Real-time Prediction of COVID-19 related Mortality using Electronic Health Records
Patrick Schwab, Arash Mehrjou, Sonali Parbhoo, Leo Anthony Celi,, J\"urgen Hetzel, Markus Hofer, Bernhard Sch\"olkopf, Stefan Bauer

TL;DR
This paper introduces CovEWS, a machine learning-based real-time risk scoring system that predicts COVID-19 mortality up to 8 days in advance using electronic health records, outperforming existing scores.
Contribution
The study presents a novel, continuously updating clinical risk score derived from EHRs that predicts COVID-19 mortality with high accuracy over an extended time horizon.
Findings
Achieved 78.8% to 69.4% specificity at >95% sensitivity from 1 to 192 hours prior
Outperformed existing clinical risk scores in predictive accuracy
Validated across diverse international healthcare datasets
Abstract
Coronavirus Disease 2019 (COVID-19) is an emerging respiratory disease caused by the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) with rapid human-to-human transmission and a high case fatality rate particularly in older patients. Due to the exponential growth of infections, many healthcare systems across the world are under pressure to care for increasing amounts of at-risk patients. Given the high number of infected patients, identifying patients with the highest mortality risk early is critical to enable effective intervention and optimal prioritisation of care. Here, we present the COVID-19 Early Warning System (CovEWS), a clinical risk scoring system for assessing COVID-19 related mortality risk. CovEWS provides continuous real-time risk scores for individual patients with clinically meaningful predictive performance up to 192 hours (8 days) in advance, and is…
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