Using machine learning for predicting intensive care unit resource use during the COVID-19 pandemic in Denmark

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作者
Stephan Sloth Lorenzen
Mads Nielsen
Espen Jimenez-Solem
Tonny Studsgaard Petersen
Anders Perner
Hans-Christian Thorsen-Meyer
Christian Igel
Martin Sillesen
机构
[1] University of Copenhagen,Department of Computer Science
[2] Copenhagen University Hospital,Department of Clinical Pharmacology
[3] Bispebjerg,Department of Intensive Care
[4] Copenhagen University Hospital,Department of Surgical Gastroenterology
[5] Rigshospitalet,Center for Surgical Translational and Artificial Intelligence Research (CSTAR)
[6] Copenhagen University Hospital,Department of Clinical Medicine
[7] Rigshospitalet,Copenhagen Phase IV Unit (Phase4CPH), Department of Clinical Pharmacology, Center for Clinical Research and Prevention
[8] Copenhagen University Hospital,undefined
[9] Rigshospitalet,undefined
[10] University of Copenhagen,undefined
[11] Copenhagen University Hospital,undefined
[12] Bispebjerg and Frederiksberg,undefined
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摘要
The COVID-19 pandemic has put massive strains on hospitals, and tools to guide hospital planners in resource allocation during the ebbs and flows of the pandemic are urgently needed. We investigate whether machine learning (ML) can be used for predictions of intensive care requirements a fixed number of days into the future. Retrospective design where health Records from 42,526 SARS-CoV-2 positive patients in Denmark was extracted. Random Forest (RF) models were trained to predict risk of ICU admission and use of mechanical ventilation after n days (n = 1, 2, …, 15). An extended analysis was provided for n = 5 and n = 10. Models predicted n-day risk of ICU admission with an area under the receiver operator characteristic curve (ROC-AUC) between 0.981 and 0.995, and n-day risk of use of ventilation with an ROC-AUC between 0.982 and 0.997. The corresponding n-day forecasting models predicted the needed ICU capacity with a coefficient of determination (R2) between 0.334 and 0.989 and use of ventilation with an R2 between 0.446 and 0.973. The forecasting models performed worst, when forecasting many days into the future (for large n). For n = 5, ICU capacity was predicted with ROC-AUC 0.990 and R2 0.928, and use of ventilator was predicted with ROC-AUC 0.994 and R2 0.854. Random Forest-based modelling can be used for accurate n-day forecasting predictions of ICU resource requirements, when n is not too large.
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