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Personalized stratification of back to work risk amidst COVID-19: A machine learning approach (Preprint)

Authors :
Carson Lam
Jacob Calvert
Gina Barnes
Emily Pellegrini
Anna Lynn-Palevsky
Abigail Green-Saxena
Jana Hoffman
Ritankar Das
Publication Year :
2020
Publisher :
JMIR Publications Inc., 2020.

Abstract

BACKGROUND In the wake of COVID-19, the United States has developed a three stage plan to outline the parameters to determine when states may reopen businesses and ease travel restrictions. The guidelines also identify subpopulations of Americans that should continue to stay at home due to being at high risk for severe disease should they contract COVID-19. These guidelines were based on population level demographics, rather than individual-level risk factors. As such, they may misidentify individuals at high risk for severe illness and who should therefore not return to work until vaccination or widespread serological testing is available. OBJECTIVE This study evaluated a machine learning algorithm for the prediction of serious illness due to COVID-19 using inpatient data collected from electronic health records. METHODS The algorithm was trained to identify patients for whom a diagnosis of COVID-19 was likely to result in hospitalization, and compared against four U.S policy-based criteria: age over 65, having a serious underlying health condition, age over 65 or having a serious underlying health condition, and age over 65 and having a serious underlying health condition. RESULTS This algorithm identified 80% of patients at risk for hospitalization due to COVID-19, versus at most 62% that are identified by government guidelines. The algorithm also achieved a high specificity of 95%, outperforming government guidelines. CONCLUSIONS This algorithm may help to enable a broad reopening of the American economy while ensuring that patients at high risk for serious disease remain home until vaccination and testing become available.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........1b20a1d2ed114908f80497f668efe2ca
Full Text :
https://doi.org/10.2196/preprints.22030