4.7 Article

Physics-Informed Compressed Sensing for PC-MRI: An Inverse Navier-Stokes Problem

Journal

IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume 32, Issue -, Pages 281-294

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2022.3228172

Keywords

Image reconstruction; Compressed sensing; Boundary conditions; Noise measurement; Magnetic resonance imaging; Velocity measurement; Stress; Phase-contrast magnetic resonance imaging (PC-MRI); physics-informed compressed sensing; velocity reconstruction and segmentation

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This study proposes a physics-informed compressed sensing (PICS) method for reconstructing velocity fields from noisy and sparse phase-contrast magnetic resonance signals. The method solves an inverse Navier-Stokes boundary value problem and is able to reconstruct and segment velocity fields while inferring hidden parameters. The problem is regularized using a Bayesian framework and Gaussian random fields as prior information. The algorithm developed in this study successfully reconstructs and segments velocity fields from noisy and sparse signals, showing good agreement with fully-sampled high SNR signals.
We formulate a physics-informed compressed sensing (PICS) method for the reconstruction of velocity fields from noisy and sparse phase-contrast magnetic resonance signals. The method solves an inverse Navier-Stokes boundary value problem, which permits us to jointly reconstruct and segment the velocity field, and at the same time infer hidden quantities such as the hydrodynamic pressure and the wall shear stress. Using a Bayesian framework, we regularize the problem by introducing a priori information about the unknown parameters in the form of Gaussian random fields. This prior information is updated using the Navier-Stokes problem, an energy-based segmentation functional, and by requiring that the reconstruction is consistent with the k-space signals. We create an algorithm that solves this inverse problem, and test it for noisy and sparse k-space signals of the flow through a converging nozzle. We find that the method is capable of reconstructing and segmenting the velocity fields from sparsely-sampled (15% k-space coverage), low (similar to 10) signal-tonoise ratio (SNR) signals, and that the reconstructed velocity field compares well with that derived from fully-sampled (100% k-space coverage) high (> 40) SNR signals of the same flow.

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