How to apply multiple imputation in propensity score matching with partially observed confounders: a simulation study and practical recommendations

04/16/2019
by   Albee Y. Ling, et al.
0

Propensity score matching (PSM) has been widely used to mitigate confounding in observational studies, although complications arise when the covariates used to estimate the PS are only partially observed. Multiple imputation (MI) is a potential solution for handling missing covariates in the estimation of the PS. Unfortunately, it is not clear how to best apply MI strategies in the context of PSM. We conducted a simulation study to compare the performances of popular non-MI missing data methods and various MI-based strategies under different missing data mechanisms (MDMs). We found that commonly applied missing data methods resulted in biased and inefficient estimates, and we observed large variation in performance across MI-based strategies. Based on our findings, we recommend 1) deriving the PS after applying MI (referred to as MI-derPassive); 2) conducting PSM within each imputed data set followed by averaging the treatment effects to arrive at one summarized finding (INT-within) for mild MDMs and averaging the PSs across multiply imputed datasets before obtaining one treatment effect using PSM (INT-across) for more complex MDMs; 3) a bootstrapped-based variance to account for uncertainty of PS estimation, matching, and imputation; and 4) inclusion of key auxiliary variables in the imputation model.

READ FULL TEXT
research
05/27/2019

Estimating Average Treatment Effects Utilizing Fractional Imputation when Confounders are Subject to Missingness

The problem of missingness in observational data is ubiquitous. When the...
research
02/04/2022

To Impute or not to Impute? – Missing Data in Treatment Effect Estimation

Missing data is a systemic problem in practical scenarios that causes no...
research
09/24/2020

MatchThem:: Matching and Weighting after Multiple Imputation

Balancing the distributions of the confounders across the exposure level...
research
05/30/2022

Partial Replacement Imputation Estimation Method for Complex Missing Covariates in Additive Partially Linear Models

Missing data is a common problem in clinical data collection, which caus...
research
01/17/2023

Multiple imputation for propensity score analysis with covariates missing at random: some clarity on within and across methods

In epidemiology and social sciences, propensity score methods are popula...
research
08/25/2023

Multiple imputation of partially observed data after treatment-withdrawal

The ICH E9(R1) Addendum (International Council for Harmonization 2019) s...

Please sign up or login with your details

Forgot password? Click here to reset