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Adjusting Incidence Estimates with Laboratory Test Performances: A Pragmatic Maximum Likelihood Estimation-Based Approach.

Authors :
Weng, Yingjie
Weng, Yingjie
Tian, Lu
Boothroyd, Derek
Lee, Justin
Zhang, Kenny
Lu, Di
Lindan, Christina
Bollyky, Jenna
Huang, Beatrice
Rutherford, George
Maldonado, Yvonne
Desai, Manisha
Weng, Yingjie
Weng, Yingjie
Tian, Lu
Boothroyd, Derek
Lee, Justin
Zhang, Kenny
Lu, Di
Lindan, Christina
Bollyky, Jenna
Huang, Beatrice
Rutherford, George
Maldonado, Yvonne
Desai, Manisha
Source :
Epidemiology; vol 35, iss 3
Publication Year :
2024

Abstract

Understanding the incidence of disease is often crucial for public policy decision-making, as observed during the COVID-19 pandemic. Estimating incidence is challenging, however, when the definition of incidence relies on tests that imperfectly measure disease, as in the case when assays with variable performance are used to detect the SARS-CoV-2 virus. To our knowledge, there are no pragmatic methods to address the bias introduced by the performance of labs in testing for the virus. In the setting of a longitudinal study, we developed a maximum likelihood estimation-based approach to estimate laboratory performance-adjusted incidence using the expectation-maximization algorithm. We constructed confidence intervals (CIs) using both bootstrapped-based and large-sample interval estimator approaches. We evaluated our methods through extensive simulation and applied them to a real-world study (TrackCOVID), where the primary goal was to determine the incidence of and risk factors for SARS-CoV-2 infection in the San Francisco Bay Area from July 2020 to March 2021. Our simulations demonstrated that our method converged rapidly with accurate estimates under a variety of scenarios. Bootstrapped-based CIs were comparable to the large-sample estimator CIs with a reasonable number of incident cases, shown via a simulation scenario based on the real TrackCOVID study. In more extreme simulated scenarios, the coverage of large-sample interval estimation outperformed the bootstrapped-based approach. Results from the application to the TrackCOVID study suggested that assuming perfect laboratory test performance can lead to an inaccurate inference of the incidence. Our flexible, pragmatic method can be extended to a variety of disease and study settings.

Details

Database :
OAIster
Journal :
Epidemiology; vol 35, iss 3
Notes :
application/pdf, Epidemiology vol 35, iss 3
Publication Type :
Electronic Resource
Accession number :
edsoai.on1449589477
Document Type :
Electronic Resource