Dual-Domain Self-Supervised Learning for Accelerated Non-Cartesian MRI
Reconstruction
- URL: http://arxiv.org/abs/2302.09244v1
- Date: Sat, 18 Feb 2023 06:11:49 GMT
- Title: Dual-Domain Self-Supervised Learning for Accelerated Non-Cartesian MRI
Reconstruction
- Authors: Bo Zhou, Jo Schlemper, Neel Dey, Seyed Sadegh Mohseni Salehi, Kevin
Sheth, Chi Liu, James S. Duncan, Michal Sofka
- Abstract summary: We present a fully self-supervised approach for accelerated non-Cartesian MRI reconstruction.
In training, the undersampled data are split into disjoint k-space domain partitions.
For the image-level self-supervision, we enforce appearance consistency obtained from the original undersampled data.
- Score: 14.754843942604472
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: While enabling accelerated acquisition and improved reconstruction accuracy,
current deep MRI reconstruction networks are typically supervised, require
fully sampled data, and are limited to Cartesian sampling patterns. These
factors limit their practical adoption as fully-sampled MRI is prohibitively
time-consuming to acquire clinically. Further, non-Cartesian sampling patterns
are particularly desirable as they are more amenable to acceleration and show
improved motion robustness. To this end, we present a fully self-supervised
approach for accelerated non-Cartesian MRI reconstruction which leverages
self-supervision in both k-space and image domains. In training, the
undersampled data are split into disjoint k-space domain partitions. For the
k-space self-supervision, we train a network to reconstruct the input
undersampled data from both the disjoint partitions and from itself. For the
image-level self-supervision, we enforce appearance consistency obtained from
the original undersampled data and the two partitions. Experimental results on
our simulated multi-coil non-Cartesian MRI dataset demonstrate that DDSS can
generate high-quality reconstruction that approaches the accuracy of the fully
supervised reconstruction, outperforming previous baseline methods. Finally,
DDSS is shown to scale to highly challenging real-world clinical MRI
reconstruction acquired on a portable low-field (0.064 T) MRI scanner with no
data available for supervised training while demonstrating improved image
quality as compared to traditional reconstruction, as determined by a
radiologist study.
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