Machine learning model to predict recurrent ulcer bleeding in patients with history of idiopathic gastroduodenal ulcer bleeding
Alimentary Pharmacology & Therapeutics2019Vol. 49(7), pp. 912–918
Citations Over TimeTop 10% of 2019 papers
Grace Lai–Hung Wong, J. Andy, Huiqi Deng, Jessica Yuet‐Ling Ching, Vincent Wai‐Sun Wong, Yee‐Kit Tse, Terry Cheuk‐Fung Yip, Louis Ho Shing Lau, H Liu, Chi‐Man Leung, Steven Woon–Choy Tsang, Chun‐Wing Chan, James Y. Lau, Pong C. Yuen, Francis K.L. Chan
Abstract
We developed a machine-learning model to identify those patients with a history of idiopathic gastroduodenal ulcer bleeding who are not at high risk for recurrent ulcer bleeding.
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