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Physics-guided Diffusion Model for Diffusion MRI Synthesis

Diffusion MRI (dMRI) is an essential neuroimaging technique with high acquisition costs. Deep learning approaches have been used to enhance dMRI and predict diffusion biomarkers through undersampled dMRI. To generate more comprehensive raw dMRI, generative adversarial network based methods are proposed to include b-values and b-vectors as conditions, but they are limited by unstable training and less desirable diversity. The emerging diffusion model (DM) promises to improve generative performance. However, it remains challenging to include essential information in conditioning DM for more relevant generation, i.e., the physical principles of dMRI and white matter tract structures. In this study, we propose a physics-guided diffusion model to generate high-quality dMRI.

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Cite this as

Juanhua Zhang, Ruodan Yan, Alessandro Perelli, Xi Chen, Chao Li (2024). Dataset: Physics-guided Diffusion Model for Diffusion MRI Synthesis. https://doi.org/10.57702/pl2i9l67

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Additional Info

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Created December 2, 2024
Last update December 2, 2024
Author Juanhua Zhang
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Ruodan Yan
Alessandro Perelli
Xi Chen
Chao Li