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k-Space Deep Learning for Accelerated MRI

About

The annihilating filter-based low-rank Hankel matrix approach (ALOHA) is one of the state-of-the-art compressed sensing approaches that directly interpolates the missing k-space data using low-rank Hankel matrix completion. The success of ALOHA is due to the concise signal representation in the k-space domain thanks to the duality between structured low-rankness in the k-space domain and the image domain sparsity. Inspired by the recent mathematical discovery that links convolutional neural networks to Hankel matrix decomposition using data-driven framelet basis, here we propose a fully data-driven deep learning algorithm for k-space interpolation. Our network can be also easily applied to non-Cartesian k-space trajectories by simply adding an additional regridding layer. Extensive numerical experiments show that the proposed deep learning method consistently outperforms the existing image-domain deep learning approaches.

Yoseob Han, Leonard Sunwoo, Jong Chul Ye• 2018

Related benchmarks

TaskDatasetResultRank
MRI ReconstructionfastMRI 4X acceleration (test)
PSNR31
32
MRI ReconstructionHCP
PSNR (dB)45.1545
15
Image InpaintingUrban100 (test)
PSNR18.9
15
Parallel MRI Reconstruction8-coil knee k-space Cartesian trajectory R=3
PSNR36.9931
8
Sparse-View CT ReconstructionCT100 (test)
PSNR29.2
5
MRI ReconstructionSingle-coil knee MRI
PSNR (dB)35.9586
4
Parallel MRI Reconstruction8-coil HCP dataset (radial trajectory, R=6) (test)
PSNR (dB)50.8136
4
Parallel MRI Reconstruction8-coil parallel imaging Spiral trajectory, R=4 (test)
PSNR (dB)53.5643
4
MRI ReconstructionHCP radial, R=6, single-coil (test)
PSNR (dB)42.8454
3
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