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Abstract #1742

Meta-Learning Enabled Score-Based Generative Model for 1.5T-Like Image Reconstruction from 0.5T MRI

Congcong Liu1,2, Zhuo-Xui Cui1, Chentao Cao1, Yuanyuan Liu1, Jing Cheng1, Qingyong Zhu1, Yihang Zhou1,2, Yanjie Zhu1,2, Haifeng Wang1,2, Hairong Zheng1,2, and Dong Liang1,2
1Institute of Biomedical and Health Engineering, Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences, Shenzhen, China, 2University of Chinese Academy of Sciences, Shenzhen, China

Synopsis

Keywords: AI Diffusion Models, Image Reconstruction, Low field

Motivation: The high-field-like image reconstruction, mainstream efforts are primarily focused on high or ultra-high fields, lacking in the reconstruction of high-field-like images from low-field ones.

Goal(s): This paper presented a model for reconstructing high-field-like MR images from low-field images with unpaired data.

Approach: we execute a pairing using OT-driven CycleGAN, described as "teacher learning". Subsequently, we use a diffusion model to learn the joint distribution between high-field and low-field images, guiding the reconstruction from low-field to high-field.

Results: The generation experiments of T1W and T2W surpass competing experiments, and the 3-fold acceleration experiment also demonstrates the superiority of the proposed method.

Impact: The proposed method represents the first attempt in the reconstruction (acceleration and generation) of images from low-field to high-field. Its potential benefits for advancing overall healthcare standards could be significant.

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Keywords