Abstract #3625
Parallel Imaging Acceleration beyond Coil Limitation using a k-space Variant Low-rank Constraint on Correlation Matrix
Yu Y. Li 1
1
Radiology, Imaging Research Center,
Cincinnati Children's Hospital Medical Center,
Cincinnati, Ohio, United States
This work introduces a mathematical model that converts
k-space parallel imaging into the function of a low-rank
Toeplitz-like correlation matrix formed from auto- and
cross-channel correlation functions. By applying a
k-space variant low-rank constraint to this correlation
matrix, missing data can be reconstructed in a
region-by-region fashion. Imaging acceleration can be
improved if a higher undersampling factor is used in
those regions with a more stringent constraint. It is
demonstrated that this approach permits the use of a net
acceleration factor higher than the number of coil
elements in the phase-encoding direction.
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