Self‐supervised learning for denoising of multidimensional MRI data

Author:

Kang Beomgu12ORCID,Lee Wonil3ORCID,Seo Hyunseok2,Heo Hye‐Young4ORCID,Park HyunWook1ORCID

Affiliation:

1. School of Electrical Engineering Korea Advanced Institute of Science and Technology Daejeon Republic of Korea

2. Bionics Research Center, Biomedical Research Division Korea Institute of Science and Technology (KIST) Seoul Republic of Korea

3. Department of Radiology and Biomedical Imaging Yale School of Medicine New Haven Connecticut USA

4. Divison of MR Research, Department of Radiology Johns Hopkins University Baltimore Maryland USA

Abstract

AbstractPurposeTo develop a fast denoising framework for high‐dimensional MRI data based on a self‐supervised learning scheme, which does not require ground truth clean image.Theory and MethodsQuantitative MRI faces limitations in SNR, because the variation of signal amplitude in a large set of images is the key mechanism for quantification. In addition, the complex non‐linear signal models make the fitting process vulnerable to noise. To address these issues, we propose a fast deep‐learning framework for denoising, which efficiently exploits the redundancy in multidimensional MRI data. A self‐supervised model was designed to use only noisy images for training, bypassing the challenge of clean data paucity in clinical practice. For validation, we used two different datasets of simulated magnetization transfer contrast MR fingerprinting (MTC‐MRF) dataset and in vivo DWI image dataset to show the generalizability.ResultsThe proposed method drastically improved denoising performance in the presence of mild‐to‐severe noise regardless of noise distributions compared to previous methods of the BM3D, tMPPCA, and Patch2self. The improvements were even pronounced in the following quantification results from the denoised images.ConclusionThe proposed MD‐S2S (Multidimensional‐Self2Self) denoising technique could be further applied to various multi‐dimensional MRI data and improve the quantification accuracy of tissue parameter maps.

Funder

National Institutes of Health

Publisher

Wiley

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