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Patch2Self: Denoising Diffusion MRI with Self-Supervised Learning

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arxiv 2011.01355 v1 pith:MHG6Y3Y6 submitted 2020-11-02 cs.LG cs.CVq-bio.QM

Patch2Self: Denoising Diffusion MRI with Self-Supervised Learning

classification cs.LG cs.CVq-bio.QM
keywords datapatch2selfmicrostructuredenoisinglearningmethodmodelnoise
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Diffusion-weighted magnetic resonance imaging (DWI) is the only noninvasive method for quantifying microstructure and reconstructing white-matter pathways in the living human brain. Fluctuations from multiple sources create significant additive noise in DWI data which must be suppressed before subsequent microstructure analysis. We introduce a self-supervised learning method for denoising DWI data, Patch2Self, which uses the entire volume to learn a full-rank locally linear denoiser for that volume. By taking advantage of the oversampled q-space of DWI data, Patch2Self can separate structure from noise without requiring an explicit model for either. We demonstrate the effectiveness of Patch2Self via quantitative and qualitative improvements in microstructure modeling, tracking (via fiber bundle coherency) and model estimation relative to other unsupervised methods on real and simulated data.

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