A Bayesian semiparametric model for bivariate sparse longitudinal data

Mixed‐effects models have recently become popular for analyzing sparse longitudinal data that arise naturally in biological, agricultural and biomedical studies. Traditional approaches assume independent residuals over time and explain the longitudinal dependence by random effects. However, when biv...

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Bibliographic Details
Published inStatistics in medicine Vol. 32; no. 22; pp. 3899 - 3910
Main Authors Das, Kiranmoy, Li, Runze, Sengupta, Subhajit, Wu, Rongling
Format Journal Article
LanguageEnglish
Published England Blackwell Publishing Ltd 30.09.2013
Wiley Subscription Services, Inc
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Summary:Mixed‐effects models have recently become popular for analyzing sparse longitudinal data that arise naturally in biological, agricultural and biomedical studies. Traditional approaches assume independent residuals over time and explain the longitudinal dependence by random effects. However, when bivariate or multivariate traits are measured longitudinally, this fundamental assumption is likely to be violated because of intertrait dependence over time. We provide a more general framework where the dependence of the observations from the same subject over time is not assumed to be explained completely by the random effects of the model. We propose a novel, mixed model‐based approach and estimate the error–covariance structure nonparametrically under a generalized linear model framework. We use penalized splines to model the general effect of time, and we consider a Dirichlet process mixture of normal prior for the random‐effects distribution. We analyze blood pressure data from the Framingham Heart Study where body mass index, gender and time are treated as covariates. We compare our method with traditional methods including parametric modeling of the random effects and independent residual errors over time. We conduct extensive simulation studies to investigate the practical usefulness of the proposed method. The current approach is very helpful in analyzing bivariate irregular longitudinal traits. Copyright © 2013 John Wiley & Sons, Ltd.
Bibliography:NIDA - No. P50-DA10075-16
NIH - No. R01 GM31575
ArticleID:SIM5790
Washington University Institute of Clinical and Translational Sciences, NIH - No. 1U54RR023496
ark:/67375/WNG-593LBT9G-9
National Heart, Lung, and Blood Institute (NHLBI) - No. N01 HC25195
istex:534E5B641011D7B9618B1BF00D2C7C7DE09C2EE4
NNSF of China - No. 11028103
SourceType-Scholarly Journals-1
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ISSN:0277-6715
1097-0258
1097-0258
DOI:10.1002/sim.5790