristics of brain oscillations across
different networks. The parameter ¡§b¡¨ in 1/f model was
discovered to predict the functions of these networks,
which illustrated the spectral power of brain
oscillations differed across networks which served
different functions such as sensory, active, cognition,
and default-mode. The result was supported by the
discovery of the prior literature that the spectral
characteristics of brain oscillations linked with neural
processes which were modulated by the functions of brain
networks.
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Traditional Posters
: Functional MRI
|
Click on
to view the
abstract pdf and click on
to view the pdf of the poster viewable in the poster hall.
|
fMRI Analysis
Tuesday May 10th
Exhibition Hall |
13:30 - 15:30 |
1611. |
Complex and
magnitude-only preprocessing of 2D and 3D BOLD fMRI data
at 7 Tesla ![](poster.gif)
Robert L Barry1,2, Stephen C Strother3,4,
and John C Gore1,2
1Vanderbilt University Institute of
Imaging Science, Nashville, TN, United States, 2Department
of Radiology and Radiological Sciences, Vanderbilt
University Medical Center, Nashville, TN, United
States, 3Rotman
Research Institute, Baycrest, Toronto, ON, Canada, 4Department
of Medical Biophysics, University of Toronto,
Toronto, ON, Canada
A challenge with ultra-high-field fMRI is the
predominance of noise associated with physiological
processes unrelated to tasks of interest. This
degradation in data quality may be reversed using
post-acquisition algorithms designed to estimate and
remove the effects of these noise sources. BOLD fMRI
data acquired using 2D EPI and 3D PRESTO at 7T were
processed using the Stockwell transform filter,
retrospective image correction (RETROICOR), and
phase regression. Data quality was evaluated via
metrics of prediction and reproducibility using
NPAIRS. Results demonstrate the
pseudo-complementation of these algorithms and
maximization of prediction and reproducibility
through synergistic interactions between RETROICOR
and phase regression.
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1612. |
Detecting fMRI
Activation in K-Space for High Acceleration Factors
Gigi Galiana1, and Robert Todd Constable1
1Diagnostic Radiology, Yale University,
New Haven, CT, United States
Significant improvements have been realized in the
reconstruction of undersampled MR angiography data
simply by switching the order of the subtraction and
the unfolding steps. We report a similar improvement
in fMRI reconstructions simply by switching the
order of the analogous steps in fMRI processing.
Rather than reconstructing the individual time point
images and analyzing those images for activation, we
perform the GLM analysis on the undersampled
k-space. The sparse activation images are then
easier to unfold, allowing for better quality
reconstructions at high acceleration factors.
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1613. |
The Bleeding Artifact
of Spatially Constrained Canonical Correlation Analysis
in Functional MRI
Dietmar Cordes1, Mingwu Jin1,
Tim Curran2, and Rajesh Nandy3
1C-TRIC and Dept. of Radiology,
University of Colorado-Denver, Aurora, CO, United
States, 2Dept.
of Psychology and Neuroscience, University of
Colorado-Boulder, Boulder, CO, United States,3Depts.
of Biostatistic and Psychology, University of
California-Los Angeles, Los Angeles, CA, United
States
An improved method to detect activations in fMRI
uses local canonical correlation analysis (CCA) to
encompass a group of voxels in a 3x3 pixel
neighborhood. It is customary to assign the value of
the test statistic to the center voxel of the local
neighborhood. However, without spatial constraints
such an assignment introduces smoothing artifacts in
regions of strong localized activation, which we
refer to as “bleeding artifacts”. To reduce this
artifact we propose different spatial constraints in
CCA to enforce dominance of the center voxel and
introduce a method based on mixture modeling to
further reduce this artifact.
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1614. |
Investigation of
Efficient Implementation of Local Constrained Canonical
Correlation Analysis for fMRI
Mingwu Jin1, Rajesh Nandy2,
and Dietmar Cordes1
1University of Colorada Denver, Aurora,
CO, United States, 2UCLA,
Los Angeles, CA, United States
In previous work, local constrained canonical
correlation analysis (cCCA) methods were proposed in
order to avoid model overfitting and loss of
specificity. In this work, we further investigate
the performance, efficiency and possible improvement
of region-growing based cCCA (cCCA-RG) methods.
Using simulated data, we compare the estimation
power of different cCCA-RG methods as well as the
exhaustive search method (cCCA-ES). The detection
power is also investigated upon real fMRI data. Our
results demonstrate that cCCA-RG can significantly
improve the detection power within an acceptable
period of computation time.
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1615. |
A multivariate
regression framework for the analysis of fMRI data
accounting for spatial correlation
Rajesh Ranjan Nandy1
1Psychology and Biostatistics, University
of California, Los Angeles, CA, United States
Local canonical correlation analysis (CCA) is a
multivariate method that simultaneously analyzes the
timecourses of a group of neighboring voxels and is
more sensitive than the conventional univariate GLM
approach. However, unlike the general linear model (GLM),
an arbitrary linear contrast of the temporal
regressors has not been so far incorporated in the
CCA formalism. To address the first problem, a
multivariate regression model is presented.
Multivariate regression model is equivalent to CCA,
but easier to interpret. Arbitrary contrasts can be
used in the multivariate regression model (MRM)
approach including contrasts on voxels which is
impossible in the univariate framework.
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1616. |
Model-free fMRI group
analysis using FENICA ![](poster.gif)
Veronika Schöpf1,2, Christian
Windischberger1,2, Simon Robinson1,3,
Christian Kasess1,4, Florian Ph.S.
