Interpretable machine-learning model for real-time, clustered risk factor analysis of sepsis and septic death in critical care

Computer Methods and Programs in Biomedicine - Tập 241 - Trang 107772 - 2023
Zhengyu Jiang1,2, Lulong Bo1, Lei Wang3, Yan Xie3, Jianping Cao2, Ying Yao2, Wenbin Lu1, Xiaoming Deng1, Tao Yang1, Jinjun Bian1
1Faculty of Anesthesiology, Changhai Hospital, Naval Medical University of PLA, Shanghai 200433, China
2Department of Anesthesiology, Naval Medical Center, Naval Medical University of PLA, Shanghai 200052, China
3Heal Sci Technology Co., Ltd, 1606, Tower 5, 2 Rong Hua South Road, BDA, Beijing 100176, China

Tài liệu tham khảo

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