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arxiv: 1708.05095 · v3 · pith:X2OKZG3Mnew · submitted 2017-08-16 · 💻 cs.CV · cs.IT· math.IT· physics.med-ph

Navigator-free EPI Ghost Correction with Structured Low-Rank Matrix Models: New Theory and Methods

classification 💻 cs.CV cs.ITmath.ITphysics.med-ph
keywords low-rankmatrixmethodsnavigator-freeacquisitiondataghoststructured
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Structured low-rank matrix models have previously been introduced to enable calibrationless MR image reconstruction from sub-Nyquist data, and such ideas have recently been extended to enable navigator-free echo-planar imaging (EPI) ghost correction. This paper presents novel theoretical analysis which shows that, because of uniform subsampling, the structured low-rank matrix optimization problems for EPI data will always have either undesirable or non-unique solutions in the absence of additional constraints. This theory leads us to recommend and investigate problem formulations for navigator-free EPI that incorporate side information from either image-domain or k-space domain parallel imaging methods. The importance of using nonconvex low-rank matrix regularization is also identified. We demonstrate using phantom and \emph{in vivo} data that the proposed methods are able to eliminate ghost artifacts for several navigator-free EPI acquisition schemes, obtaining better performance in comparison to state-of-the-art methods across a range of different scenarios. Results are shown for both single-channel acquisition and highly accelerated multi-channel acquisition.

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