Accelerated MRI Reconstruction With Separable and Enhanced Low-Rank Hankel Regularization | IEEE Journals & Magazine | IEEE Xplore

Accelerated MRI Reconstruction With Separable and Enhanced Low-Rank Hankel Regularization


Abstract:

Magnetic resonance imaging serves as an essential tool for clinical diagnosis, however, suffers from a long acquisition time. Sparse sampling effectively saves this time ...Show More

Abstract:

Magnetic resonance imaging serves as an essential tool for clinical diagnosis, however, suffers from a long acquisition time. Sparse sampling effectively saves this time but images need to be faithfully reconstructed from undersampled data. Among the existing reconstruction methods, the structured low-rank methods have advantages in robustness to the sampling patterns and lower error. However, the structured low-rank methods use the 2D or higher dimension k-space data to build a huge block Hankel matrix, leading to considerable time and memory consumption. To reduce the size of the Hankel matrix, we proposed to separably construct multiple small Hankel matrices from rows and columns of the k-space and then constrain the low-rankness on these small matrices. This separable model can significantly reduce the computational time but ignores the correlation existed in inter- and intra-row or column, resulting in increased reconstruction error. To improve the reconstructed image without obviously increasing the computation, we further introduced the self-consistency of k-space and virtual coil prior. Besides, the proposed separable model can be extended into other imaging scenarios which hold exponential characteristics in the parameter dimension. The in vivo experimental results demonstrated that the proposed method permits the lowest reconstruction error with a fast reconstruction. The proposed approach requires only 4% of the state-of-the-art STDLR-SPIRiT runtime for parallel imaging reconstruction, and achieves the fastest computational speed in parameter imaging reconstruction.
Published in: IEEE Transactions on Medical Imaging ( Volume: 41, Issue: 9, September 2022)
Page(s): 2486 - 2498
Date of Publication: 04 April 2022

ISSN Information:

PubMed ID: 35377841

Funding Agency:


I. Introduction

Magnetic resonance imaging (MRI) is a non-radioactive, non-invasive imaging technique that is able to provide multi-contrast images and permit excellent soft-tissue imaging. It has become an indispensable tool in medical diagnosis. However, the long acquisition time is one of its prominent limitations, which may introduce motion-caused artifacts into the images and may not be practical in some application scenarios [1].

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References

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