13:30 |
0325.
|
Accelerating MR
Elastography with Sparse Sampling and Low-Rank
Reconstruction
Curtis L Johnson1, Joseph L Holtrop1,2,
Anthony G Christodoulou1,3, Matthew DJ
McGarry4, John B Weaver4,5, Keith
D Paulsen4,5, Zhi-Pei Liang1,3,
John G Georgiadis1,6, and Bradley P Sutton1,2
1Beckman Institute, University of Illinois at
Urbana-Champaign, Urbana, IL, United States, 2Bioengineering,
University of Illinois at Urbana-Champaign, Urbana, IL,
United States, 3Electrical
and Computer Engineering, University of Illinois at
Urbana-Champaign, Urbana, IL, United States, 4Thayer
School of Engineering, Dartmouth College, Hanover, NH,
United States, 5Dartmouth-Hitchcock
Medical Center, Lebanon, NH, United States, 6Mechanical
Science and Engineering, University of Illinois at
Urbana-Champaign, Urbana, IL, United States
Magnetic resonance elastography (MRE) requires the
acquisition of a large number of images with differing
gradient encoding direction, polarity, and displacement
phase offsets. However, these images share a lot of
information and can be represented through a reduced
model order. In this work we demonstrate the ability to
accelerate brain MRE acquisitions through sparse
sampling and low-rank image reconstruction. Reducing the
reconstructed model order from 48 to 10 resulted in
virtually unchanged mechanical properties, and allowed
for undersampling by factors up to 4x.
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13:42 |
0326.
|
Compressed Sensing 4D Flow
Reconstruction using Divergence-Free Wavelet Transform
Frank Ong1, Martin Uecker1, Umar
Tariq2, Albert Hsiao2, Marcus
Alley2, Shreyas Vasanawala2, and
Michael Lustig1
1Electrical Engineering and Computer
Sciences, University of California, Berkeley, CA, United
States, 2Radiology,
Stanford University, CA, United States
In our previous work, divergence-free wavelet transform
was shown to be effective in enforcing divergence-free
constraints in denoising 4D flow data. In this work, we
incorporate divergence-free wavelet in the compressed
sensing iterative reconstruction process and present an
accelerated 4D flow reconstruction method that is
tolerant to phase wraps. Effects of phase wraps are
reduced via phase cycle spinning, in which the phase is
rotated randomly in each iteration, thereby preventing
the need for phase unwrapping before reconstruction. The
proposed reconstruction was applied on in-vivo data and
was shown to yield better flow data from undersampled
data that follow boundary conditions while maintaining
core flow quantifications.
|
13:54 |
0327.
|
Field-corrected imaging for
sparsely-sampled fMRI by exploiting low-rank spatiotemporal
structure
Hien Nguyen1 and
Gary Glover2
1Department of Electronics & Computer
Engineering, Hanoi University of Science & Technology,
Hanoi, Vietnam, 2Department
of Radiology, Stanford University, California, United
States
Magnetic field gradients near air-tissue interfaces
cause signal dropout, hampering BOLD fMRI. To make the
data less prone to T2* susceptibility artifacts, it is
desirable to reduce the readout duration. This can be
achieved by undersampling k-space, which has been
investigated for dynamic MRI and recently proposed for
fMRI. In this work, we demonstrate a new field-corrected
imaging approach to sparsely sampled fMRI, coined
functional LOw Rank Approximations (fLORA).
Specifically, we exploit partial separability
(PS)-induced low rank structure of fMRI data via
group-sparse regularization, combined with magnetic
field inhomogeneity compensation.
|
14:06 |
0328. |
Image quality
characterization in Time-Resolved 3D CE-MRA
Yijing Wu1, Kevin M Johnson1, Jane
H Maksimovic2, Charles A Mistretta1,
and Patrick A Turski2
1Medical Physics, University of Wisconsin,
Madison, WI, United States, 2Radiology,
University of Wisconsin, Madison, WI, United States
Time-resolved 3D contrast-enhanced MR angiography (CE-MRA)
often requires highly accelerated imaging to achieve
clinically desired temporal and spatial resolutions.
Recently developed non-linear reconstruction schemes,
e.g. compressed sensing (CS) and HYPR, offer
substantially greater acceleration than past methods but
are unfortunately inherently object dependent and
difficult to characterize with traditional linear
methods. Subsequently, exemplary results in simplified
digital phantoms do not translate clinically. In this
work, we investigate the use of a highly realistic
fractal based digital imaging phantom for accurate
characterization of several non-linear reconstructions
(CS, HYPR, and CS-HYPR).
|
14:18 |
0329.
|
Towards Robust Breath-held
3D Abdominal DCE Imaging
-
permission withheld
Nadine Gdaniec1, Andrea J. Wiethoff2,3,
Qing Yuan4, Peter Börnert5, Holger
Eggers5, Daniella Pinho4, Ivan
Pedrosa3,4, and Alfred Mertins1
1Institute for Signal Processing, University
of Luebeck, Luebeck, Luebeck, Germany, 2Philips
Research North America, Briarcliff Manor, New York,
United States, 3Advanced
Imaging Research Center, UT Southwestern Medical Center,
Dallas, Texas, United States, 4Department
of Radiology, UT Southwestern Medical Center, Dallas,
Texas, United States, 5Philips
Research Laboratories, Hamburg, Hamburg, Germany
Image quality in clinical dynamic contrast enhanced (DCE)
MRI of the abdomen is often degraded by respiratory
motion artifacts, making diagnosis difficult.
