An interpretable artificial intelligence system for detecting risk factors of gastroesophageal variceal bleeding
Jing Wang(Peking University), Honggang Yu(Renmin Hospital of Wuhan University), Ming Xu(Chinese Academy of Medical Sciences & Peking Union Medical College), Liwen Yao(Wuhan University), Lianlian Wu(Tianjin University), Zhengqiang Wang(Wuhan University), Chenxia Zhang(Wuhan University), Xun Li(Brigham and Women's Hospital), Shi Chen(Ruijin Hospital), Jiao Li(Wuhan University), Yijie Zhu(Wuhan University), Mingkai Chen(Jiangsu University), Mengjuan Lin(Wuhan University), Renquan Luo(Wuhan University), Yong Xiao(Wuhan University), Xiaoda Jiang(Wuhan University)
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