Disease areas:
  • infections
Last updated:
Author(s):
Gareth J. Griffith, Tim T. Morris, Matthew J. Tudball, Annie Herbert, Giulia Mancano, Lindsey Pike, Gemma C. Sharp, Jonathan Sterne, Tom M. Palmer, George Davey Smith, Kate Tilling, Luisa Zuccolo, Neil M. Davies, Gibran Hemani
Publish date:
12 November 2020
Journal:
Nature Communications
PubMed ID:
33184277

Abstract

Numerous observational studies have attempted to identify risk factors for infection with SARS-CoV-2 and COVID-19 disease outcomes. Studies have used datasets sampled from patients admitted to hospital, people tested for active infection, or people who volunteered to participate. Here, we highlight the challenge of interpreting observational evidence from such non-representative samples. Collider bias can induce associations between two or more variables which affect the likelihood of an individual being sampled, distorting associations between these variables in the sample. Analysing UK Biobank data, compared to the wider cohort the participants tested for COVID-19 were highly selected for a range of genetic, behavioural, cardiovascular, demographic, and anthropometric traits. We discuss the mechanisms inducing these problems, and approaches that could help mitigate them. While collider bias should be explored in existing studies, the optimal way to mitigate the problem is to use appropriate sampling strategies at the study design stage.

Related projects

Research question: what are the causal effects of education on morbidity and cause specific mortality? Outcomes: all-cause and cause-specific mortality, coronary heart disease, lung cancer…

Institution:
University of Bristol, Great Britain

The aim of our research is to develop an online tool called MR-Base, www.mrbase.org, to facilitate the application of Mendelian randomization using summary data. The…

Institution:
University of Bristol, Great Britain

All projects