Causal Methods for Observational Research: A Primer

Arch Iran Med. 2018 Apr 1;21(4):164-169.

Abstract

The goal of many observational studies is to estimate the causal effect of an exposure on an outcome after adjustment for confounders, but there are still some serious errors in adjusting confounders in clinical journals. Standard regression modeling (e.g., ordinary logistic regression) fails to estimate the average effect of exposure in total population in the presence of interaction between exposure and covariates, and also cannot adjust for time-varying confounding appropriately. Moreover, stepwise algorithms of the selection of confounders based on P values may miss important confounders and lead to bias in effect estimates. Causal methods overcome these limitations. We illustrate three causal methods including inverse-probability-of-treatment-weighting (IPTW) and parametric g-formula, with an emphasis on a clever combination of these 2 methods: targeted maximum likelihood estimation (TMLE) which enjoys a double-robust property against bias.

Keywords: Causal methods; Inverse-probability-of-treatment-weighting; Observational studies; Parametric g-formula; Targeted maximum likelihood estimation.

MeSH terms

  • Causality*
  • Confounding Factors, Epidemiologic
  • Data Interpretation, Statistical*
  • Epidemiologic Research Design
  • Humans
  • Models, Statistical*
  • Observational Studies as Topic / methods*
  • Observational Studies as Topic / standards
  • Observational Studies as Topic / statistics & numerical data
  • Probability
  • Software