Enhancing Deep Learning-Driven Multi-Coil MRI Reconstruction via Self-Supervised Denoising
We examine the effect of incorporating self-supervised denoising as a pre-processing step for training deep learning (DL) based reconstruction methods on data corrupted by Gaussian noise. K-space data employed for training are typically multi-coil and inherently noisy. Although DL-based reconstructi...
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Zusammenfassung: | We examine the effect of incorporating self-supervised denoising as a
pre-processing step for training deep learning (DL) based reconstruction
methods on data corrupted by Gaussian noise. K-space data employed for training
are typically multi-coil and inherently noisy. Although DL-based reconstruction
methods trained on fully sampled data can enable high reconstruction quality,
obtaining large, noise-free datasets is impractical. We leverage Generalized
Stein's Unbiased Risk Estimate (GSURE) for denoising. We evaluate two DL-based
reconstruction methods: Diffusion Probabilistic Models (DPMs) and Model-Based
Deep Learning (MoDL). We evaluate the impact of denoising on the performance of
these DL-based methods in solving accelerated multi-coil magnetic resonance
imaging (MRI) reconstruction. The experiments were carried out on T2-weighted
brain and fat-suppressed proton-density knee scans. We observed that
self-supervised denoising enhances the quality and efficiency of MRI
reconstructions across various scenarios. Specifically, employing denoised
images rather than noisy counterparts when training DL networks results in
lower normalized root mean squared error (NRMSE), higher structural similarity
index measure (SSIM) and peak signal-to-noise ratio (PSNR) across different SNR
levels, including 32dB, 22dB, and 12dB for T2-weighted brain data, and 24dB,
14dB, and 4dB for fat-suppressed knee data. Overall, we showed that denoising
is an essential pre-processing technique capable of improving the efficacy of
DL-based MRI reconstruction methods under diverse conditions. By refining the
quality of input data, denoising can enable the training of more effective DL
networks, potentially bypassing the need for noise-free reference MRI scans. |
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DOI: | 10.48550/arxiv.2411.12919 |