Unsupervised MR Motion Artifact Deep Learning using Outlier-Rejecting
Bootstrap Aggregation
- URL: http://arxiv.org/abs/2011.06337v1
- Date: Thu, 12 Nov 2020 12:10:58 GMT
- Title: Unsupervised MR Motion Artifact Deep Learning using Outlier-Rejecting
Bootstrap Aggregation
- Authors: Gyutaek Oh, Jeong Eun Lee, and Jong Chul Ye
- Abstract summary: We propose a novel unsupervised deep learning scheme through outlier-rejecting bootstrap subsampling and aggregation.
Our method does not require any paired data because the training step only requires artifact-free images.
We verify that our method can be applied for artifact correction from simulated motion as well as real motion from TSM successfully.
- Score: 37.41561581618164
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Recently, deep learning approaches for MR motion artifact correction have
been extensively studied. Although these approaches have shown high performance
and reduced computational complexity compared to classical methods, most of
them require supervised training using paired artifact-free and
artifact-corrupted images, which may prohibit its use in many important
clinical applications. For example, transient severe motion (TSM) due to acute
transient dyspnea in Gd-EOB-DTPA-enhanced MR is difficult to control and model
for paired data generation. To address this issue, here we propose a novel
unsupervised deep learning scheme through outlier-rejecting bootstrap
subsampling and aggregation. This is inspired by the observation that motions
usually cause sparse k-space outliers in the phase encoding direction, so
k-space subsampling along the phase encoding direction can remove some outliers
and the aggregation step can further improve the results from the
reconstruction network. Our method does not require any paired data because the
training step only requires artifact-free images. Furthermore, to address the
smoothing from potential bias to the artifact-free images, the network is
trained in an unsupervised manner using optimal transport driven cycleGAN. We
verify that our method can be applied for artifact correction from simulated
motion as well as real motion from TSM successfully, outperforming existing
state-of-the-art deep learning methods.
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