Development and Validation of a Machine Learning COVID-19 Veteran (COVet) Deterioration Risk Score

Author:

Govindan Sushant1,Spicer Alexandra2,Bearce Matthew1,Schaefer Richard S.1,Uhl Andrea1,Alterovitz Gil34,Kim Michael J.4,Carey Kyle A.5,Shah Nirav S.6,Winslow Christopher6,Gilbert Emily7,Stey Anne8,Weiss Alan M.9,Amin Devendra9,Karway George2,Martin Jennie2,Edelson Dana P.10,Churpek Matthew M.211

Affiliation:

1. MInDSET Service Line, Kansas City Veterans Affairs Hospital, Kansas City, MO.

2. Division of Allergy, Pulmonary, and Critical Care Division, University of Wisconsin-Madison, Madison, WI.

3. Harvard Medical School, Boston, MA.

4. Office of Research and Development, Department of Veterans Affairs, Washington, DC.

5. Section of General Internal Medicine, University of Chicago, Chicago, IL.

6. Department of Medicine, NorthShore University HealthSystem, Evanston, IL.

7. Department of Medicine, Loyola University Medical Center, Maywood, IL.

8. Department of Surgery, Northwestern University School of Medicine, Chicago, IL.

9. Section of Critical Care, Baycare Health System, Clearwater, FL.

10. Section of Hospital Medicine, University of Chicago, Chicago, IL.

11. Department of Biostatistics and Medical Informatics, University of Wisconsin-Madison, Madison, WI.

Abstract

BACKGROUND AND OBJECTIVE: To develop the COVid Veteran (COVet) score for clinical deterioration in Veterans hospitalized with COVID-19 and further validate this model in both Veteran and non-Veteran samples. No such score has been derived and validated while incorporating a Veteran sample. DERIVATION COHORT: Adults (age ≥ 18 yr) hospitalized outside the ICU with a diagnosis of COVID-19 for model development to the Veterans Health Administration (VHA) (n = 80 hospitals). VALIDATION COHORT: External validation occurred in a VHA cohort of 34 hospitals, as well as six non-Veteran health systems for further external validation (n = 21 hospitals) between 2020 and 2023. PREDICTION MODEL: eXtreme Gradient Boosting machine learning methods were used, and performance was assessed using the area under the receiver operating characteristic curve and compared with the National Early Warning Score (NEWS). The primary outcome was transfer to the ICU or death within 24 hours of each new variable observation. Model predictor variables included demographics, vital signs, structured flowsheet data, and laboratory values. RESULTS: A total of 96,908 admissions occurred during the study period, of which 59,897 were in the Veteran sample and 37,011 were in the non-Veteran sample. During external validation in the Veteran sample, the model demonstrated excellent discrimination, with an area under the receiver operating characteristic curve of 0.88. This was significantly higher than NEWS (0.79; p < 0.01). In the non-Veteran sample, the model also demonstrated excellent discrimination (0.86 vs. 0.79 for NEWS; p < 0.01). The top three variables of importance were eosinophil percentage, mean oxygen saturation in the prior 24-hour period, and worst mental status in the prior 24-hour period. CONCLUSIONS: We used machine learning methods to develop and validate a highly accurate early warning score in both Veterans and non-Veterans hospitalized with COVID-19. The model could lead to earlier identification and therapy, which may improve outcomes.

Publisher

Ovid Technologies (Wolters Kluwer Health)

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