IVCVJul 28, 2020

Extending LOUPE for K-space Under-sampling Pattern Optimization in Multi-coil MRI

arXiv:2007.14450v140 citations
Originality Incremental advance
AI Analysis

This work improves MRI reconstruction quality for medical imaging applications, though it represents an incremental extension of existing methods.

This paper extends the LOUPE framework to optimize k-space sampling patterns for multi-coil MRI by using real scanner data, binary stochastic sampling with a straight-through estimator, and an unrolled optimization network, achieving better reconstruction performance than previous methods and hand-crafted patterns.

The previously established LOUPE (Learning-based Optimization of the Under-sampling Pattern) framework for optimizing the k-space sampling pattern in MRI was extended in three folds: firstly, fully sampled multi-coil k-space data from the scanner, rather than simulated k-space data from magnitude MR images in LOUPE, was retrospectively under-sampled to optimize the under-sampling pattern of in-vivo k-space data; secondly, binary stochastic k-space sampling, rather than approximate stochastic k-space sampling of LOUPE during training, was applied together with a straight-through (ST) estimator to estimate the gradient of the threshold operation in a neural network; thirdly, modified unrolled optimization network, rather than modified U-Net in LOUPE, was used as the reconstruction network in order to reconstruct multi-coil data properly and reduce the dependency on training data. Experimental results show that when dealing with the in-vivo k-space data, unrolled optimization network with binary under-sampling block and ST estimator had better reconstruction performance compared to the ones with either U-Net reconstruction network or approximate sampling pattern optimization network, and once trained, the learned optimal sampling pattern worked better than the hand-crafted variable density sampling pattern when deployed with other conventional reconstruction methods.

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