Using a Bayesian latent growth curve model to identify trajectories of positive affect and negative events following myocardial infarction

Citation
R. Elliott, Michael et al., Using a Bayesian latent growth curve model to identify trajectories of positive affect and negative events following myocardial infarction, Biostatistics (Oxford. Print) , 6(1), 2005, pp. 119-143
ISSN journal
14654644
Volume
6
Issue
1
Year of publication
2005
Pages
119 - 143
Database
ACNP
SICI code
Abstract
Positive and negative affect data are often collected over time in psychiatric care settings, yet no generally accepted means are available to relate these data to useful diagnoses or treatments.Latent class analysis attempts data reduction by classifying subjects into one of K unobserved classes based on observed data.Latent class models have recently been extended to accommodate longitudinally observed data.We extend these approaches in a Bayesian framework to accommodate trajectories of both continuous and discrete data.We consider whether latent class models might be used to distinguish patients on the basis of trajectories of observed affect scores, reported events, and presence or absence of clinical depression.