An imaging-based machine learning model outperforms clinical risk scores for prognosis of cirrhotic variceal bleeding
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Shenghong Ju | Qian Yu | Chuanjun Xu | Jing Ye | Y. Lv | Jiaying Zhou | Tianyi Xia | Cong Xia | T. Tang | Xiaohuan Li | J. Zha | Yuan-Cheng Wang | Ben Zhao | Yin Gao | Yue Qiu
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