A random-effects Markov transition model for Poisson-distributed repeated measures with non-ignorable missing values.

Jinhui Li, Xiaowei Yang, Yingnian Wu, Steven Shoptaw
Author Information
  1. Jinhui Li: UCLA-Department of Statistics, PO Box 951554, Los Angeles, CA 90095-1554, USA.

Abstract

In biomedical research with longitudinal designs, missing values due to intermittent non-response or premature withdrawal are usually 'non-ignorable' in the sense that unobserved values are related to the patterns of missingness. By drawing the framework of a shared-parameter mechanism, the process yielding the repeated count measures and the process yielding missing values can be modelled separately, conditionally on a group of shared parameters. For chronic diseases, Markov transition models can be used to study the transitional features of the pathologic processes. In this paper, Markov Chain Monte Carlo algorithms are developed to fit a random-effects Markov transition model for incomplete count repeated measures, within which random effects are shared by the counting process and the missing-data mechanism. Assuming a Poisson distribution for the count measures, the transition probabilities are estimated using a Poisson regression model. The missingness mechanism is modelled with a multinomial-logit regression to calculate the transition probabilities of the missingness indicators. The method is demonstrated using both simulated data sets and a practical data set from a smoking cessation clinical trial.

Grants

  1. N44 DA35513/NIDA NIH HHS
  2. P50 DA18185/NIDA NIH HHS
  3. R01 DA09992/NIDA NIH HHS
  4. R03 DA016721/NIDA NIH HHS

MeSH Term

Algorithms
Behavior Therapy
Computer Simulation
Data Interpretation, Statistical
Humans
Longitudinal Studies
Markov Chains
Nicotine
Poisson Distribution
Randomized Controlled Trials as Topic
Smoking Cessation

Chemicals

Nicotine

Word Cloud

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