Selection Bias in Health Research: Quantifying, Eliminating, or Exacerbating Health Disparities?

Curr Epidemiol Rep. 2024 Mar;11(1):63-72. doi: 10.1007/s40471-023-00325-z. Epub 2023 Aug 30.

Abstract

Purpose of review: To summarize recent literature on selection bias in disparities research addressing either descriptive or causal questions, with examples from dementia research.

Recent findings: Defining a clear estimand, including the target population, is essential to assess whether generalizability bias or collider-stratification bias are threats to inferences. Selection bias in disparities research can result from sampling strategies, differential inclusion pipelines, loss to follow-up, and competing events. If competing events occur, several potentially relevant estimands can be estimated under different assumptions, with different interpretations. The apparent magnitude of a disparity can differ substantially based on the chosen estimand. Both randomized and observational studies may misrepresent health disparities or heterogeneity in treatment effects if they are not based on a known sampling scheme.

Conclusion: Researchers have recently made substantial progress in conceptualization and methods related to selection bias. This progress will improve the relevance of both descriptive and causal health disparities research.

Keywords: collider-stratification bias; competing events; estimands; generalizability; health disparities; selection bias.