Literature DB >> 14601773

Latent transition regression for mixed outcomes.

Diana L Miglioretti1.   

Abstract

Health status is a complex outcome, often characterized by multiple measures. When assessing changes in health status over time, multiple measures are typically collected longitudinally. Analytic challenges posed by these multivariate longitudinal data are further complicated when the outcomes are combinations of continuous, categorical, and count data. To address these challenges, we propose a fully Bayesian latent transition regression approach for jointly analyzing a mixture of longitudinal outcomes from any distribution. Health status is assumed to be a categorical latent variable, and the multiple outcomes are treated as surrogate measures of the latent health state, observed with error. Using this approach, both baseline latent health state prevalences and the probabilities of transitioning between the health states over time are modeled as functions of covariates. The observed outcomes are related to the latent health states through regression models that include subject-specific effects to account for residual correlation among repeated measures over time, and covariate effects to account for differential measurement of the latent health states. We illustrate our approach with data from a longitudinal study of back pain.

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Year:  2003        PMID: 14601773     DOI: 10.1111/1541-0420.00082

Source DB:  PubMed          Journal:  Biometrics        ISSN: 0006-341X            Impact factor:   2.571


  4 in total

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Authors:  Yue Zhang; Kiros Berhane
Journal:  J Appl Stat       Date:  2015-10-02       Impact factor: 1.404

3.  A dynamic trajectory class model for intensive longitudinal categorical outcome.

Authors:  Haiqun Lin; Ling Han; Peter N Peduzzi; Terrence E Murphy; Thomas M Gill; Heather G Allore
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4.  Bayesian measurement-error-driven hidden Markov regression model for calibrating the effect of covariates on multistate outcomes: Application to androgenetic alopecia.

Authors:  Amy Ming-Fang Yen; Hsiu-Hsi Chen
Journal:  Stat Med       Date:  2018-05-21       Impact factor: 2.373

  4 in total

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