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Dokumenttyp:
Article; Journal Article; Research Support, Non-U.S. Gov't
Autor(en):
Lichtner, Gregor; Balzer, Felix; Haufe, Stefan; Giesa, Niklas; Schiefenhövel, Fridtjof; Schmieding, Malte; Jurth, Carlo; Kopp, Wolfgang; Akalin, Altuna; Schaller, Stefan J; Weber-Carstens, Steffen; Spies, Claudia; von Dincklage, Falk
Titel:
Predicting lethal courses in critically ill COVID-19 patients using a machine learning model trained on patients with non-COVID-19 viral pneumonia.
Abstract:
In a pandemic with a novel disease, disease-specific prognosis models are available only with a delay. To bridge the critical early phase, models built for similar diseases might be applied. To test the accuracy of such a knowledge transfer, we investigated how precise lethal courses in critically ill COVID-19 patients can be predicted by a model trained on critically ill non-COVID-19 viral pneumonia patients. We trained gradient boosted decision tree models on 718 (245 deceased) non-COVID-19 vi...     »
Zeitschriftentitel:
Sci Rep
Jahr:
2021
Band / Volume:
11
Heft / Issue:
1
Volltext / DOI:
doi:10.1038/s41598-021-92475-7
PubMed:
http://view.ncbi.nlm.nih.gov/pubmed/34168198
Print-ISSN:
2045-2322
TUM Einrichtung:
Klinik für Anästhesiologie (DHM)
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