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Introduction
Overview of Motion Correction Workshop Organizing Committee |
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16:12 |
492. |
Highly
Efficient Respiratory Gating in Whole Heart MR Employing
Non-Rigid Retrospective Motion Correction
Johannes F M Schmidt1, Martin Buehrer1,
Peter Boesiger1, Sebastian Kozerke1
1Institute for Biomedical
Engineering, University and ETH Zurich, Zurich, Switzerland
Respiratory motion artifacts
in coronary MR scans were retrospectively corrected using a
non-rigid motion model acquired interleaved during the
sequence pauses in each heart cycle. Gating efficiency could
be doubled without loss in image quality. |
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16:24 |
493. |
High
Temporal Resolution Radial Motion Correction with GROWL
Wei
Lin1, Feng Huang1, Yu Li1,
Arne Reykowski1
1Advanced Concepts Development,
Invivo Corporation, Philips Healthcare, Gainesville, FL,
United States
The self-navigating property
of radial imaging has been exploited in various motion
correction methods. However, there is always a tradeoff
between the robustness and temporal resolution of motion
correction. In this work, a recently proposed rapid parallel
imaging method, GRAPPA operator for wider radial bands
(GROWL), is applied to increase the temporal resolution of
motion correction in multi-coil radial imaging applications.
It is demonstrated that robust in-plane rotation/translation
motion detection and correction can be achieved with as few
as 8 radial views using an 8-channel coil. |
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16:36 |
494. |
Robust
3-D Motion Correction for Spiral Projection Imaging
Kenneth Otho Johnson1, James Grant Pipe1
1Barrow Neurological Institute,
Phoenix, AZ, United States
Using spiral planes to fill a
3-D sphere, the motion incurred during a scan can be deduced
based on the geometry of how the planes overlap. A new
physically based solver is tuned and used to provide robust
accurate motion estimates across various scanning parameters
that introduce rf coil bias, excessive off-resonance, and
image space warping from gradient non-linearities. Estimates
for expected accuracy of in-vivo scans are provided, which
create a synthesis of multiple datasets, that are registered
using an external program. |
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16:48 |
495. |
Robust
ARC Parallel Imaging with 3D Prospective Motion Correction
Suchandrima Banerjee1, Philip James Beatty1,
Jian Zhang2, Eric T. Han1, Ajit
Shankaranarayanan1
1Applied Science Laboratory, GE
Healthcare, San Francisco, CA, United States; 2Electrical
Engineering, Stanford University, Palo Alto, CA, United
States
Recent trends in MRI have
seen an increase in volumetric acquisitions. But
three-dimensional (3D) scans are prone to motion artifacts
because scan times are often long even after acceleration
with parallel imaging and any motion affects the entire
volume measurement. Prospective motion correction provides a
robust method for suppressing motion artifacts, by tracking
patient motion and adjusting scan coordinates to realign
with the patient. This work investigates data-driven
parallel imaging approaches that account for the k-space
transformations associated with prospective motion
correction. |
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17:00 |
496. |
Towards
Combining Prospective Motion Correction and Distortion
Correction for EPI
Rainer Boegle1, Julian Maclaren1,
Maxim Zaitsev1
1Dept. of Diagnostic Radiology,
Medical Physics, University Hospital Freiburg, Freiburg,
Baden-Württemberg, Germany
Subject head motion is a
serious confound in fMRI, limiting its image quality and
applicability. To lift this restriction for EPI based fMRI
the combination of prospective motion correction with
distortion correction based on field maps, calculated from
the subject’s susceptibility distribution and pose, has been
proposed. Here we present a proof-of-concept phantom study
demonstrating the significance of motion dependent
distortions in prospective motion correction and the
feasibility of their correction via a field prediction
method. Additionally comparative field simulations are
shown, which suggest that a 'simple segmentation' of a human
head would be sufficient for in vivo correction. |
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17:12 |
497. |
Improved
Pose Detection for Single Camera Real-Time MR Motion
Correction Using a Self-Encoded Marker
Christoph Forman1,
Murat Aksoy2, Matus Straka2, Joachim
Hornegger1, Roland Bammer2
