Literature DB >> 16345018

Pseudo-likelihood methods for longitudinal binary data with non-ignorable missing responses and covariates.

Michael Parzen1, Stuart R Lipsitz, Garrett M Fitzmaurice, Joseph G Ibrahim, Andrea Troxel.   

Abstract

In this paper we consider longitudinal studies in which the outcome to be measured over time is binary, and the covariates of interest are categorical. In longitudinal studies it is common for the outcomes and any time-varying covariates to be missing due to missed study visits, resulting in non-monotone patterns of missingness. Moreover, the reasons for missed visits may be related to the specific values of the response and/or covariates that should have been obtained, i.e. missingness is non-ignorable. With non-monotone non-ignorable missing response and covariate data, a full likelihood approach is quite complicated, and maximum likelihood estimation can be computationally prohibitive when there are many occasions of follow-up. Furthermore, the full likelihood must be correctly specified to obtain consistent parameter estimates. We propose a pseudo-likelihood method for jointly estimating the covariate effects on the marginal probabilities of the outcomes and the parameters of the missing data mechanism. The pseudo-likelihood requires specification of the marginal distributions of the missingness indicator, outcome, and possibly missing covariates at each occasions, but avoids making assumptions about the joint distribution of the data at two or more occasions. Thus, the proposed method can be considered semi-parametric. The proposed method is an extension of the pseudo-likelihood approach in Troxel et al. to handle binary responses and possibly missing time-varying covariates. The method is illustrated using data from the Six Cities study, a longitudinal study of the health effects of air pollution. Copyright (c) 2005 John Wiley & Sons, Ltd.

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Year:  2006        PMID: 16345018     DOI: 10.1002/sim.2435

Source DB:  PubMed          Journal:  Stat Med        ISSN: 0277-6715            Impact factor:   2.373


  7 in total

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2.  Longitudinal data analysis with non-ignorable missing data.

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Journal:  Br J Psychiatry       Date:  2009-09       Impact factor: 9.319

6.  Power difference in a χ2 test vs generalized linear mixed model in the presence of missing data - a simulation study.

Authors:  Mary L Miller; Denise J Roe; Chengcheng Hu; Melanie L Bell
Journal:  BMC Med Res Methodol       Date:  2020-03-02       Impact factor: 4.615

7.  Regularized approach for data missing not at random.

Authors:  Chi-Hong Tseng; Yi-Hau Chen
Journal:  Stat Methods Med Res       Date:  2017-07-03       Impact factor: 2.494

  7 in total

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