Fischmeister1,5, Rupert Lanzenberger4,
Jessica Albrecht6, Anna M Kleemann6,
Rainer Kopietz6, Martin Wiesmann6,7,
and Ewald Moser1,2
1MR Centre of Excellence, Medical
University Vienna, Vienna, Vienna, Austria, 2Center
of Medical Physics and Biomedical Engineering,
Medical University Vienna, Vienna, Vienna, Austria,3Department
of Radiology, Division of Neuroradiology, Medical
University Vienna, Vienna, Vienna, Austria, 4Division
of Biological Psychiatry, Department of Psychiatry
and Psychotherapy, Medical University Vi, Vienna,
Vienna, Austria, 5Faculty
of Psychology, University of Vienna, Vienna, Vienna,
Austria, 6Department
of Neuroradiology, Ludwig-Maximilians-University,
Munich, Munich, Germany, 7Department
of Neuroradiology, Technical University Aachen RWTH,
Aachen, Germany
In this study we were able to show that the new ICA
method FENICA reliably identifies activation in a
wide variety of paradigms and stimuli types.
Activation maps are in excellent agreement with
those established in previous, model-based analyses.
FENICA has the potential to become a valuable tool
for group fMRI studies, eliminating a priori
assumptions including model and HRF, and without the
need to downsample data in large studies, define
spatial templates or manually identify
single-subjector group components. Using FENICA it
is possible to analyze functional MRI data of
experiments using complex stimulus design involving
different modalities on a truly data-driven basis.
FENICA is a single-subject based technique allowing
for group statistics to be applied in a
well-established framework and provides a truly
exploratory, data-driven, operator independent and
therefore unbiased way of identifying common
patterns of activation.
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1617. |
Model-based and
data-driven analysis of whole brain EVI demonstrates
increased statistical power compared to EPI at 3 T ![](poster.gif)
Radu Mutihac1,2, Elena Ackley1,
Jochen Rick3, Akio Yoshimoto4,
Maxim Zaitsev3, Oliver Speck5,
and Stefan Posse1,6
1Department of Neurology, University of
New Mexico, Albuquerque, New Mexico, United States, 2Department
of Electricity & Biophysics, University of
Bucharest, Bucharest, Romania,3Department
of Radiology - Medical Physics, University Medical
Center Freiburg, Freiburg, Germany, 4Polytechnic
Institute of New York University, New York, New
York, United States,5Department
Biomedical Magnetic Resonance,
Otto-von-Guericke-University Magdeburg, Magdeburg,
Germany, 6Department
of Physics and Astronomy, University of New Mexico,
Albuquerque, New Mexico, United States
Whole brain multiple-slab echo-volumar-imaging (EVI)
is a novel methodology that provides up to an order
of magnitude higher temporal resolution compared to
multi-slice echo-planar imaging (EPI). However, fMRI
sensitivity of EVI and EPI has not yet been
systematically compared using neither hypothesis
driven inferential statistics like statistical
parametric mapping (SPM) nor exploratory methods
like spatial independent component analysis (ICA) or
temporal fuzzy clustering analysis (FCA). In this
study, we statistically assess the extent and
maximum T-score of activation elicited by an
auditory-gated visual-motor task for both modalities
using SPM8. Furthermore, the finer time course
information available in EVI lends itself to
data-driven analysis to identify physiological noise
sources and spurious activation investigated by
spatial ICA.
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1618. |
Use of independent
component analysis to define regions of interest for
fMRI studies ![](poster.gif)
Jolinda Carol Smith1, and Scott H Frey1,2
1Lewis Center for Neuroimaging,
University of Oregon, Eugene, OR, United States, 2Department
of Psychology, University of Oregon, Eugene, OR,
United States
Regions of interest (ROIs) are frequently used in
fMRI. When defining functional ROIs, investigators
face a number of arbitrary choices concerning the
statistical threshold to employ and the method for
delineating ROI boundaries. We propose a method for
defining ROIs using independent component analysis
(ICA). This method avoids many of the shortcomings
of general linear model based ROI definition, and is
robust and easy to implement. As a demonstration, we
apply this method to define ROIs in the cortex and
cerebellum that respond selectively to aurally paced
movements of the lips, hands, and feet.
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1619. |
One-step Thresholding
for BOLD Signal Detection in Accelerated fMRI ![](poster.gif)
Samir D Sharma1, Bosco S Tjan2,
and Krishna S Nayak1
1Electrical Engineering, University of
Southern California, Los Angeles, CA, United States, 2Psychology,
University of Southern California, Los Angeles, CA,
United States
Functional magnetic resonance imaging (fMRI) with
blood-oxygenation-level-dependent (BOLD) signal is
fundamentally limited by the time required to
acquire each volume. Standard EPI sequences with
statistically advantageous TRs of 1-2s are typically
restricted to acquiring no more than 16-32 slices
with a typical 3 mm3 isotropic
resolution. This covers only about 40-80% of the
cerebral cortex. A fast imaging technique is needed
for full volumetric coverage at short TRs. This work
proposes a simple and fast one-step thresholding
(OST) algorithm for the detection of BOLD signal
activation. Results from the proposed method at
2x-acceleration demonstrate close agreement with the
fully-sampled reference.
|
1620. |
Development of a
reasonable lateralization index for functional magnetic
resonance imaging ![](poster.gif)
Kayako Matsuo1, Annabel S.-H. Chen2,
and Wen-Yih Isaac Tseng1
1Center for Optoelectronic Biomedicine,
National Taiwan University College of Medicine,
Taipei, Taipei, Taiwan, 2Division
of Psychology, School of Humanities and Social
Sciences, Nanyang Technological University,
Singapore
Laterality index (LI) is often applied in functional
magnetic resonance imaging (fMRI) studies to
determine functional hemispheric lateralization.
