Inverse probability of treatment weighting is a popular propensity score-based approach to estimate marginal treatment effects in observational studies at risk of confounding bias. A major issue when estimating the propensity score is the presence of partially observed covariates. Multiple imputation is a natural approach to handle missing data on covariates: covariates are imputed and a propensity score analysis is performed in each imputed dataset to estimate the treatment effect. The treatment effect estimates from each imputed dataset are then combined to obtain an overall estimate. We call this method MIte. However, an alternative approach has been proposed, in which the propensity scores are combined across the imputed datasets (MIps)...
Although covariate measurement error is likely the norm rather than the exception, methods for handl...
In many observational studies, researchers estimate causal effects using propensity scores, e.g., by...
BACKGROUND: Multiple imputation is often used for missing data. When a model contains as covariates ...
Inverse probability of treatment weighting is a popular propensity score-based approach to estimate ...
In epidemiology and social sciences, propensity score methods are popular for estimating treatment e...
Propensity score matching (PSM) has been widely used to mitigate confounding in observational studie...
In many observational studies, analysts estimate treatment effects using propensity scores, e.g. by ...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
Propensity scoring (PS) is an established tool to account for measured confounding in non-randomized...
Analysts often estimate treatment effects in observational studies using propensity score matching t...
Background: Missing values are a common problem for data analyses in observational studies, which ar...
Although covariate measurement error is likely the norm rather than the exception, methods for handl...
In many observational studies, researchers estimate causal effects using propensity scores, e.g., by...
BACKGROUND: Multiple imputation is often used for missing data. When a model contains as covariates ...
Inverse probability of treatment weighting is a popular propensity score-based approach to estimate ...
In epidemiology and social sciences, propensity score methods are popular for estimating treatment e...
Propensity score matching (PSM) has been widely used to mitigate confounding in observational studie...
In many observational studies, analysts estimate treatment effects using propensity scores, e.g. by ...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
Propensity scoring (PS) is an established tool to account for measured confounding in non-randomized...
Analysts often estimate treatment effects in observational studies using propensity score matching t...
Background: Missing values are a common problem for data analyses in observational studies, which ar...
Although covariate measurement error is likely the norm rather than the exception, methods for handl...
In many observational studies, researchers estimate causal effects using propensity scores, e.g., by...
BACKGROUND: Multiple imputation is often used for missing data. When a model contains as covariates ...