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Bayesian analyses of longitudinal binary data using Markov regression models of unknown order.

A Erkanli1, R Soyer, A Angold

  • 1Center for Developmental Epidemiology, Department of Psychiatry and Behavioural Sciences, Duke University Medical Center, Durham, NC 27710, USA. al@psych.mc.duke.edu

Statistics in Medicine
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Summary
This summary is machine-generated.

This study introduces novel non-homogeneous Markov regression models to analyze longitudinal binary data, effectively assessing autoregressive dependence and substance use progression in children.

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Area of Science:

  • Statistics
  • Biostatistics
  • Longitudinal Data Analysis

Background:

  • Longitudinal binary data analysis requires methods to model time-varying dependencies.
  • Understanding autoregressive dependence is crucial for accurately interpreting such data.
  • Previous models may not adequately capture evolving transition probabilities over time.

Purpose of the Study:

  • To develop and present non-homogeneous Markov regression models of unknown order.
  • To assess the duration of autoregressive dependence in longitudinal binary data.
  • To apply these models to understand substance use progression in a cohort of American Indian children.

Main Methods:

  • Utilized logistic regression to model time-evolving transition probabilities based on past outcomes and covariates.
  • Treated unknown initial values of the binary process as latent variables.
  • Employed a Bayesian variable selection approach with Gibbs sampling for estimating unknown initial values, model parameters, and transition order.
  • Implemented the deviance information criterion (DIC) for comparison in determining transition order.

Main Results:

  • The proposed Bayesian variable selection approach effectively estimates model parameters and transition orders for longitudinal binary data.
  • The models successfully captured the dynamics of substance use progression in the studied cohort.
  • Demonstrated the utility of non-homogeneous Markov models in assessing autoregressive dependence.

Conclusions:

  • Non-homogeneous Markov regression models offer a robust framework for analyzing longitudinal binary data with time-varying dependencies.
  • The Bayesian variable selection method provides an effective approach for model order determination.
  • The findings have implications for understanding developmental trajectories and informing interventions, particularly in public health research.