However, conventional LI methods could suffer from
an outlier bias if t-values were extreme for a small
number of voxels. We developed an improved method to
calculate LI for fMRI called AveLI. This method
considers laterality of activation at each and every
t-value threshold for the task (thus this index is
not limited by over stringent thresholds), and
allows an intuitive comprehension of overall
asymmetry. We examined the feasibility and
reproducibility of AveLI by applying it to two fMRI
language tasks.
|
1621. |
Multivariate
discrimination in natural and urban scene viewing
Scott James Peltier1,2, Marc G Berman3,
Yash Shah2, Stephen Kaplan3,
and John Jonides4
1Functional MRI Laboratory, University of
Michigan, Ann Arbor, MI, United States, 2Biomedical
Engineering, University of Michigan, Ann Arbor, MI,
United States, 3Psychology,
University of Michigan, Ann Arbor, MI, United
States, 4Psychology,
University of Michigan, Ann Arbor, MI
Multivariate analysis offers an alternative way to
analyze functional MRI data, and allows applications
such as biofeedback. In this study, we use support
vector machines to analyze subjects viewing natural
or urban scenes. We demonstrate high accuracy, even
when using minimal amount of data.
|
1622. |
Assessing (fMRI)
Brain-Computer Interface Stability in ALS with Support
Vector Machine ![](poster.gif)
Robert Cary Welsh1, Laura Jelsone-Swain1,
Veronika Schoepf2, and Scott J Peltier3
1Radiology, University of Michigan, Ann
Arbor, MI, United States, 2Radiology,
Division of Neuroradiology, Medical University of
Vienna, Vienna, Austria, 3Functional
MRI Laboratory, University of Michigan, Ann Arbor,
MI, United States
We used fMRI data in conjunction with support vector
machine (SVM) classification of brain state to
examine (fMRI-based) brain-computer interface
stability in the amyotrophic lateral sclerosis (ALS)
patient population.
|
1623. |
Class-wise
contributions to spatio-temporal SVM classification of
fMRI data ![](poster.gif)
Rainer Boegle1,2, Carolin Cyran3,
Stefan Glasauer1,2, and Marianne
Dieterich2,3
1Center for Sensorimotor Research,
Ludwig-Maximilians University, Munich, Germany, 2Integrated
Center for Research and Treatment of Vertigo,
Ludwig-Maximilians University (IFBLMU), Munich,
Germany, 3Department
of Neurology, Ludwig-Maximilians-University, Munich,
Germany
Nowadays it is assumed that most brain functions
involve a network of cortical areas. Thus it should
be anticipated that the temporal dynamics of the
task-related BOLD responses of the respective areas
may vary. Previous studies used spatio-temporal
support vector classification to produce functional
brain maps revealing responses discriminating
between tasks (''discrimination maps''), without
having to assume a model for the task related BOLD
response. Building on these we present a method for
determining the class-wise contributions to these
brain maps which can reveal the class(task)-wise
similarities in addition to the class(task)-wise
differences revealed by the ''discrimination maps''.
|
1624. |
Automated
classification of SLE and APL patients and normal
controls using fMRI and DTI features ![](poster.gif)
An Vo1, Aziz M. Ulug1,2, E
Kozora3,4, G Ramon5, J Vega5,
R D Zimmerman6, D Erkan5, and
M D Lockshin5
1The Feinstein Institute for Medical
Research, Manhasset, New York, United States, 2Department
of Radiology, Albert Einstein School of Medicine,
Bronx, New York, United States, 3National
Jewish Health, Denver, Colorado, United States, 4University
of Colorado Medical Center, Denver, Colorado, United
States, 5Hospital
for Special Surgery, New York, New York, United
States,6Weill Medical College of Cornell
University, New York, New York, United States
Most patients with systemic lupus erythematosus
(SLE) have cognitive dysfunction suggesting but
clinically important central nervous system
involvement. Antiphospholipid syndrome is another
autoimmune disorder defined as the presence of
arterial or venous thromboses and/or pregnancy
morbidity with persistent antiphospholipid
antibodies (APL). Diffusion tensor imaging (DTI) and
fMRI has been used to study the SLE and APL
patients. The purpose of this study is to use both
fMRI and DTI features to automatically classify
SLEs, APLs and normal controls.
|
1625. |
Sub millimiter
coregistration of functional maps across imaging
sessions![](pdficon2.gif) ![](poster.gif)
Jeremy Lecoeur1, Feng Wang2,
Li Min Chen2, Benoit M. Dawant1,
and Malcolm J. Avison2
1Electrical Engineering and Computer
Science, Vanderbilt University, Nashville,
Tennessee, United States, 2Radiology
and Radiological Science, Vanderbilt University
Medical Center, Nashville, Tennessee, United States
A pipeline for the automated coregistration of
sub-millimeter resolution functional maps from brain
sub-volumes was implemented and tested in a non
human primate model of focal somatosensory cortical
activation. Preliminary studies demonstrate an
accuracy of coregistration of about 30 micrometers
for structural and 100 micrometers for functional
maps across separate sessions.
