10:30 |
343. |
Exploiting
Sparsity in the Difference Images to Achieve Higher
Acceleration Factors in Non-Contrast MRA
Pippa Storey1, Ricardo
Otazo1, Lazar Fleysher1, Niels
Oesingmann2, Ruth P. Lim1, Vivian S.
Lee1, Daniel K. Sodickson1
1Radiology
Department, NYU School of Medicine, New York, NY, United
States; 2Siemens Medical Solutions USA
Non-contrast techniques for peripheral MRA exploit the
pulsatility of arterial blood flow and involve subtraction
of dark-blood images, acquired during fast flow, from
bright-blood images, acquired during slow flow. The
difference images, which depict the arteries, are sparse,
although the source images are not. We show that higher
acceleration factors can be achieved by performing
subtraction on the raw data, before calculation of the
GRAPPA weights, rather than on the final magnitude images.
Depiction of large arteries is similar to that achieved with
low acceleration factors and standard reconstruction, but
depiction of small arteries and fine branch vessels is
compromised. |
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10:42 |
344. |
Combination of
Compressed Sensing and Parallel Imaging for
Highly-Accelerated 3D First-Pass Cardiac Perfusion MRI
Ricardo Otazo1, Jian Xu2,3,
Daniel Kim1, Leon Axel1, Daniel K.
Sodickson1
1Center for
Biomedical Imaging, New York University School of Medicine,
New York, NY, United States; 2Siemens Medical
Solutions USA, New York, NY, United States; 3Polytechnic
Institute of NYU, Brooklyn, NY, United States
Compressed sensing and parallel imaging are combined into a
single joint acceleration approach for highly accelerated 3D
first-pass cardiac perfusion MRI. 3D perfusion imaging is a
natural candidate for this combined approach, due to
increased sparsity and incoherence provided by the high
dimensionality of the data, multi-dimensional acceleration
capability and increased baseline SNR. We demonstrate the
feasibility of high in vivo acceleration factors of 16 for
3D first-pass cardiac perfusion MRI studies with whole-heart
coverage per heartbeat using a 32-element coil array
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10:54 |
345. |
Efficient L1SPIRiT
Reconstruction (ESPIRiT) for Highly Accelerated 3D
Volumetric MRI with Parallel Imaging and Compressed Sensing
Peng Lai1, Michael Lustig2,3,
Anja CS. Brau1, Shreyas Vasanawala4,
Philip J. Beatty1, Marcus Alley2
1Applied Science
Laboratory, GE Healthcare, Menlo Park, CA, United States;
2Electrical Engineering, Stanford University,
Stanford, CA, United States; 3Electrical
Engineering and Computer Science, University of California,
Berkeley, CA, United States; 4Radiology, Stanford
University, Stanford, CA, United States
Conventional L1SPIRiT reconstruction enables
highly-accelerated MRI by combining parallel imaging and
compressed sensing but suffers from impractically long
reconstruction time. This work developed a new efficient
L1SPIRiT algorithm (ESPIRiT) to address the computation
challenge from three perspectives: 1. reducing the
computation complexity based on Eigenvector calculations, 2.