1Pattern Recognition
Lab, Department of Computer Science,
Friedrich-Alexander-University Erlangen-Nuremberg, Erlangen,
Germany; 2Department of Radiology, Stanford
University, Stanford, CA, United States
A new self-encoded marker for
optical pose estimation has been developed. It was designed
to cover a wider range of motion and allows to be combined
with cameras with a smaller aperture. In this study, we
measured accuracy and precision of this novel self-encoded
marker on a precision pan-tilt unit and compared the results
against similar measurements performed with a standard
checkerboard marker. Comparative evaluations between the new
self-encoded marker and the checkerboard marker were also
performed in vivo and demonstrated superiority of the new
marker approach. |
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17:24 |
498. |
A
Parallel Computing Framework for Motion-Compensated
Reconstruction Based on the Motion Point-Spread Function
Freddy Odille1,
Philip G. Batchelor2, Claudia Prieto2,
Tobias Schaeffter2, David Atkinson1
1Centre for
Medical Image Computing, University College London, London,
United Kingdom; 2Division of Imaging Sciences,
King's College London, London, United Kingdom
Generalized reconstruction
algorithms have been proposed in order to correct for
artifacts induced by nonrigid motion. However they are very
time-consuming because large scale inverse problems have to
be solved. Here we propose a technique for splitting the
reconstruction into several smaller problems, based on the
properties of the point-spread function associated with
motion artifacts, which uses the local nature of artifacts
(blurring) in the frequency-encoding direction. The method
was implemented on a cluster of workstations, and applied to
the correction of real motion-corrupted data. Efficient
motion correction was achieved, with reconstruction times
reduced by an order of magnitude. |
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17:36 |
499. |
Hybrid
Prospective & Retrospective Head Motion Correction System to
Mitigate Cross-Calibration Errors
Murat
Aksoy1, Christoph Forman1,2, Matus
Straka1, Tolga Çukur3, Samantha Jane
Holdsworth1, Stefan Tor Skare1,4, Juan
Manuel Santos3, Joachim Hornegger2,
Roland Bammer1
1Department of Radiology,
Stanford University, Stanford, CA, United States; 2Computer
Science, Friedrich-Alexander-University Erlangen-Nuremberg,
Erlangen, Germany; 3Electrical Engineering,
Stanford University, Stanford, CA, United States; 4Karolinska
Institute, Stockholm, Sweden
Correction of motion
artifacts in MRI is essential to assure diagnostic image
quality. In case where external pose information is used for
motion-correction, cross-calibration errors may impair image
quality. In this study, we propose a combined prospective &
retrospective approach to prospectively correct for motion
and to mitigate residual image distortions which emanate
from subtle cross-calibration errors. Specifically, a single
camera mounted on the head coil was used to measure and
correct patient motion in real-time. Resulting data
inconsistencies – emanating primarily from cross-calibration
errors – were removed by a retrospective autofocusing
algorithm wherein k-space was divided into segments. The
relative rotation and translation needed to realign these
segments were determined by means of entropy-based
autofocusing. Phantom and in-vivo results show that in the
presence of inaccuracies in cross-calibration, the current
method provides improved image quality over prospective
motion correction only. |
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17:48 |
500. |
Spectroscopic Imaging with Prospective Motion Correction and
Retrospective Phase Correction
Thomas Lange1, Julian Maclaren1,
Martin Buechert1, Maxim Zaitsev1
1Dept. of Diagnostic Radiology,
Medical Physics, University Hospital Freiburg, Freiburg,
Germany
A method for prospective
motion correction based on an optical tracking system has
recently been proposed and has already been successfully
applied to single voxel spectroscopy. In this work, the
utility of prospective motion correction in combination with
retrospective phase correction is evaluated for
spectroscopic imaging in the human brain. Especially, the
real-time adjustment of the outer volume suppression slabs
appears to be crucial in vivo where lipid signal can
drastically impair the spectral quality. The interleaved
reference scan method is used to correct for motion-induced
frequency drifts and to ensure correct phasing of the
spectra across the whole slice. |
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