|
1626. |
Spatial modeling of
phMRI data with a functional basis set
Adam J Schwarz1, Vesa Kiviniemi2,
Sara de Simoni3, Steven CR Williams3,
and Mitul A Mehta3
1Translational Medicine, Eli Lilly and
Company, Indianapolis, IN, United States, 2Diagnostic
Radiology, Oulu University Hospital, Oulu, Finland, 3Centre
for Neuroimaging Sciences, Institute of Psychiatry,
London, United Kingdom
PhMRI responses are often widespread, but the
stability of the spatial localization of responses
across subjects and cohorts at the voxel scale may
be affected by neuroanatomical variation, motion and
residual differences in spatial normalization. We
show that the phMRI response to ketamine can be
accurately and sensitively modeled as a linear
superposition of stable, independently derived,
functional units. The concept is illustrated using a
high model order ICA segmentation of the brain. Such
functional units can be spatially distributed and
overlapping, unlike anatomical VOIs, and may be
robust to high spatial frequency differences across
subjects.
|
1627. |
BOLD susceptibility
map reconstruction from fMRI by 3D total variation
regularization ![](poster.gif)
zikuan chen1, Arvind Caprihan1,
and Vince Calhoun1,2
1Mind Research Network, Albuquerque, NM,
United States, 2Electrical
and Computer Engineering, University of New Mexico,
Albuquerque, NM, United States
In BOLD fMRI, the BOLD activity can be delineated in
terms of susceptibility map reconstructed from BOLD
complex image, which is a 3D ill-posed inverse
problem involving 3D deconvolution and denosing. In
this work, we report a solution by the split Bregman
algorithm of total variation (TV) regularization,
which is an iterative regularization (implemented by
a 3-subproblems iteration) for image restoration
from noisy blurred image. Numerical simulation and
phantom experiment show that this novel TV technique
outperforms the filter-truncated Fourier inverse
solution.
|
|
|
Traditional Posters
: Functional MRI
|
Click on
to view the
abstract pdf and click on
to view the pdf of the poster viewable in the poster hall.
|
fMRI Acquisition & Artifacts
Wednesday May 11th
Exhibition Hall |
13:30 - 15:30 |
1628. |
Sensitivity and
Specificity of mHASTE BOLD fMRI on MT/V5 activation ![](poster.gif)
Yongquan Ye1, Jiani Hu1, Jie
Yang1, and Mark Haacke1
1Radiology, WSU, Detroit, MI, United
States
The novel single shot mHASTE BOLD fMRI technique was
tested using a more subtle stimuli pattern than the
flashing checkerboard, i.e. the MT/V5 activation,
which induced highly localized activation with
medium level significance. mHASTE was demonstrated
to be sensitive to the BOLD response in MT/V5 area
with significantly improved functional specificity
than EPI methods, indicating that mHASTE is mainly
sensitive to micro-vasculature BOLD signals.
|
1629. |
T2- and T2*-weighted
high-resolution fMRI at 7T using non-balanced SSFP
Pål Erik Goa1,2, Peter Jan Koopmans2,3,
Benedikt Andreas Poser2,3, Markus Barth2,3,
and David Gordon Norris2,3
1Department of Medical Imaging, St.Olav
University Hospital, Trondheim, Norway, 2Erwin
L. Hahn Institute for Magnetic Resonance Imaging,
University Duisburg-Essen, Essen, Germany,3Donders
Institute for Brain, Cognition and Behaviour,
Radboud University Nijmegen, Nijmegen, Netherlands
Non-balanced Steady-state free precession (nb-SSFP)
might be an alternative for BOLD-fMRI at 7T. Here we
compare the functional signal change at the pial
surface and within grey matter for S1 and S2 using
multi-echo nb-SSFP at high spatial resolution. Eight
subjects were scanned using a checkerboard paradigm,
and tissue-specific signal changes were extracted
based on segmentation of MP-RAGE images. Results
show that the signal change is largest at the pial
surface in S1 at both short and long TE as well as
in S2. This might indicate intravascular blood is
contributing to the functional contrast also at 7T.
|
1630. |
FMRI using high
flip-angle alternating steady state balanced SSFP
supported by Monte Carlo studies ![](poster.gif)
Steven Andrew Patterson1,2, Steven Donald
Beyea1,3, and Chris Van Bowen1,3
1Institute for Biodiagnostics (Atlantic),
National Research Council Canada, Halifax, Nova
Scotia, Canada, 2Physics,
Dalhousie University, Halifax, Nova Scotia, Canada, 3Physics,
Biomedical Engineering and Radiology, Dalhousie
University, Halifax, Nova Scotia, Canada
To achieve artifact-free whole brain coverage and
good temporal resolution using passband balanced
SSFP (pbSSFP) functional MRI (fMRI), alternating
between two steady states to eliminate banding
artifact is necessary. Monte Carlo simulations of
alternating steady state pbSSFP (altSSFP) fMRI were
conduced to characterize BOLD signal and contrast.
