Better data for decision-making through Bayesian imputation of suppressed provisional COVID-19 death counts

Author:

Kao Szu-Yu ZoeORCID,Tutwiler M. ShaneORCID,Ekwueme Donatus U.,Truman Benedict I.

Abstract

Purpose To facilitate use of timely, granular, and publicly available data on COVID-19 mortality, we provide a method for imputing suppressed COVID-19 death counts in the National Center for Health Statistic’s 2020 provisional mortality data by quarter, county, and age. Methods We used a Bayesian approach to impute suppressed COVID-19 death counts by quarter, county, and age in provisional data for 3,138 US counties. Our model accounts for multilevel data structures; numerous zero death counts among persons aged <50 years, rural counties, early quarters in 2020; highly right-skewed distributions; and different levels of data granularity (county, state or locality, and national levels). We compared three models with different prior assumptions of suppressed COVID-19 deaths, including noninformative priors (M1), the same weakly informative priors for all age groups (M2), and weakly informative priors that differ by age (M3) to impute the suppressed death counts. After the imputed suppressed counts were available, we assessed three prior assumptions at the national, state/locality, and county level, respectively. Finally, we compared US counties by two types of COVID-19 death rates, crude (CDR) and age-standardized death rates (ASDR), which can be estimated only through imputing suppressed death counts. Results Without imputation, the total COVID-19 death counts estimated from the raw data underestimated the reported national COVID-19 deaths by 18.60%. Using imputed data, we overestimated the national COVID-19 deaths by 3.57% (95% CI: 3.37%-3.80%) in model M1, 2.23% (95% CI: 2.04%-2.43%) in model M2, and 2.96% (95% CI: 2.76%-3.16%) in model M3 compared with the national report. The top 20 counties that were most affected by COVID-19 mortality were different between CDR and ASDR. Conclusions Bayesian imputation of suppressed county-level, age-specific COVID-19 deaths in US provisional data can improve county ASDR estimates and aid public health officials in identifying disparities in deaths from COVID-19.

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

Reference52 articles.

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2. Provisional Mortality Data—United States, 2020;FB Ahmad;MMWR Morb Mortal Wkly Rep,2021

3. National Center for Health Statistics. Provisional COVID-19 Deaths by Sex and Age. In: Provisional COVID-19 Deaths by Sex and Age [Internet]. 1 May 2020 [cited 9 Jun 2021]. https://data.cdc.gov/NCHS/Provisional-COVID-19-Deaths-by-Sex-and-Age/9bhg-hcku

4. National Center for Health Statistics. AH Provisional COVID-19 Deaths by Quarter, County and Age for 2020. In: AH Provisional COVID-19 Deaths by Quarter, County and Age for 2020 [Internet]. 28 Apr 2021 [cited 11 May 2021]. https://data.cdc.gov/NCHS/AH-Provisional-COVID-19-Deaths-by-Quarter-County-a/ypxr-mz8e

5. Centers for Disease Control and Prevention. CDC’s Vision for Public Health Surveillance in the 21st Century. 2012 Jul. Report No.: 61(Suppl; July 27, 2012).

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