English

Multi-shot multi-channel diffusion data recovery using structured low-rank matrix completion

Medical Physics 2016-02-24 v1

Abstract

Purpose: To introduce a novel method for the recovery of multi-shot diffusion weighted (MS-DW) images from echo-planar imaging (EPI) acquisitions. Methods: Current EPI-based MS-DW reconstruction methods rely on the explicit estimation of the motion- induced phase maps to recover the unaliased images. In the new formulation, the k-space data of the unaliased 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 fully-sampled as well as under-sampled MS-DW data. Results: Our experiments on in-vivo data show effective removal of the ghosting artifacts arising from intershot motion in MS-DW data using the proposed method. The performance is comparable and better in certain cases than conventional phase-based methods. Conclusion: The proposed method can achieve effective unaliasing of fully/under-sampled MS-DW images without using explicit phase estimates.

Keywords

Cite

@article{arxiv.1602.07274,
  title  = {Multi-shot multi-channel diffusion data recovery using structured low-rank matrix completion},
  author = {Merry Mani and Mathews Jacob and Douglas Kelley and Vincent Magnotta},
  journal= {arXiv preprint arXiv:1602.07274},
  year   = {2016}
}
R2 v1 2026-06-22T12:56:16.541Z