Breath-holding is an efficient strategy to minimize
respiration induced artifacts in the abdomen if the
patient’s capability is sufficient. In many cases,
patients have trouble holding their breath after
contrast injection, even if they were able to do so
earlier in the exam. To overcome this problem, DCE
imaging with flexible scan termination is proposed in
this work, to automatically adapt to the breath-hold
capabilities of the patient. Shorter breath-holds are
compromised with lower but adapted spatial resolution.
|
14:30 |
0330.
|
Free Breathing Dynamic
Contrast Enhanced 3D MRI with Resolved Respiratory Motion
Joseph Y. Cheng1,2, Tao Zhang1,
John M. Pauly1, Shreyas S. Vasanawala2,
and Michael Lustig3
1Electrical Engineering, Stanford University,
Stanford, California, United States, 2Radiology,
Stanford University, Stanford, California, United
States,3Electrical Engineering & Computer
Sciences, University of California, Berkeley,
California, United States
Respiratory motion is a major hindrance in abdominal
MRI. Previous work has been focused on reducing
respiratory motion artifacts through correction schemes
in the image reconstruction. An alternative approach is
resolving the respiratory motion. We propose to correct
for respiratory motion in free breathing DCE-MRI by
extending the data-acquisition space to an additional
respiratory dimension. The highly undersampled
5D-dataset is reconstructed by promoting the locally
low-rank property in the DCE dimension and the total
variation penalty in the respiratory motion dimension.
The proposed technique achieves similar image quality to
a DCE-only reconstruction and a lightly undersampled
respiratory motion resolved reconstruction.
|
14:42 |
0331.
|
Accelerated MPIO-Labeled
Cell Imaging in the Heart
Anthony G. Christodoulou1, T. Kevin Hitchens2,
Yijen L. Wu2, Zhi-Pei Liang1, and
Chien Ho2
1Department of Electrical and Computer
Engineering, University of Illinois at Urbana-Champaign,
Urbana, IL, United States, 2Pittsburgh
NMR Center for Biomedical Research, Department of
Biological Sciences, Carnegie Mellon University,
Pittsburgh, PA, United States
Low-rank (subspace) imaging with temporal navigation and
sparse sampling of (k, t)-space has previously been used
to accelerate several cardiac imaging applications. Here
we describe a more efficient self-navigated pulse
sequence to acquire both navigator and sparse data in a
single TR, doubling imaging speed to approach 100 frames
per second. We demonstrate the assessment of myocardial
inflammation in rats through self-navigated T2*-weighted
imaging of immune cells labeled with micron-sized
paramagnetic iron oxide (MPIO) particles.
|
14:54 |
0332. |
Fast 3D Free-breathing
Abdominal Dynamic Contrast Enhanced MRI with High
Spatiotemporal Resolution
Tao Zhang1, Joseph Cheng1,2,
Marcus Alley2, Martin Uecker3,
Michael Lustig3, John Pauly1, and
Shreyas Vasanawala2
1Electrical Engineering, Stanford University,
Stanford, California, United States, 2Radiology,
Stanford University, Stanford, California, United
States,3Electrical Engineering and Computer
Sciences, UC Berkeley, Berkeley, California, United
States
Dynamic Contrast Enhanced (DCE) MRI is commonly used to
detect and characterize lesions. A free-breathing DCE
acquisition has high scan efficiency, but image quality
can be compromised by respiratory motion. In this work,
a soft-gated locally low rank parallel imaging
reconstruction method is proposed for highly accelerated
3D free-breathing DCE MRI. The proposed method can
significantly reduce motion artifacts, and provide high
spatiotemporal resolution (approximately 1 mm3 spatial
resolution and 4 s frame rate). The proposed method has
been validated on in
vivo datasets.
|
15:06 |
0333. |
HIGHLY ACCELERATED 3D
DYNAMIC CONTRAST ENHANCED MRI USING PARTIAL SEPARABILITY
MODEL AND JSENSE
Jingyuan Lyu1, Pascal Spincemaille2,
Martin R Prince2, Yi Wang2, Fuquan
Ren1, and Leslie Ying1
1Department of Biomedical Engineering,
Department of Electrical Engineering, The State
University of New York at Buffalo, Buffalo, New York,
United States, 2Weill
Cornell Medical College, New York, New York, United
States
This abstract presents a novel method to effectively
integrate spiral acquisition, parallel imaging, partial
separable (PS) model, and sparsity constraints for
highly accelerated dynamic contrast enhanced MRI. In
data acquisition, a phased array coil was used to
continuously acquire data along a stack of
variable-density spirals updated with the golden angle.
In reconstruction, with the sparsity constraints, the
coil sensitivities, spatial and temporal bases of the PS
model are jointly estimated through alternating
optimization. Experimental results from in vivo DCE
liver imaging data demonstrate the proposed method is
able to achieve both high spatial and temporal
resolution.
|
15:18 |
0334. |
High angularly resolved
diffusion imaging with accelerated multi-shot acquisition
and compressed sensing
Tzu-Cheng Chao1,2, Jr-Yuan George Chiou3,
Stephan E. Maier3, and Bruno Madore3
1Department of Computer Science and
Information Engineering, National Cheng-Kung University,
Tainan, Taiwan, 2Institute
of Medical Informatics, Naitonal Cheng-Kung University,
Tainan, Taiwan, 3Department
of Radiology, Brigham and Women's Hospital, Harvard
Medical School, Boston, Massachusetts, United States
High angularly resolved diffusion imaging is a
well-established strategy to help resolve fiber
crossings and enable tractography. Long scan times and
the presence of geometrical distortion in the resulting
images may be the main factors currently limiting its
clinical use. In the present work, methods are combined
for accelerating the acquisition process in k-space (to
reduce distortion) as well as in the diffusion-encoding
space (to reduce scan time). As compared to a
non-accelerated protocol, results are presented that
offer a four-fold reduction in distortion as well as a
reduction by about 40% in scan time.
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