Authors
Emma K Accorsi, Xueting Qiu, Eva Rumpler, Lee Kennedy-Shaffer, Rebecca Kahn, Keya Joshi, Edward Goldstein, Mats J Stensrud, Rene Niehus, Muge Cevik, Marc Lipsitch
Publication date
2021/2
Source
European journal of epidemiology
Volume
36
Pages
179-196
Publisher
Springer Netherlands
Description
In response to the coronavirus disease (COVID-19) pandemic, public health scientists have produced a large and rapidly expanding body of literature that aims to answer critical questions, such as the proportion of the population in a geographic area that has been infected; the transmissibility of the virus and factors associated with high infectiousness or susceptibility to infection; which groups are the most at risk of infection, morbidity and mortality; and the degree to which antibodies confer protection to re-infection. Observational studies are subject to a number of different biases, including confounding, selection bias, and measurement error, that may threaten their validity or influence the interpretation of their results. To assist in the critical evaluation of a vast body of literature and contribute to future study design, we outline and propose solutions to biases that can occur across different categories of …
Total citations
20202021202220232024140362921
Scholar articles
EK Accorsi, X Qiu, E Rumpler, L Kennedy-Shaffer… - European journal of epidemiology, 2021