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Abstract #2789

Accelerating MR Reconstruction with encoding perturbations using a diffusion model

Hongli Chen1, Shanshan Shan2, Yang Gao3, Hongping Gan4, Chunyi Liu2, Fangfang Tang1, and Feng Liu5
1University of Queensland, Brisbane, Australia, 2Soochow University, Suzhou, China, 3Central South University, Changsha, China, 4Northwestern Polytechnical University, Xi An, China, 5University of Queensland, Brisbane, China

Synopsis

Keywords: Image Reconstruction, Machine Learning/Artificial Intelligence

Motivation: Image distortions caused by encoding perturbations and slow MR acquisitions compromise real-time MRI-guided radiotherapy treatments.

Goal(s): We aim to develop and investigate a diffusion model-based method to accelerate MR reconstruction with encoding perturbations.

Approach: The diffusion model was trained by 180,670 T1-weighted brain images from a public MR dataset and nonuniform fast Fourier transform was applied to operate forward encoding process with perturbations.

Results: Imaging results showed that the proposed network enabled fast MR image reconstruction with corrected geometric distortions for any subsampling patterns.

Impact: The developed diffusion model to accelerate MR reconstruction with perturbations. The results demonstrated that the proposed method enabled fast distortion-corrected image reconstruction for any subsampling patterns.

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Keywords