4.6 Article

Avoiding collider bias in Mendelian randomization when performing stratified analyses

Journal

EUROPEAN JOURNAL OF EPIDEMIOLOGY
Volume 37, Issue 7, Pages 671-682

Publisher

SPRINGER
DOI: 10.1007/s10654-022-00879-0

Keywords

Mendelian randomization; Collider bias; Stratification; Bladder cancer; Smoking; Bodyweight

Funding

  1. Sir Henry Dale Fellowship - Wellcome Trust [204623/Z/16/Z]
  2. Sir Henry Dale Fellowship - Royal Society [204623/Z/16/Z]
  3. United Kingdom Research and Innovation Medical Research Council [MC_ UU_ 00002/7]
  4. National Institute for Health Research Cambridge Biomedical Research Centre [BRC-1215-20014]
  5. Fondo de Investigaciones Sanitarias (FIS), Instituto de Salud Carlos III, Spain [PI18/01347]
  6. Ministerio de Ciencia e Innovacion, Spain [PID2019-104681RB-I00]
  7. CIBERONC, Insitituto de Salud Carlos III, Spain
  8. British Heart Foundation Centre of Research Excellence at Imperial College [RE/18/4/34215]
  9. National Institute for Health Research Clinical Lectureship at St George's, University of London [CL-2020-16-001]

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The study introduces a new method for Mendelian randomization (MR) that uses residual collider variables in population strata to estimate causality without collider bias, allowing for investigating heterogeneity among subgroups of the population.
Mendelian randomization (MR) uses genetic variants as instrumental variables to investigate the causal effect of a risk factor on an outcome. A collider is a variable influenced by two or more other variables. Naive calculation of MR estimates in strata of the population defined by a collider, such as a variable affected by the risk factor, can result in collider bias. We propose an approach that allows MR estimation in strata of the population while avoiding collider bias. This approach constructs a new variable, the residual collider, as the residual from regression of the collider on the genetic instrument, and then calculates causal estimates in strata defined by quantiles of the residual collider. Estimates stratified on the residual collider will typically have an equivalent interpretation to estimates stratified on the collider, but they are not subject to collider bias. We apply the approach in several simulation scenarios considering different characteristics of the collider variable and strengths of the instrument. We then apply the proposed approach to investigate the causal effect of smoking on bladder cancer in strata of the population defined by bodyweight. The new approach generated unbiased estimates in all the simulation settings. In the applied example, we observed a trend in the stratum-specific MR estimates at different bodyweight levels that suggested stronger effects of smoking on bladder cancer among individuals with lower bodyweight. The proposed approach can be used to perform MR studying heterogeneity among subgroups of the population while avoiding collider bias.

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