Machine learning-derived prediction of in-hospital mortality in patients with severe acute respiratory infection: analysis of claims data from the German-wide Helios hospital network

被引:0
作者
Johannes Leiner
Vincent Pellissier
Sebastian König
Sven Hohenstein
Laura Ueberham
Irit Nachtigall
Andreas Meier-Hellmann
Ralf Kuhlen
Gerhard Hindricks
Andreas Bollmann
机构
[1] Heart Center Leipzig at University of Leipzig,Department of Electrophysiology
[2] Helios Health Institute,Real World Evidence and Health Technology Assessment
[3] Helios Hospitals,Department of Infectious Diseases and Infection Prevention
[4] Helios Health,Institute of Hygiene and Environmental Medicine
[5] Helios Hospital Emil-von-Behring,Clinic for Cardiology
[6] Charité - Universitaetsmedizin Berlin,undefined
[7] University Hospital Leipzig,undefined
来源
Respiratory Research | / 23卷
关键词
Mortality prediction models; Machine learning; Severe acute respiratory infection; Administrative data;
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