Results suggest altSSFP can provide artifact-free
whole brain coverage with 2-3 s temporal resolution
and up to 90% of the BOLD contrast observed in
conventional pbSSFP if high (45-60°) flip angles and
linearly increasing flip angle RF catalyzation is
used. Despite off-resonance signal intensity
variation, spatially-uniform sensitivity fMRI maps
are anticipated.
|
1631. |
A real-time feedback
optimization method for automatic calibration of
functional sensitivity-band of transition-band bSSFP
fMRI sequence ![](poster.gif)
Yu-Wei Tang1, and Teng-Yi Huang1
1Electrical Engineering, National Taiwan
University of Science and Technology, Taipei, Taiwan
To calibrate the sensitivity-band of transition-band
SSFP fMRI, a SSFP angle adjustment method based on a
sweep scan with increment of SSFP angle has been
proved its potential in previous studies. In this
study, we proposed a real-time feedback optimization
method to calibrate the SSFP angle automatically and
rapidly. Through network connection of MRI scanner
and an external PC, a feedback loop was created. An
optimization method is proposed to search the
optimal SSFP angle automatically. The results
demonstrate that it exhibits similar effectiveness
of the previous sweep scan method and requires much
shorter calibration time.
|
1632. |
A novel approach to
investigate the impact of RF pulses on the BOLD contrast
in steady-state pulse sequences ![](poster.gif)
Ute Goerke1, and Kamil Ugurbil1
1Radiology, Center for Magnetic Resonance
Research, Minneapolis, Minnesota, United States
In recent research efforts, fMRI contrast in
steady-state sequence has been investigated.
Potential contributions to the fMRI signal changes
in these sequences, in which a large fraction of the
imaging time is used for excitation pulse, include
magnetization transfer effects and/or relaxation
during RF pulses. In this paper, we propose a novel
approach using non-slice selective spoiled 3D GRE
with chirp pulse excitation and multiple echo
acquisition. Activation maps are obtained from the
undersampled fMRI signal changes using the spectral
side band analysis (SSBA). Initial results indicate
differences in amplitude of the fMRI signal change
depending on pulse bandwidth.
|
1633. |
Spectral-Spatial Pulse
Design with Spectral Decomposition ![](poster.gif)
Cungeng Yang1, and Victor Andrew Stenger1
1University of Hawaii, Honolulu, Hawaii,
United States
Signal loss caused by susceptibility induced
intravoxel dephasing is a major limitation in high
field MRI applications such as BOLD fMRI.
Spectral-spatial (SPSP) pulses have been shown to be
very effective at reducing through-plane signal loss
in axial slices using a single excitation. SPSP
pulse design assumes a linear relationship between
off-resonance frequency and through-plane
susceptibility gradient Gs(f)=αf. Previous studies
show empirically α=-2.0 μT/m/Hz works well for many
brain regions at 3T, however, no detailed
measurement of α was investigated. We propose
spectral decomposition technique using a spiral
spectroscopic imaging sequence to directly measure α
at all locations in the brain. Resultant SPSP pulses
were demonstrated in T2*-weighted brain images
showing reduced signal loss at 3T. Inferior slices
were found to require α values of opposite sign and
smaller magnitude. This indicates that using more
than one pulse may improve the efficacy of the SPSP
technique.
|
1634. |
Matched Filter EPI
Increases BOLD-Sensitivity in Human Functional MRI ![](poster.gif)
Lars Kasper1,2, Maximilian Häberlin1,
Christoph Barmet1, Bertram Jakob Wilm1,
Christian C. Ruff2,3, Klaas Enno Stephan2,3,
and Klaas Paul Prüssmann1
1University and ETH Zurich, Institute for
Biomedical Engineering, Zurich, Zurich, Switzerland, 2University
of Zurich, Laboratory for Social and Neural Systems
Research, Zurich, Zurich, Switzerland, 3University
College of London, Wellcome Trust Centre for
Neuroimaging, London, London, United Kingdom
Filtering is a common post-processing step in MRI.
Specifically, the analysis of fMRI data frequently
includes a Gaussian smoothing of the raw images.
This application of a “matched filter” improves
sensitivity at the spatial scale of the BOLD
response. We show that the argument already holds at
the acquisition stage and propose a 2D
gradient-velocity modulated EPI sequence providing a
Gaussian k-space density weighting. In the case of
phantom and resting state fMRI, temporal SNR is thus
raised by 60-80% while preserving overall
measurement duration. Furthermore, for visual
stimulation, t-contrast images reveal both increases
in cluster sizes and peak t-values.
|
1635. |
Improved Partial
Fourier EPI using Tissue Susceptibility Matched
Pyrolytic Graphite Foams ![](poster.gif)
Gary Chiaray Lee1, Caroline Jordan2,
Carlos Ruiz3, Pamela Tiet3,
Brian Hargreaves2, Ben Inglis4,
and Steven Conolly1
1Berkeley/UCSF Bioengineering Joint
Graduate Group, Berkeley, CA, United States, 2Radiology,
Stanford University, 3Bioengineering,
UC Berkeley, Berkeley, CA, United States, 4Helen
Wills Neuroscience Institute, Berkeley, CA
One difficulty with current EPI BOLD fMRI is poor T2*-weighted
analysis near areas of strong field inhomogeneities.
The magnetic susceptibility difference between air
and tissue produces B0 field
perturbations in the head, and may cause significant
MRI artifacts, expecially for EPI. Here we develop in
vivo susceptibility
matching pyrolytic graphite foams for improving EPI
near external air/tissue interfaces. We have
verified these that foams are safe for patient use,
and here we demonstrate that the foams can make
partial Fourier acquisition techniques more robust,
which can ultimately lead to faster acquisitions or
higher resolutions for EPI BOLD fMRI.
