A primer on Bayesian estimation of prevalence of COVID-19 patient outcomes

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Abstract

A common research task in COVID-19 studies often involves the prevalence estimation of certain medical outcomes. Although point estimates with confidence intervals are typically obtained, a better approach is to estimate the entire posterior probability distribution of the prevalence, which can be easily accomplished with a standard Bayesian approach using binomial likelihood and its conjugate beta prior distribution. Using two recently published COVID-19 data sets, we performed Bayesian analysis to estimate the prevalence of infection fatality in Iceland and asymptomatic children in the United States.

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Gao, X., & Dong, Q. (2020, December 1). A primer on Bayesian estimation of prevalence of COVID-19 patient outcomes. JAMIA Open. Oxford University Press. https://doi.org/10.1093/jamiaopen/ooaa062

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