Pharmacoepidemiology and Drug Safety, volume 31, issue 7, pages 721-728

Categorization of COVID ‐19 severity to determine mortality risk

Elizabeth M. Garry 1
Kenneth Quinto 2
Marie Bradley 3
Tamar Lasky 4
Aloka G. Chakravarty 4
Sandy Leonard 5
Sarah E Vititoe 1
Imaani J Easthausen 1
Nicolle M. Gatto 1
Show full list: 11 authors
Publication typeJournal Article
Publication date2022-05-09
scimago Q1
SJR1.106
CiteScore4.8
Impact factor2.4
ISSN10538569, 10991557
Pharmacology (medical)
Epidemiology
Abstract
Algorithms for classification of inpatient COVID-19 severity are necessary for confounding control in studies using real-world data.Using Healthverity chargemaster and claims data, we selected patients hospitalized with COVID-19 between April 2020 and February 2021, and classified them by severity at admission using an algorithm we developed based on respiratory support requirements (supplemental oxygen or non-invasive ventilation, O2/NIV, invasive mechanical ventilation, IMV, or NEITHER). To evaluate the utility of the algorithm, patients were followed from admission until death, discharge, or a 28-day maximum to report mortality risks and rates overall and by stratified by severity. Trends for heterogeneity in mortality risk and rate across severity classifications were evaluated using Cochran-Armitage and Logrank trend tests, respectively.Among 118 117 patients, the algorithm categorized patients in increasing severity as NEITHER (36.7%), O2/NIV (54.3%), and IMV (9.0%). Associated mortality risk (and 95% CI) was 11.8% (11.6-12.0%) overall and increased with severity [3.4% (3.2-3.5%), 11.5% (11.3-11.8%), 47.3% (46.3-48.2%); p < 0.001]. Mortality rate per 1000 person-days (and 95% CI) was 15.1 (14.9-15.4) overall and increased with severity [5.7 (5.4-6.0), 14.5 (14.2-14.9), 32.7 (31.8-33.6); p < 0.001].As expected, we observed a positive association between the algorithm-defined severity on admission and 28-day mortality risk and rate. Although performance remains to be validated, this provides some assurance that this algorithm may be used for confounding control or stratification in treatment effect studies.
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