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SNRAware: Improved Deep Learning MRI Denoising with Signal-to-noise Ratio Unit Training and G-factor Map Augmentation

Xue, Hui; Hooper, Sarah M; Pierce, Iain; Davies, Rhodri H; Stairs, John; Naegele, Joseph; Campbell-Washburn, Adrienne E; ... Kellman, Peter; + view all (2025) SNRAware: Improved Deep Learning MRI Denoising with Signal-to-noise Ratio Unit Training and G-factor Map Augmentation. Radiology: Artificial Intelligence , Article e250227. 10.1148/ryai.250227. (In press). Green open access

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Abstract

Purpose To develop and evaluate a novel deep learning-based MRI denoising method using quantitative noise distribution information obtained during image reconstruction to improve model performance and generalization. Materials and Methods This retrospective study included a training set of 2885236 images from 96605 cardiac cine series acquired on 3T MRI scanners from January 2018 to December 2020. 95% of these data were used for training and 5% for validation. The hold-out test set included 3000 cine series, acquired in the same period. Fourteen model architectures were evaluated by instantiating each of the two backbone types with seven transformer and convolution block types. The proposed SNRAware training scheme leveraged MRI reconstruction knowledge to enhance denoising by simulating diverse synthetic datasets and providing quantitative noise distribution information. Internal testing measured performance using peak signal-to-noise ratio (PSNR) and structural similarity index measure (SSIM), whereas external tests conducted on 1.5T real-time cardiac cine, first-pass cardiac perfusion, brain, and spine MRIs assessed generalization across various sequences, contrasts, anatomies, and field strengths. Results SNRAware improved performance on internal tests conducted on a hold-out dataset of 3000 cine series. Models trained without reconstruction knowledge achieved the worst performance metrics. Improvement was architecture-agnostic for both convolution and transformer models; however, transformer models outperformed their convolutional counterparts. Additionally, 3D input tensors showed improved performance over 2D images. The best-performing model from the internal testing generalized well to external samples, delivering 6.5 × and 2.9 × contrast-to-noise ratio improvement for real-time cine and perfusion imaging, respectively. The model trained using only cardiac cine data generalized well to T1 MPRAGE (Magnetization-Prepared Rapid Gradient-Echo) brain 3D and T2 TSE (turbo spin-echo) spine MRIs. Conclusion The SNRAware training scheme leveraged data obtained during the image reconstruction process for deep learning-based MRI denoising training, resulting in improved performance and good generalization. ©RSNA, 2025.

Type: Article
Title: SNRAware: Improved Deep Learning MRI Denoising with Signal-to-noise Ratio Unit Training and G-factor Map Augmentation
Location: United States
Open access status: An open access version is available from UCL Discovery
DOI: 10.1148/ryai.250227
Publisher version: https://doi.org/10.1148/ryai.250227
Language: English
Additional information: © The Author(s) 2025. Published by the Radiological Society of North America under a CC BY 4.0 license (https://creativecommons.org/licenses/by/4.0/deed.en).
UCL classification: UCL
UCL > Provost and Vice Provost Offices > School of Life and Medical Sciences
UCL > Provost and Vice Provost Offices > School of Life and Medical Sciences > Faculty of Population Health Sciences > Institute of Cardiovascular Science
UCL > Provost and Vice Provost Offices > School of Life and Medical Sciences > Faculty of Population Health Sciences > Institute of Cardiovascular Science > Clinical Science
URI: https://discovery.ucl.ac.uk/id/eprint/10216648
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