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Predicting Critical State after COVID-19 Diagnosis Using Real-World Data from 20152 Confirmed US Cases
[article]
2020
medRxiv
pre-print
The global COVID-19 pandemic caused by the virus SARS-CoV-2 has led to over 10 million confirmed cases, half a million deaths, and is challenging healthcare systems worldwide. With limited medical resources, early identification of patients with a high risk of progression to severe disease or a critical state is crucial. We present a prognostic model predicting critical state within 28 days following COVID-19 diagnosis trained on data from US electronic health records (EHR) within IBM Explorys,
doi:10.1101/2020.07.24.20155192
fatcat:tka5hdvk7zcaxndbvw4nplsi6a