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You Can't Drive a Car with only Three Wheels

Research output: Contribution to journalReview articlepeer-review

2 Scopus citations

Abstract

Authors aiming to estimate causal effects from observational data frequently discuss 3 fundamental identifiability assumptions for causal inference: exchangeability, consistency, and positivity. However, too often, studies fail to acknowledge the importance of measurement bias in causal inference. In the presence of measurement bias, the aforementioned identifiability conditions are not sufficient to estimate a causal effect. The most fundamental requirement for estimating a causal effect is knowing who is truly exposed and unexposed. In this issue of the Journal, Caniglia et al. (Am J Epidemiol. 2019;000(00):000-000) present a thorough discussion of methodological challenges when estimating causal effects in the context of research on distance to obstetrical care. Their article highlights empirical strategies for examining nonexchangeability due to unmeasured confounding and selection bias and potential violations of the consistency assumption. In addition to the important considerations outlined by Caniglia et al., authors interested in estimating causal effects from observational data should also consider implementing quantitative strategies to examine the impact of misclassification. The objective of this commentary is to emphasize that you can't drive a car with only three wheels, and you also cannot estimate a causal effect in the presence of exposure misclassification bias.

Original languageEnglish
Pages (from-to)1682-1685
Number of pages4
JournalAmerican Journal of Epidemiology
Volume188
Issue number9
DOIs
StatePublished - Sep 1 2019

Keywords

  • causal inference
  • consistency
  • exchangeability
  • misclassification
  • positivity
  • quantitative bias analysis

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