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When Is a Complete-Case Approach to Missing Data Valid? The Importance of Effect-Measure Modification

Directed Acyclic Graph

When estimating causal effects, careful handling of missing data is needed to avoid bias. Complete-case analysis is commonly used in epidemiologic analyses. Previous work has shown that covariate-stratified effect estimates from complete-case analysis are unbiased when missingness is independent of the outcome conditional on the exposure and covariates.