This article describes the implementation of a double-robust estimator for pretest–posttest studies (Lunceford and Davidian, 2004, Statistics in Medicine 23: 2937–2960) and presents a new Stata command (dr) that carries out the procedure. A double-robust estimator gives the analyst two opportunities for obtaining unbiased inference when adjusting for selection effects such as confounding by allowing for different forms of model misspecification; a double-robust estimator also can offer increased efficiency when all the models are correctly specified. We demonstrate the results with a Monte Carlo simulation study, and we show how to implement the double-robust estimator on a single simulated dataset, both manually and by using the dr command
Consider estimation of causal parameters in a marginal structural model for the discrete intensity o...
Abstract Background In observational studies, double robust or multiply robust (MR) approaches provi...
Propensity score–based methods or multiple regressions of the outcome are often used for confounding...
This article describes the implementation of a double-robust estimator for pretest–posttest studies ...
Existing methods in causal inference do not account for the uncertainty in the selection of confound...
This work has two main objectives: first to provide a short overview of available analytical methods...
Correct model specification for confounding control is likely the most common assumption made in cau...
The main purpose of many medical studies is to estimate the effects of a treatment or exposure on an...
Abstract. We present a new Stata command, bmte (bias-minimizing treatment effects), which implements...
Objective As covariates are not always adequately balanced after propensity score matching and doubl...
Estimation of treatment effect with causal interpretation where treatment is not randomized may be b...
Articles and Columns A robust instrumental-variables estimator . . . . . . . . . R. Desbordes and V...
Estimation of the effect of a treatment or exposure with a causal interpretation from studies where ...
Recently proposed double-robust estimators for a population mean from incomplete data and for a fini...
In point treatment marginal structural models with treatment A, outcome Y and covariates W, causal p...
Consider estimation of causal parameters in a marginal structural model for the discrete intensity o...
Abstract Background In observational studies, double robust or multiply robust (MR) approaches provi...
Propensity score–based methods or multiple regressions of the outcome are often used for confounding...
This article describes the implementation of a double-robust estimator for pretest–posttest studies ...
Existing methods in causal inference do not account for the uncertainty in the selection of confound...
This work has two main objectives: first to provide a short overview of available analytical methods...
Correct model specification for confounding control is likely the most common assumption made in cau...
The main purpose of many medical studies is to estimate the effects of a treatment or exposure on an...
Abstract. We present a new Stata command, bmte (bias-minimizing treatment effects), which implements...
Objective As covariates are not always adequately balanced after propensity score matching and doubl...
Estimation of treatment effect with causal interpretation where treatment is not randomized may be b...
Articles and Columns A robust instrumental-variables estimator . . . . . . . . . R. Desbordes and V...
Estimation of the effect of a treatment or exposure with a causal interpretation from studies where ...
Recently proposed double-robust estimators for a population mean from incomplete data and for a fini...
In point treatment marginal structural models with treatment A, outcome Y and covariates W, causal p...
Consider estimation of causal parameters in a marginal structural model for the discrete intensity o...
Abstract Background In observational studies, double robust or multiply robust (MR) approaches provi...
Propensity score–based methods or multiple regressions of the outcome are often used for confounding...