Literature DB >> 19081743

Semiparametric Estimation of Treatment Effect in a Pretest-Posttest Study with Missing Data.

Marie Davidian1, Anastasios A Tsiatis, Selene Leon.   

Abstract

The pretest-posttest study is commonplace in numerous applications. Typically, subjects are randomized to two treatments, and response is measured at baseline, prior to intervention with the randomized treatment (pretest), and at prespecified follow-up time (posttest). Interest focuses on the effect of treatments on the change between mean baseline and follow-up response. Missing posttest response for some subjects is routine, and disregarding missing cases can lead to invalid inference. Despite the popularity of this design, a consensus on an appropriate analysis when no data are missing, let alone for taking into account missing follow-up, does not exist. Under a semiparametric perspective on the pretest-posttest model, in which limited distributional assumptions on pretest or posttest response are made, we show how the theory of Robins, Rotnitzky and Zhao may be used to characterize a class of consistent treatment effect estimators and to identify the efficient estimator in the class. We then describe how the theoretical results translate into practice. The development not only shows how a unified framework for inference in this setting emerges from the Robins, Rotnitzky and Zhao theory, but also provides a review and demonstration of the key aspects of this theory in a familiar context. The results are also relevant to the problem of comparing two treatment means with adjustment for baseline covariates.

Year:  2005        PMID: 19081743      PMCID: PMC2600547          DOI: 10.1214/088342305000000151

Source DB:  PubMed          Journal:  Stat Sci        ISSN: 0883-4237            Impact factor:   2.901


  6 in total

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2.  Semiparametric estimation of treatment effect in a pretest-posttest study.

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3.  The effect of screening on some pretest-posttest test variances.

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5.  Analysis of covariance in parallel-group clinical trials with pretreatment baselines.

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  6 in total
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8.  Test the reliability of doubly robust estimation with missing response data.

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9.  Covariate adjustment for two-sample treatment comparisons in randomized clinical trials: a principled yet flexible approach.

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