4.5 Article

Multi-shot sensitivity-encoded diffusion data recovery using structured low-rank matrix completion (MUSSELS)

Journal

MAGNETIC RESONANCE IN MEDICINE
Volume 78, Issue 2, Pages 494-507

Publisher

WILEY
DOI: 10.1002/mrm.26382

Keywords

structured low-rank; annihilating filter; multi-shot diffusion; calibration-less; motion compensation; regularized recovery

Funding

  1. NIH [1R01EB019961-01A1, ONR-N000141310202, NIH T32 MH019113-23]

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PurposeTo introduce a novel method for the recovery of multi-shot diffusion weighted (MS-DW) images from echo-planar imaging (EPI) acquisitions. MethodsCurrent EPI-based MS-DW reconstruction methods rely on the explicit estimation of the motion-induced phase maps to recover artifact-free images. In the new formulation, the k-space data of the artifact-free DWI is recovered using a structured low-rank matrix completion scheme, which does not require explicit estimation of the phase maps. The structured matrix is obtained as the lifting of the multi-shot data. The smooth phase-modulations between shots manifest as null-space vectors of this matrix, which implies that the structured matrix is low-rank. The missing entries of the structured matrix are filled in using a nuclear-norm minimization algorithm subject to the data-consistency. The formulation enables the natural introduction of smoothness regularization, thus enabling implicit motion-compensated recovery of the MS-DW data. ResultsOur experiments on in-vivo data show effective removal of artifacts arising from inter-shot motion using the proposed method. The method is shown to achieve better reconstruction than the conventional phase-based methods. ConclusionWe demonstrate the utility of the proposed method to effectively recover artifact-free images from Cartesian fully/under-sampled and partial Fourier acquired data without the use of explicit phase estimates. Magn Reson Med 78:494-507, 2017. (c) 2016 International Society for Magnetic Resonance in Medicine

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