|
1636. |
Human fMRI at 9.4 T:
Preliminary Results ![](poster.gif)
Juliane Budde1, Frank Mühlbauer1,
G. Shajan1, Maxim Zaitsev2,
and Rolf Pohmann1
1Max Planck Institute for Biological
Cybernetics, Tuebingen, Germany, 2University
Hospital Freiburg, Freiburg, Germany
EPI data in humans were acquired at 9.4 T, using a
GRE EPI sequence with distortion correction,
resulting in 1.1 mm isotropic voxels. A simple
finger tapping paradigm was employed for functional
testing. In addition, high resolution (0.2 mm x 0.2
mm x 1.1 mm) phase and susceptibility-weighted
images were acquired and co-registered to the
functional data. Highly significant BOLD response
was found in the left motor cortex, mostly located
within gray matter, with activation amplitudes up to
20%. Co-registration to susceptibility-weighted data
shows strong signal contributions even from
vein-free regions.
|
1637. |
Improved detection of
functional connectivity MRI with 32-channel phased array
head coil ![](poster.gif)
Sheeba Arnold1, Susan Whitfield-Gabrieli2,
Steven Shannon1, John DE Gabrieli2,
and Christina Triantafyllou1,3
1A.A. Martinos Imaging Center, McGovern
Institute for Brain Research, MIT, Cambridge, MA,
United States, 2Deparment
of Brain and Cognitive Sciences, Cambridge, MA,
United States, 3A.A.
Martinos Center for Biomedical Imaging, Department
of Radiology, MGH, Charlestown, MA, United States
Amongst the existing acquisition tools for
functional connectivity MRI (fcMRI), 32-channel
phased array head coil is yet to be evaluated at 3T.
Our results demonstrate that in comparison to most
commonly used receive coils (e.g. 12-channel) highly
parallel multiple channel arrays offer increased
sensitivity in detecting detailed connections in
resting state networks such as the default mode
network. Furthermore, the 32-channel coil proved to
be significantly better than the 12-channel as
revealed by graph theory analysis in terms of both
global and local network efficiency.
|
1638. |
Resting-State Networks
at Higher Frequencies: a Preliminary Study ![](poster.gif)
Hsu-Lei Lee1, Benjamin Zahneisen1,
Thimo Grotz1, Pierre LeVan1,
and Jürgen Hennig1
1Medical Physics, University Medical
Center Freiburg, Freiburg, Germany
Resting-state network analysis looks for coherent
spontaneous BOLD signal fluctuations at frequencies
lower than 0.1 Hz, where the most signal energy is
stored. However hemodynamic signal change can occur
at a faster rate and can also have different
characteristics at different time scales. By using a
highly under-sampled shell trajectory we were able
to resolve a frequency spectrum up to 5 Hz.
Preliminary tests found both coherent networks that
are similar to those at 0.01~0.1 Hz frequency band,
and some that differ.
|
|
|
Traditional Posters
: Functional MRI
|
Click on
to view the
abstract pdf and click on
to view the pdf of the poster viewable in the poster hall.
|
fMRI: Respiratory Challenges
Thursday May 12th
Exhibition Hall |
13:30 - 15:30 |
1639. |
Characterization of Static
Field Effects of Paramagnetic Molecular Oxygen on
BOLD-Modulated Hyperoxic Contrast Studies of the Human Brain ![](poster.gif)
David Thomas Pilkinton1,2, Santosh R Gaddam2,
and Ravinder Reddy1,2
1Biochemistry & Molecular Biophysics,
University of Pennsylvania, Philadelphia, Pennsylvania,
United States, 2Center
for Magnetic Resonance and Optical Imaging, Department
of Radiology, University of Pennsylvania, Philadelphia,
Pennsylvania, United States
The inhalation of hyperoxic gas mixtures is known to be
an effective positive contrast agent in T2*-weighted
images, with minimal associated physiological and
biochemical alterations. However, the quality of oxygen
as an intravascular contrast agent depends not only on
it having minimal effects on the underlying physiology,
but also on it having minimal non-BOLD relaxation
effects. In this study, we show that inhaled oxygen in
the upper airway near the brain substantially increases
the static field inhomogeneity in the frontal lobes as a
function of the concentration of inhaled oxygen and
field strength.
|
1640. |
Field Shift due to
Paramagnetic Effect of Molecular Oxygen
Kejia Cai1, Kalli Grasley1, Anup
Singh1, David Pilkinton1, Mohammad
Haris1, Hari Hariharan1, Mark
Elliott1, and Ravinder Reddy1
1CMROI, Department of Radiology, University
of Pennsylvania, Philadelphia, PA, United States
Oxygen inhalation has been shown to be a simple and
effective positive contrast agent in T2*-weighted images
based on the BOLD effect. While paramagnetic effect of
molecular oxygen could shift the static field, which is
unrelated to blood oxygenation. In this study, we have
characterized the static field shift due to oxygen
inhalation at 9.4T by using SVS and B0 field maps.
Proton Larmor frequency is shifted by ~1Hz per 1% of
oxygen at 9.4T. One must be cautious on this confounding
factor when conducting fMRI and field sensitive MRI
studies with oxygen inhalation.
|
1641. |
Quantifying the artefacts
caused by hyperoxic challenges ![](poster.gif)
Ian Driver1, Jack Harmer1, Emma
Hall1, Susan Pritchard1, Susan
Francis1, and Penny Gowland1
1Sir Peter Mansfield Magnetic Resonance
Centre, University of Nottingham, Nottingham, United
Kingdom
Increased oxygen in the oral cavity and sinuses during
hyperoxia causes local changes in magnetic field
homogeneity. This study dynamically maps these field
changes, and quantifies the hyperoxia-induced frequency
shift in the frontal sinus, as well as more distant
brain regions of most interest to studies using
hyperoxia for cerebral blood volume estimation and BOLD
calibration. A hyperoxia challenge was found to induce a
~ 20 Hz shift close to the sinus, away from this region
this reduced, but not to zero. Although not
significantly affecting transverse relaxation, hyperoxia
will modulate EPI distortions, an effect that should be
dynamically monitored.
