The effect of omitted covariates in marginal and partially conditional recurrent event analyses

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Abstract

There have been many advances in statistical methodology for the analysis of recurrent event data in recent years. Multiplicative semiparametric rate-based models are widely used in clinical trials, as are more general partially conditional rate-based models involving event-based stratification. The partially conditional model provides protection against extra-Poisson variation as well as event-dependent censoring, but conditioning on outcomes post-randomization can induce confounding and compromise causal inference. The purpose of this article is to examine the consequences of model misspecification in semiparametric marginal and partially conditional rate-based analysis through omission of prognostic variables. We do so using estimating function theory and empirical studies.

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Zhong, Y., & Cook, R. J. (2019). The effect of omitted covariates in marginal and partially conditional recurrent event analyses. Lifetime Data Analysis, 25(2), 280–300. https://doi.org/10.1007/s10985-018-9430-y

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