Litcius/Paper detail

On the estimation of average treatment effects with right‐censored time to event outcome and competing risks

Brice Maxime Hugues Ozenne, Thomas Harder Scheike, Laila Stærk, Thomas Alexander Gerds

2020Biometrical Journal75 citationsDOIOpen Access PDF

Abstract

We are interested in the estimation of average treatment effects based on right-censored data of an observational study. We focus on causal inference of differences between t-year absolute event risks in a situation with competing risks. We derive doubly robust estimation equations and implement estimators for the nuisance parameters based on working regression models for the outcome, censoring, and treatment distribution conditional on auxiliary baseline covariates. We use the functional delta method to show that these estimators are regular asymptotically linear estimators and estimate their variances based on estimates of their influence functions. In empirical studies, we assess the robustness of the estimators and the coverage of confidence intervals. The methods are further illustrated using data from a Danish registry study.

Topics & Concepts

EstimatorStatisticsCausal inferenceObservational studyEconometricsMathematicsNuisance parameterEstimationInferenceStatistical inferenceConditional probability distributionRobustness (evolution)Confidence intervalAverage treatment effectEstimating equationsPoint estimationRegression analysisEvent (particle physics)RegressionOutcome (game theory)Interval estimationLinear regressionConditional expectationCensoring (clinical trials)Least absolute deviationsAsymptotic distributionAbsolute risk reductionGeneralized estimating equationM-estimatorConfidence regionEstimation theoryGeneralized linear modelCoverage probabilityRobust statisticsMarginal structural modelAdvanced Causal Inference TechniquesStatistical Methods and InferenceStatistical Methods and Bayesian Inference