|
1642. |
Quantitation of changes in
cerebral blood flow and longitudinal relaxation rate (R1 =1/T1)
induced by mild hyperoxia ![](poster.gif)
Hajime Tamura1, Tatsuo Nagasaka2,
Kazuki Shimada2, Junki Nishikata1,
Miho Shidahara1, Shunji Mugikura3,
and Yoshio Machida4
1Department of Medical Physics, Tohoku
University, Graduate School of Medicine, Sendai, Miyagi,
Japan, 2Department
of Radiology, Tohoku University Hospital, Sendai,
Miyagi, Japan,3Department of Diagnostic
Radiology, Tohoku University Hospital, Sendai, Miyagi,
Japan, 4Department
of Medical Imaging and Applied Radiology, Tohoku
University, Graduate School of Medicine, Sendai, Miyagi,
Japan
Decreases in blood flow (CBF) and T1 during
hyperoxia are affected by arterial pressure of carbon
dioxide as well as that of oxygen (PaO2). To
extract those effects of PaO2 and
to examine if the changes in R1 relate
to the changes in CBF, serial R1 and
CBF maps were obtained during normoxia-hyperoxia epochs
and analyzed with a linear model. Thus the effects of
PaO2 on R1 and
CBF were obtained. However, no significant correlation
was observed between them (P =
0.18), which might imply that the ratio of CBF to
metabolic rate of oxygen does not change during
hyperoxia.
|
1643. |
Venous Vessel Size MRI in
the Human Brain Using Transient Hyperoxia ![](poster.gif)
Yuji Shen1, Trevor Ahearn1,
Matthew Clemence2, and Christian Schwarzbauer1
1Aberdeen Biomedical Imaging Centre,
University of Aberdeen, Aberdeen, United Kingdom, 2Clinical
Science MRI, Philips Healthcare, Surrey, United Kingdom
Hyperoxia-induced BOLD contrast was employed to measure
the mean venous vessel size in the human brain using a
combined GE and SE EPI sequence. The experimental
paradigm consisted of two 3-minute blocks of breathing
100% O2 interleaved with three 2-minute blocks of
breathing room air. The vessel size index q = ÄR2*/ÄR2
was calculated on a pixel-by-pixel basis and then
converted to a map of the vessel radius based on a
calibration curve obtained from a biophysical tissue
model.
|
1644. |
Quantitative Evaluation of
the Dynamic BOLD and CBF Responses to Breath Hold in
Different Brain Territories
Wen-Cheng Chu1, Yuan-Yu Hsu2,
Kun-Eng Lim2, and Ho-Ling Liu1,3
1Department of Medical Imaging and
Radiological Sciences, Chang Gung University, Taoyuan
County, Taiwan, 2Buddhist
Tzu Chi General Hospital, Taipei County, Taiwan, 3Division
of Medical Imaging and Intervention, Chang Gung Memorial
Hospital, Taoyuan County, Taiwan
Blood oxygen level-dependent (BOLD) signal reflects a
complex combination of cerebral blood function (CBF),
cerebral blood volume (CBV), and oxygen consumption
changes. Therefore, this study aimed to quantitatively
evaluate the dynamics of CBF changes in the territories
supplied by anterior cerebral artery, middle cerebral
artery, and posterior cerebral artery obtained from the
arterial spin labeling (ASL) experiment during
breath-holding tasks. The averaged signal time courses
were fitted using gamma-variate function, including
three quantified parameters, such as onset time, FWHM,
and maximum signal change. Here, this study demonstrated
substantial differences between the BOLD and ASL
responses to the breath-holding tasks.
|
1645. |
Characterizing the BOLD
response to transient respiratory challenges at 7 Tesla ![](poster.gif)
Molly Gallogly Bright1,2, Daniel P Bulte2,
Peter Jezzard2, and Jeff H Duyn1
1Advanced MRI Section, LFMI, NINDS, National
Institutes of Health, Bethesda, MD, United States, 2FMRIB
Centre, University of Oxford, Oxford, Oxfordshire,
United Kingdom
Cerebrovascular reactivity to changes in arterial gas
tensions offers clinical insight into vessel health and
compliance. The BOLD response to a new respiratory
challenge of Cued Deep Breathing enables accessible
mapping of reactivity and response dynamics. At 7 Tesla,
the enhanced magnitude of the BOLD response to this
challenge enables voxelwise fitting for % signal change,
time-to-peak (TTP), onset time, and
full-width-half-minimum of the response throughout the
brain. TTP is a robust surrogate for the other, more
subtle temporal parameters, and results further
establish, in individual subjects, the regional
heterogeneity observed previously across a healthy
population at 3 Tesla.
|
1646. |
Determination of R2*
across multiple postlabeling delays in ASL and comparison
with flow, arterial volume and transit times in
physiological challenges
Yi-Ching Lynn Ho1,2, Esben Thade Petersen3,
and Xavier Golay4
1Center for Functionally Integrative
Neuroscience, Aarhus, Denmark, 2Neuroradiology,
National Neuroscience Institute, Singapore, Singapore, 3Clinical
Imaging Research Centre, Singapore,4UCL
Institute of Neurology, United Kingdom
In Look-Locker-based ASL sequences, the transverse
relaxation time R2* is assumed to be constant across the
multiple postlabeling delay times, permitting accurate
cerebral blood flow (CBF) quantification. Using dual
echoes, R2* was found to be consistent across the
multiple time points, validating the assumption.