reducing the number of pixels to process based on
pixel-specific convergence, 3. reducing the number of
iterations using parallel imaging initialization. ESPIRiT
was compared with L1SPIRiT on in-vivo datasets. Our results
show that ESPIRiT can improve image quality and
reconstruction accuracy with >10× faster computation
compared to L1SPIRiT. |
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11:06 |
346. |
Accelerated 3D
Phase-Contrast Imaging Using Adaptive Compressed Sensing
with No Free Parameters
Kedar Khare1, Christopher
J. Hardy1, Kevin F. King2, Patrick A.
Turski3, Luca Marinelli1
1GE Global Research
Center, Niskayuna, NY, United States; 2GE
Healthcare, Waukesha, WI, United States; 3School
of Medicine & Public Health, University of Wisconsin,
Madison, WI, United States
We
present a robust method for compressed-sensing
reconstruction using a data-driven, iterative
soft-thresholding (ST) framework with no tuning of free
parameters. The algorithm combines a Nesterov-type optimal
gradient scheme for iterative update with adaptive wavelet
denoising methods. Vascular 3D phase-contrast scans on
healthy volunteers are used to show that image quality is
comparable to that of empirically tuned, nonlinear
conjugate-gradient (NLCG) reconstruction. Statistical
analysis of image quality scores for five datasets indicates
that the ST approach improves the robustness of the
reconstruction and image quality as compared to NLCG with a
single set of tuning parameters for all scans. |
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11:18 |
347. |
Nonconvex
Compressive Sensing with Parallel Imaging for Highly
Accelerated 4D CE-MRA
Joshua D. Trzasko1,
Clifton R. Haider1, Eric A. Borisch1,
Stephen J. Riederer1, Armando Manduca1
1Mayo Clinic,
Rochester, MN, United States
CAPR
is a state-of-the-art Cartesian acquisition paradigm for
time-resolved 3D contrast-enhanced MR angiography that
typically employs Tikhonov and partial Fourier methods for
image reconstruction. When operating at extreme
acceleration rates, such reconstructions can exhibit
significant noise amplification and Gibbs artifacts,
potentially inhibiting diagnosis. In this work, an offline
reconstruction framework for both view-shared and
non-view-shared CAPR time-series acquisitions based on
nonconvex Compressive Sensing is proposed and demonstrated
to both suppress noise amplification and improve vessel
conspicuity. |
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11:30 |
348. |
Fast MR Parameter
Mapping from Highly Undersampled Data by Direct
Reconstruction of Principal Component Coefficient Maps Using
Compressed Sensing
Chuan Huang1, Christian
Graff2, Ali Bilgin3, Maria I. Altbach4
1Mathematics,
University of Arizona, Tucson, AZ, United States; 2Program
in Applied Mathematics, University of Arizona, Tucson, AZ,
United States; 3Biomedical
Engineering, University of Arizona, Tucson, AZ, United
States; 4Radiology,
University of Arizona, Tucson, AZ, United States
There has been an increased interest in quantitative MR
parameter mapping techniques which enable direct comparison
of tissue-related values between different subjects and
scans. However the lengthy acquisition times needed by
conventional parameter mapping methods limit their use in
the clinic. In this work, we introduce a new model-based
approach to reconstruct accurate T2 maps directly from
highly undersampled FSE data. The proposed approach referred
to as DIrect REconstruction of Principal COmponent
coefficient Maps (DIREPCOM) removes non-linearity from the
model and employs sparsity constraints in both the spatial
and temporal dimensions to produces accurate T2 maps by
using Principal Component Analysis. While this proposed
technique has been illustrated for T2 estimation, the
methodology can be adapted to the estimation of other MR
parameters. |
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11:42 |
349. |
Compressed Sensing
with Transform Domain Dependencies for Coronary MRI
Mehmet Akçakaya1,2,
Seunghoon Nam1,2, Peng Hu2, Warren
Manning2, Vahid Tarokh1, Reza Nezafat2
1Harvard University,
Cambridge, MA, United States; 2Beth Israel
Deaconess Medical Center, Harvard Medical School, Boston,
MA, United States
Lengthy acquisition time is one of the main limitations of
coronary MRI. Parallel imaging has been used to accelerate
image acquisition but with limited success due to low
signal-to-noise ratio. Compressed sensing (CS) has been
recently utilized to accelerate image acquisition in MRI,
but its use in cardiac MRI has been limited due to blurring
artifacts. In this study, we develop an improved CS
reconstruction method that uses the dependencies of
transform domain coefficients to reduce the observed
blurring and reconstruction artifacts in coronary MRI. |
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11:54 |
350. |
A Novel Approach
for T1 Relaxometry Using Constrained Reconstruction in
Parametric Dimension
Julia Velikina1, Andrew
L. Alexander1, Alexey A. Samsonov1
1University of
Wisconsin - Madison, Madison, WI, United States
A
novel method for T1 relaxometry is proposed using
constrained reconstruction in the parametric (flip angle)
dimension. Preliminary results indicate that the proposed
method allows T1 estimation from undersampled data collected
for multiple flip angles with better accuracy than from the
data collected for two ideal angles acquired within the same
scan time.
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12:06 |
351. |
Accelerated
Breath-Hold Multi-Echo FSE Pulse Sequence Using Compressed
Sensing and Parallel Imaging for T2 Measurement in the Heart
Li Feng1, Ricardo Otazo2,
Jens Jensen2, Daniel K. Sodickson2,
Daniel Kim2
1Sackler Institute
of Graduate Biomedical Sciences, New York University School
of Medicine, New York, NY, United States; 2Radiology,
New York University School of Medicine, New York, NY, United
States
T2
Measurement can be used to detect pathological changes in
tissue for a variety of clinical applications, including
identification of edema and iron overload. Rapid T2 mapping
in the heart is challenging because of the need to acquire
adequate spatial resolution within clinically acceptable
breath-hold duration of 20s or less. We propose to extend a
recently developed breath-hold T2 mapping pulse sequence to
achieve higher spatial resolution, by implementing a joint
reconstruction algorithm that combines compressed sensing
and parallel imaging. This accelerated T2 mapping pulse
sequence with high spatial resolution was validated in vitro
and in vivo. |
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12:18 |
352. |
Interleaved
Variable Density Sampling with ARC Parallel Imaging and
Cartesian HYPR for
Dynamic MR Angiography
Kang Wang1, James Holmes2,
Reed Busse2, Philip Beatty3, Jean
Brittain2, Christopher Francois4,
Lauren Keith1, Yijing Wu1, Frank
Korosec1,4
1Medical Physics,
University of Wisconsin-Madison, Madison, WI, United States;
2Applied Science Laboratory, GE Healthcare,
Madison, WI, United States; 3Applied Science
Laboratory, GE Healthcare, Menlo Park, CA, United States;
4Radiology, University of Wisconsin-Madison,
Madison, WI, United States
Both
high spatial and temporal resolution are desired for
contrast-enhanced MR angiography (CE-MRA). In this work, we
describe a technique that combines interleaved variable
density (IVD) Cartesian sampling, ARC parallel imaging (PI),
and Cartesian HYPR reconstruction. This technique is
validated in multiple exams performed on healthy volunteers.
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