Score-based Self-supervised MRI Denoising
Journal:
arXiv
Published Date:
May 8, 2025
Abstract
Magnetic resonance imaging (MRI) is a powerful noninvasive diagnostic imaging
tool that provides unparalleled soft tissue contrast and anatomical detail.
Noise contamination, especially in accelerated and/or low-field acquisitions,
can significantly degrade image quality and diagnostic accuracy. Supervised
learning based denoising approaches have achieved impressive performance but
require high signal-to-noise ratio (SNR) labels, which are often unavailable.
Self-supervised learning holds promise to address the label scarcity issue, but
existing self-supervised denoising methods tend to oversmooth fine spatial
features and often yield inferior performance than supervised methods. We
introduce Corruption2Self (C2S), a novel score-based self-supervised framework
for MRI denoising. At the core of C2S is a generalized denoising score matching
(GDSM) loss, which extends denoising score matching to work directly with noisy
observations by modeling the conditional expectation of higher-SNR images given
further corrupted observations. This allows the model to effectively learn
denoising across multiple noise levels directly from noisy data. Additionally,
we incorporate a reparameterization of noise levels to stabilize training and
enhance convergence, and introduce a detail refinement extension to balance
noise reduction with the preservation of fine spatial features. Moreover, C2S
can be extended to multi-contrast denoising by leveraging complementary
information across different MRI contrasts. We demonstrate that our method
achieves state-of-the-art performance among self-supervised methods and
competitive results compared to supervised counterparts across varying noise
conditions and MRI contrasts on the M4Raw and fastMRI dataset.