In epidemiology and social sciences, propensity score methods are popular for estimating treatment effects using observational data, and multiple imputation is popular for handling covariate missingness. However, how to appropriately use multiple imputation for propensity score analysis is not completely clear. This paper aims to bring clarity on the consistency (or lack thereof) of methods that have been proposed, focusing on the within approach (where the effect is estimated separately in each imputed dataset and then the multiple estimates are combined) and the across approach (where typically propensity scores are averaged across imputed datasets before being used for effect estimation). We show that the within method is valid and can b...
(1) Background: Propensity score methods gained popularity in non-interventional clinical studies. A...
The use of multiple imputation has increased markedly in recent years, and journal reviewers may exp...
BACKGROUND: Multiple imputation is often used for missing data. When a model contains as covariates ...
In many observational studies, analysts estimate treatment effects using propensity scores, e.g., by...
Inverse probability of treatment weighting is a popular propensity score-based approach to estimate ...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
Propensity score matching (PSM) has been widely used to mitigate confounding in observational studie...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
Although covariate measurement error is likely the norm rather than the exception, methods for handl...
Background: Missing values are a common problem for data analyses in observational studies, which ar...
Baseline covariates in randomized experiments are often used in the estimation of treatment effects,...
In many observational studies, researchers estimate causal effects using propensity scores, e.g., by...
(1) Background: Propensity score methods gained popularity in non-interventional clinical studies. A...
The use of multiple imputation has increased markedly in recent years, and journal reviewers may exp...
BACKGROUND: Multiple imputation is often used for missing data. When a model contains as covariates ...
In many observational studies, analysts estimate treatment effects using propensity scores, e.g., by...
Inverse probability of treatment weighting is a popular propensity score-based approach to estimate ...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
Propensity score matching (PSM) has been widely used to mitigate confounding in observational studie...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
Although covariate measurement error is likely the norm rather than the exception, methods for handl...
Background: Missing values are a common problem for data analyses in observational studies, which ar...
Baseline covariates in randomized experiments are often used in the estimation of treatment effects,...
In many observational studies, researchers estimate causal effects using propensity scores, e.g., by...
(1) Background: Propensity score methods gained popularity in non-interventional clinical studies. A...
The use of multiple imputation has increased markedly in recent years, and journal reviewers may exp...
BACKGROUND: Multiple imputation is often used for missing data. When a model contains as covariates ...