Secondly, the R2* results allowed a regional
determination of oxygenation levels for arterial input
function sampling. Finally, it is seen that R2* changes
are tightly coupled with CBF changes, rather than with
arterial blood volume or transit time changes and this
during neuronal activity alone. The presence of
hypercapnia increases the complexity of the
relationships.
|
1647. |
Hemodynamic changes can be
detected in rat white matter using a hypercapnic challenge
Erin Lindsay Mazerolle1,2, Chris V Bowen1,3,
Drew R DeBay1, Kirk W Feindel1,
James A Rioux1, Douglas D Rasmusson4,
Kazue Semba5, and Ryan C D'Arcy1,6
1Institute for Biodiagnostics (Atlantic),
National Research Council, Halifax, Nova Scotia, Canada, 2Neuroscience
Graduate Program, Dalhousie University, Halifax, Nova
Scotia, Canada, 3Physics,
Dalhousie University, Halifax, Nova Scotia, Canada, 4Physiology
and Biophysics, Dalhousie University, Halifax, Nova
Scotia, Canada, 5Anatomy
and Neurobiology, Dalhousie University, Halifax, Nova
Scotia, Canada, 6Neuroscience,
Dalhousie University, Halifax, Nova Scotia, Canada
White matter (WM) functional magnetic resonance imaging
(fMRI) activation has potential to expand current
approaches for studying brain connectivity and improve
assessment of WM disorders. We took the first steps
towards investigating the hemodynamic events that
underlie WM fMRI activation. A hypercapnic challenge was
used to elicit whole brain activation in the rat. We
demonstrated that rat WM has the capacity to support
hemodynamic changes due to hypercapnia. This is the
first demonstration of hemodynamic changes in rat WM,
and will serve as the foundation for future
investigations of the neurophysiologic bases of WM fMRI
activation.
|
1648. |
Comparison of physiologic
modulators in event-related fMRI ![](poster.gif)
Peiying Liu1, Andrew C. Hebrank2,
Blair Flicker2, Denise C. Park2,
and Hanzhang Lu1
1Advanced Imaging Research Center, University
of Texas Southwestern Medical Center, Dallas, Texas,
United States, 2Center
for Vital Longevity, University of Texas at Dallas,
Dallas, Texas, United States
In order for fMRI to be possibly used as a personalized
diagnostic tool, it is critical to understand and
account for the considerable inter-subject variations in
fMRI responses. A few physiologic modulators have been
reported that could explain such variations and may
potentially be used for fMRI normalization, including
baseline venous oxygenation, cerebrovascular reactivity,
resting state BOLD signal fluctuation and baseline
cerebral blood flow. This work extends previous findings
in block-design to event-related design which are more
widely used in cognitive neuroscience and clinical
studies, and showed the modulation effect of physiologic
parameters on fMRI signals in different brain regions.
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1649. |
Dynamics of cerebral
lactate during acute hypoxia ![](poster.gif)
Ashley D Harris1, Richard AE Edden2,3,
Kevin Murphy1, C John Evans1,
Victoria Roberton1, Danielle Huckle4,
Judith E Hall4, Neeraj Saxena4,
Damian M Bailey5, and Richard G Wise1
1CUBRIC - School of Psychology, Cardiff
University, Cardiff, United Kingdom, 2Russell
H Morgan Department of Radiology and Radiological
Science, The Johns Hopkins University, Baltimore,
Maryland, United States, 3FM
Kirby Research Centre for Functional MRI, Kennedy
Krieger Institute, Baltimore, Maryland, United States, 4Department
of Anaethetics, Cardiff University, Cardiff, United
Kingdom, 5Department
of Health, Sport and Science, University of Glamorgan,
Pontypridd, United Kingdom
The role of cerebral lactate is unclear, as there is
emerging evidence that it is a neural energy source, not
just a by-product of anaerobic metabolism. There are
also questions about cerebral metabolism during hypoxia,
with some groups showing a non-intuitive result of
increased cerebral metabolism during hypoxia. Here, the
dynamics of lactate during an acute exposure to hypoxia
and then return to normoxia are examined in 3 healthy
humans with multiple repeat sessions. We show the
dynamics and complexities of lactate accumulation.
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1650. |
T1 and T2* responses to
hypercapnic and hyperoxic gases in normal tissue are
independent of the order of gas delivery ![](poster.gif)
Jeff D Winter1,2, Marvin Estrada1,
and Hai-Ling Margaret Margaret Cheng1,3
1Physiology and Experimental Medicine, The
Hospital for Sick Children, Toronto, Ontario, Canada, 2Research
and Development, IMRIS, Winnipeg, Manitoba, Canada, 3Medical
Biophysics, University of Toronto, Toronto, Ontario,
Canada
Quantitative MRI measures of T1 and
T2* offer noninvasive means to indirectly
monitor tissue O2. This study characterized T1 and
T2* responses to randomized hypercapnic and
hyperoxic gas challenges in normal rabbit liver, kidney
and paraspinal muscle in comparison with pilot invasive
tissue O2 and
perfusion changes. All between-gas ΔT1 and
ΔT2* transitions exhibited expected trends,
especially in liver and kidney. However, T1 changes
were much less predictable. Invasive measures
demonstrated consistent trends in tissue perfusion and
oxygenation but considerable variability. In summary, we
demonstrated independence of T1 and
T2* transitions on gas order, and
organ-specific pO2 and
perfusion dynamics.
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