Bivariate random change point models for longitudinal outcomes.

Lili Yang, Sujuan Gao
Author Information
  1. Lili Yang: Department of Biostatistics, Indiana University School of Medicine, 410 W. 10th Street, Suite 3000, Indianapolis, IN, 46202-3002, USA. yanglili@iupui.edu

Abstract

Epidemiologic and clinical studies routinely collect longitudinal measures of multiple outcomes, including biomarker measures, cognitive functions, and clinical symptoms. These longitudinal outcomes can be used to establish the temporal order of relevant biological processes and their association with the onset of clinical symptoms. Univariate change point models have been used to model various clinical endpoints, such as CD4 count in studying the progression of HIV infection and cognitive function in the elderly. We propose to use bivariate change point models for two longitudinal outcomes with a focus on the correlation between the two change points. We consider three types of change point models in the bivariate model setting: the broken-stick model, the Bacon-Watts model, and the smooth polynomial model. We adopt a Bayesian approach using a Markov chain Monte Carlo sampling method for parameter estimation and inference. We assess the proposed methods in simulation studies and demonstrate the methodology using data from a longitudinal study of dementia.

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Grants

  1. P30 AG10133/NIA NIH HHS
  2. R01 AG019181/NIA NIH HHS
  3. R01 AG09956/NIA NIH HHS
  4. P30 AG010133/NIA NIH HHS
  5. R01 AG009956/NIA NIH HHS

MeSH Term

Aged
Bayes Theorem
Body Mass Index
Cognition
Computer Simulation
Humans
Longitudinal Studies
Markov Chains
Middle Aged
Models, Statistical
Monte Carlo Method