Joint modeling of multivariate longitudinal measurements and survival data with applications to Parkinson's disease.
In many clinical trials, studying neurodegenerative diseases including Parkinson's disease (PD), multiple longitudinal outcomes are collected in order to fully explore the multidimensional impairment caused by these diseases. The follow-up of some patients can be stopped by some outcome-dependent terminal event, e.g. death and dropout. In this article, we develop a joint model that consists of a multilevel item response theory (MLIRT) model for the multiple longitudinal outcomes, and a Cox's proportional hazard model with piecewise constant baseline hazards for the event time data. Shared random effects are used to link together two models. The model inference is conducted using a Bayesian framework via Markov Chain Monte Carlo simulation implemented in BUGS language. Our proposed model is evaluated by simulation studies and is applied to the DATATOP study, a motivating clinical trial assessing the effect of tocopherol on PD among patients with early PD.
Duke Scholars
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Related Subject Headings
- Tocopherols
- Statistics & Probability
- Parkinson Disease
- Multivariate Analysis
- Monte Carlo Method
- Markov Chains
- Longitudinal Studies
- Humans
- Bayes Theorem
- 4905 Statistics
Citation
Published In
DOI
EISSN
Publication Date
Volume
Issue
Start / End Page
Location
Related Subject Headings
- Tocopherols
- Statistics & Probability
- Parkinson Disease
- Multivariate Analysis
- Monte Carlo Method
- Markov Chains
- Longitudinal Studies
- Humans
- Bayes Theorem
- 4905 Statistics