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Abstract #0352

Physics-informed Synthetic Data Learning Boosts Multi-Scenario Fast MRI Reconstruction

Zi Wang1, Xiaotong Yu1, Chengyan Wang2, Weibo Chen3, Jiazheng Wang3, Ying-Hua Chu4, Hongwei Sun5, Rushuai Li6, Peiyong Li7, Fan Yang8, Haiwei Han8, Taishan Kang9, Jianzhong Lin9, Chen Yang10, Shufu Chang11, Zhang Shi11, Sha Hua12, Yan Li13, Juan Hu14, Liuhong Zhu10, Jianjun Zhou10, Meijing Lin1, Jiefeng Guo1, Congbo Cai1, Zhong Chen1, Di Guo15, and Xiaobo Qu16
1Xiamen University, Xiamen, China, 2Fudan University, Shanghai, China, 3Philips Healthcare, Shanghai, China, 4Siemens Healthineers Ltd., Shanghai, China, 5United Imaging Research Institute of Intelligent Imaging, Beijing, China, 6Nanjing First Hospital, Nanjing, China, 7Shandong Aoxin Medical Technology Company, Weifang, China, 8The First Affiliated Hospital of Xiamen University, Xiamen, China, 9Zhongshan Hospital Affiliated to Xiamen University, Xiamen, China, 10Zhongshan Hospital, Fudan University (Xiamen Branch), Xiamen, China, 11Zhongshan Hospital, Fudan University, Shanghai, China, 12Ruijin Hospital Lu Wan Branch, Shanghai Jiaotong University School of Medicine, Shanghai, China, 13Ruijin Hospital, Shanghai Jiaotong University School of Medicine, Shanghai, China, 14The First Affiliated Hospital of Kunming Medical University, Shanghai, China, 15Xiamen University of Technology, Xiamen, China, 16Department of Electronic Science, Xiamen University, Xiamen, China

Synopsis

Keywords: AI/ML Image Reconstruction, Machine Learning/Artificial Intelligence, MR Physics Model

Motivation: Deep learning (DL) is powerful for fast MRI reconstruction, but remains largely untapped in multiple clinical imaging scenarios.

Goal(s): To provide a feasible and cost-effective way to markedly boost the widespread usage of DL in various fast MRI applications.

Approach: In this work, we present a Physics-Informed Synthetic data learning framework for Fast MRI, called PISF, which is the first to enable generalizable DL for multi-scenario MRI reconstruction using solely one trained model.

Results: PISF trained on synthetic data enables high-quality, ultra-fast, and robust MRI reconstruction from different 4contrasts, 5 anatomies, 5 vendors and centers, and 2 pathologies, without further re-training.

Impact: Physics-informed synthetic data learning (DL) provides a feasible and cost-effective way to markedly boost the widespread usage of DL in various fast MRI applications, while freeing from the intractable ethical and practical considerations of in vivo human data acquisitions.

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Keywords