IVCVJun 22, 2020

Deep Low-rank Prior in Dynamic MR Imaging

arXiv:2006.12090v43 citations
Originality Incremental advance
AI Analysis

This work addresses a bottleneck in medical imaging for healthcare by enhancing reconstruction quality, though it is incremental as it builds on existing deep learning and low-rank techniques.

The authors tackled the problem of dynamic MR cine imaging reconstruction by incorporating low-rank prior into deep learning methods, achieving improved results over state-of-the-art compressed sensing and sparsity-driven deep learning methods both qualitatively and quantitatively.

The deep learning methods have achieved attractive performance in dynamic MR cine imaging. However, all of these methods are only driven by the sparse prior of MR images, while the important low-rank (LR) prior of dynamic MR cine images is not explored, which limits the further improvements on dynamic MR reconstruction. In this paper, a learned singular value thresholding (Learned-SVT) operation is proposed to explore deep low-rank prior in dynamic MR imaging for obtaining improved reconstruction results. In particular, we come up with two novel and distinct schemes to introduce the learnable low-rank prior into deep network architectures in an unrolling manner and a plug-and-play manner respectively. In the unrolling manner, we put forward a model-based unrolling sparse and low-rank network for dynamic MR imaging, dubbed SLR-Net. The SLR-Net is defined over a deep network flow graph, which is unrolled from the iterative procedures in the Iterative Shrinkage-Thresholding Algorithm (ISTA) for optimizing a sparse and low-rank based dynamic MRI model. In the plug-and-play manner, we present a plug-and-play LR network module that can be easily embedded into any other dynamic MR neural networks without changing the network paradigm. Experimental results show that both schemes can further improve the state-of-the-art CS methods, such as k-t SLR, and sparsity-driven deep learning-based methods, such as DC-CNN and CRNN, both qualitatively and quantitatively.

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