Propensity score analysis with partially observed confounders: how should multiple imputation be used?
Clemence Leyrat, Shaun R. Seaman, Ian R. White, Ian Douglas, Liam, Smeeth, Joseph Kim, Matthieu Resche-Rigon, James R. Carpenter, Elizabeth, J. Williamson

TL;DR
This paper investigates how multiple imputation should be used with propensity score methods when confounders are partially observed, comparing different approaches through simulation to recommend best practices.
Contribution
It provides a comprehensive simulation study comparing three MI combination methods for propensity score analysis with missing data, highlighting the effectiveness of MIte.
Findings
MIte method is unbiased across scenarios
Including the outcome in the imputation model reduces bias
Rubin's rules give accurate variance estimates for MIte
Abstract
Inverse probability of treatment weighting (IPTW) is a popular propensity score (PS)-based approach to estimate causal effects in observational studies at risk of confounding bias. A major issue when estimating the PS is the presence of partially observed covariates. Multiple imputation (MI) is a natural approach to handle missing data on covariates, but its use in the PS context raises three important questions: (i) should we apply Rubin's rules to the IPTW treatment effect estimates or to the PS estimates themselves? (ii) does the outcome have to be included in the imputation model? (iii) how should we estimate the variance of the IPTW estimator after MI? We performed a simulation study focusing on the effect of a binary treatment on a binary outcome with three confounders (two of them partially observed). We used MI with chained equations to create complete datasets and compared…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Statistical Methods and Inference · Health Systems, Economic Evaluations, Quality of Life
