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Activity Number: 75 - Invited EPoster Session II
Type: Invited
Date/Time: Sunday, August 7, 2022 : 9:35 PM to 10:30 PM
Sponsor: Section on Statistics in Epidemiology
Abstract #322971
Title: Adjusting COVID-19 Seroprevalence Survey Results to Account for Test Sensitivity and Specificity
Author(s): Mark J Meyer* and Shuting Yan and Samantha Schlageter and John D Kraemer and Michael A Stoto
Companies: Georgetown University and Georgetown University and Georgetown University and Georgetown University and Georgetown University
Keywords: adjustment for test error; COVID-19; Bayesian inference ; seroprevalence survey; SARS-CoV-2; New York
Abstract:

Population-based seroprevalence surveys can provide useful estimates of the number of individuals previously infected with serious acute respiratory syndrome coronavirus 2 (SARS-CoV-2) and still susceptible, as well as contribute to better estimates of the case-fatality rate and other measures of COVID-19 severity. No serological test is 100% accurate, however, and the standard correction that epidemiologists use to adjust estimates relies on estimates of the test sensitivity and specificity often based on small validation studies. We have developed a fully Bayesian approach to adjust observed prevalence estimates for sensitivity and specificity. Application to a seroprevalence survey conducted in New York State in 2020 demonstrates that this approach results in more realistic-and narrower-credible intervals than the standard sensitivity analysis using confidence interval endpoints. In addition, the model permits incorporating data on the geographical distribution of reported case counts to create informative priors on the cumulative incidence to produce estimates and credible intervals for smaller geographic areas than often can be precisely estimated with seroprevalence surveys.


Authors who are presenting talks have a * after their name.

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