1School of Biomedical Engineering & State Key Laboratory of Advanced Medical Materials and Devices, ShanghaiTech University, Shanghai, China
2Department of Radiology, Ren Ji Hospital, School of Medicine, Shanghai Jiao Tong University, China
Presenting Author: Hanxi Liao
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