Multiply robust estimation of marginal structural models in observational studies subject to covariate-driven observations

Author:

Coulombe Janie1ORCID,Yang Shu2ORCID

Affiliation:

1. Department of Mathematics and Statistics, Université de Montréal , Montreal, Quebec H3T 1J4 , Canada

2. Department of Statistics, North Carolina State University , Raleigh, NC 27607 , United States

Abstract

ABSTRACT Electronic health records and other sources of observational data are increasingly used for drawing causal inferences. The estimation of a causal effect using these data not meant for research purposes is subject to confounding and irregularly-spaced covariate-driven observation times affecting the inference. A doubly-weighted estimator accounting for these features has previously been proposed that relies on the correct specification of two nuisance models used for the weights. In this work, we propose a novel consistent multiply robust estimator and demonstrate analytically and in comprehensive simulation studies that it is more flexible and more efficient than the only alternative estimator proposed for the same setting. It is further applied to data from the Add Health study in the United States to estimate the causal effect of therapy counseling on alcohol consumption in American adolescents.

Funder

National Institute of Child Health and Human Development

National Institute on Aging

University of North Carolina

Publisher

Oxford University Press (OUP)

Reference36 articles.

1. Cox’s regression model for counting processes: A large sample study;Andersen;Annals of Statistics,1982

2. Why we need observational studies to evaluate the effectiveness of health care;Black;British Medical Journal,1996

3. Marginal regression modeling under irregular, biased sampling;Bůžková;UW Biostatistics Working Paper Series,2005

4. Semiparametric modeling of repeated measurements under outcome-dependent follow-up;Bůžková;Statistics in Medicine,2009

5. Weighted regression analysis to correct for informative monitoring times and confounders in longitudinal studies;Coulombe;Biometrics,2021

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