Literature DB >> 23645941

Bayesian modeling of the dependence in longitudinal data via partial autocorrelations and marginal variances.

Y Wang1, M J Daniels.   

Abstract

Many parameters and positive-definiteness are two major obstacles in estimating and modelling a correlation matrix for longitudinal data. In addition, when longitudinal data is incomplete, incorrectly modelling the correlation matrix often results in bias in estimating mean regression parameters. In this paper, we introduce a flexible and parsimonious class of regression models for a covariance matrix parameterized using marginal variances and partial autocorrelations. The partial autocorrelations can freely vary in the interval (-1, 1) while maintaining positive definiteness of the correlation matrix so the regression parameters in these models will have no constraints. We propose a class of priors for the regression coefficients and examine the importance of correctly modeling the correlation structure on estimation of longitudinal (mean) trajectories and the performance of the DIC in choosing the correct correlation model via simulations. The regression approach is illustrated on data from a longitudinal clinical trial.

Entities:  

Keywords:  Generalized linear model; Markov Chain Monte Carlo; Uniform prior

Year:  2013        PMID: 23645941      PMCID: PMC3640593          DOI: 10.1016/j.jmva.2012.11.010

Source DB:  PubMed          Journal:  J Multivar Anal        ISSN: 0047-259X            Impact factor:   1.473


  7 in total

1.  Dynamic conditionally linear mixed models for longitudinal data.

Authors:  M Pourahmadi; M J Daniels
Journal:  Biometrics       Date:  2002-03       Impact factor: 2.571

2.  Shrinkage estimators for covariance matrices.

Authors:  M J Daniels; R E Kass
Journal:  Biometrics       Date:  2001-12       Impact factor: 2.571

3.  Modelling the random effects covariance matrix in longitudinal data.

Authors:  Michael J Daniels; Yan D Zhao
Journal:  Stat Med       Date:  2003-05-30       Impact factor: 2.373

4.  A parametric family of correlation structures for the analysis of longitudinal data.

Authors:  A Muñoz; V Carey; J P Schouten; M Segal; B Rosner
Journal:  Biometrics       Date:  1992-09       Impact factor: 2.571

5.  A note on MAR, identifying restrictions, model comparison, and sensitivity analysis in pattern mixture models with and without covariates for incomplete data.

Authors:  Chenguang Wang; Michael J Daniels
Journal:  Biometrics       Date:  2011-03-01       Impact factor: 2.571

6.  A controlled dose-ranging study of remoxipride and haloperidol in schizophrenia--a Canadian multicentre trial.

Authors:  Y D Lapierre; N P Nair; G Chouinard; A G Awad; B Saxena; B Jones; D J McClure; D Bakish; P Max; R Manchanda
Journal:  Acta Psychiatr Scand Suppl       Date:  1990

7.  Modeling Covariance Matrices via Partial Autocorrelations.

Authors:  M J Daniels; M Pourahmadi
Journal:  J Multivar Anal       Date:  2009-11-01       Impact factor: 1.473

  7 in total
  4 in total

1.  Flexible marginalized models for bivariate longitudinal ordinal data.

Authors:  Keunbaik Lee; Michael J Daniels; Yongsung Joo
Journal:  Biostatistics       Date:  2013-01-29       Impact factor: 5.899

2.  Sparsity Inducing Prior Distributions for Correlation Matrices of Longitudinal Data.

Authors:  J T Gaskins; M J Daniels; B H Marcus
Journal:  J Comput Graph Stat       Date:  2014       Impact factor: 2.302

3.  Bayesian Inference for Multivariate Meta-regression with a Partially Observed Within-Study Sample Covariance Matrix.

Authors:  Hui Yao; Sungduk Kim; Ming-Hui Chen; Joseph G Ibrahim; Arvind K Shah; Jianxin Lin
Journal:  J Am Stat Assoc       Date:  2015-06       Impact factor: 5.033

4.  Bayesian modeling of the covariance structure for irregular longitudinal data using the partial autocorrelation function.

Authors:  Li Su; Michael J Daniels
Journal:  Stat Med       Date:  2015-03-12       Impact factor: 2.373

  4 in total

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