Multi-Mask Self-Supervised Learning for Physics-Guided Neural Networks in Highly Accelerated MRI
Burhaneddin Yaman, Hongyi Gu, Seyed Amir Hossein Hosseini, Omer Burak, Demirel, Steen Moeller, Jutta Ellermann, K\^amil U\u{g}urbil, Mehmet, Ak\c{c}akaya

TL;DR
This paper introduces a multi-mask self-supervised learning method for physics-guided MRI reconstruction that more efficiently utilizes undersampled data, leading to improved image quality without requiring fully-sampled datasets.
Contribution
It proposes a novel multi-mask SSDU strategy that enhances data efficiency and reconstruction quality in MRI, outperforming existing SSDU and matching supervised methods.
Findings
Multi-mask SSDU outperforms single-mask SSDU in MRI reconstruction.
Multi-mask SSDU achieves comparable results to supervised DL-MRI.
Reader studies favor multi-mask SSDU over other methods.
Abstract
Self-supervised learning has shown great promise due to its capability to train deep learning MRI reconstruction methods without fully-sampled data. Current self-supervised learning methods for physics-guided reconstruction networks split acquired undersampled data into two disjoint sets, where one is used for data consistency (DC) in the unrolled network and the other to define the training loss. In this study, we propose an improved self-supervised learning strategy that more efficiently uses the acquired data to train a physics-guided reconstruction network without a database of fully-sampled data. The proposed multi-mask self-supervised learning via data undersampling (SSDU) applies a hold-out masking operation on acquired measurements to split it into multiple pairs of disjoint sets for each training sample, while using one of these pairs for DC units and the other for defining…
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