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

In long-term follow-up studies, irregular longitudinal data are observed when individuals are assessed repeatedly over time but at uncommon and irregularly spaced time points. Modeling the covariance structure for this type of data is challenging, as it requires specification of a covariance functio...

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Autores principales: Su, Li, Daniels, Michael J
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley & Sons, Ltd 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4420715/
https://www.ncbi.nlm.nih.gov/pubmed/25762065
http://dx.doi.org/10.1002/sim.6465
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author Su, Li
Daniels, Michael J
author_facet Su, Li
Daniels, Michael J
author_sort Su, Li
collection PubMed
description In long-term follow-up studies, irregular longitudinal data are observed when individuals are assessed repeatedly over time but at uncommon and irregularly spaced time points. Modeling the covariance structure for this type of data is challenging, as it requires specification of a covariance function that is positive definite. Moreover, in certain settings, careful modeling of the covariance structure for irregular longitudinal data can be crucial in order to ensure no bias arises in the mean structure. Two common settings where this occurs are studies with ‘outcome-dependent follow-up’ and studies with ‘ignorable missing data’. ‘Outcome-dependent follow-up’ occurs when individuals with a history of poor health outcomes had more follow-up measurements, and the intervals between the repeated measurements were shorter. When the follow-up time process only depends on previous outcomes, likelihood-based methods can still provide consistent estimates of the regression parameters, given that both the mean and covariance structures of the irregular longitudinal data are correctly specified and no model for the follow-up time process is required. For ‘ignorable missing data’, the missing data mechanism does not need to be specified, but valid likelihood-based inference requires correct specification of the covariance structure. In both cases, flexible modeling approaches for the covariance structure are essential. In this paper, we develop a flexible approach to modeling the covariance structure for irregular continuous longitudinal data using the partial autocorrelation function and the variance function. In particular, we propose semiparametric non-stationary partial autocorrelation function models, which do not suffer from complex positive definiteness restrictions like the autocorrelation function. We describe a Bayesian approach, discuss computational issues, and apply the proposed methods to CD4 count data from a pediatric AIDS clinical trial. © 2015 The Authors. Statistics in Medicine Published by John Wiley & Sons Ltd.
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spelling pubmed-44207152015-12-16 Bayesian modeling of the covariance structure for irregular longitudinal data using the partial autocorrelation function Su, Li Daniels, Michael J Stat Med Research Articles In long-term follow-up studies, irregular longitudinal data are observed when individuals are assessed repeatedly over time but at uncommon and irregularly spaced time points. Modeling the covariance structure for this type of data is challenging, as it requires specification of a covariance function that is positive definite. Moreover, in certain settings, careful modeling of the covariance structure for irregular longitudinal data can be crucial in order to ensure no bias arises in the mean structure. Two common settings where this occurs are studies with ‘outcome-dependent follow-up’ and studies with ‘ignorable missing data’. ‘Outcome-dependent follow-up’ occurs when individuals with a history of poor health outcomes had more follow-up measurements, and the intervals between the repeated measurements were shorter. When the follow-up time process only depends on previous outcomes, likelihood-based methods can still provide consistent estimates of the regression parameters, given that both the mean and covariance structures of the irregular longitudinal data are correctly specified and no model for the follow-up time process is required. For ‘ignorable missing data’, the missing data mechanism does not need to be specified, but valid likelihood-based inference requires correct specification of the covariance structure. In both cases, flexible modeling approaches for the covariance structure are essential. In this paper, we develop a flexible approach to modeling the covariance structure for irregular continuous longitudinal data using the partial autocorrelation function and the variance function. In particular, we propose semiparametric non-stationary partial autocorrelation function models, which do not suffer from complex positive definiteness restrictions like the autocorrelation function. We describe a Bayesian approach, discuss computational issues, and apply the proposed methods to CD4 count data from a pediatric AIDS clinical trial. © 2015 The Authors. Statistics in Medicine Published by John Wiley & Sons Ltd. John Wiley & Sons, Ltd 2015-05-30 2015-03-12 /pmc/articles/PMC4420715/ /pubmed/25762065 http://dx.doi.org/10.1002/sim.6465 Text en © 2015 The Authors. Statistics in Medicine Published by John Wiley & Sons Ltd. http://creativecommons.org/licenses/by/4.0/ This is an open access article under the terms of the Creative Commons Attribution License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Articles
Su, Li
Daniels, Michael J
Bayesian modeling of the covariance structure for irregular longitudinal data using the partial autocorrelation function
title Bayesian modeling of the covariance structure for irregular longitudinal data using the partial autocorrelation function
title_full Bayesian modeling of the covariance structure for irregular longitudinal data using the partial autocorrelation function
title_fullStr Bayesian modeling of the covariance structure for irregular longitudinal data using the partial autocorrelation function
title_full_unstemmed Bayesian modeling of the covariance structure for irregular longitudinal data using the partial autocorrelation function
title_short Bayesian modeling of the covariance structure for irregular longitudinal data using the partial autocorrelation function
title_sort bayesian modeling of the covariance structure for irregular longitudinal data using the partial autocorrelation function
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4420715/
https://www.ncbi.nlm.nih.gov/pubmed/25762065
http://dx.doi.org/10.1002/sim.6465
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