| Literature DB >> 36213777 |
Jung Yeon Park1, Melanie M Wall2,3, Irini Moustaki4, Arnold H Grossman5.
Abstract
The paper proposes a joint mixture model to model non-ignorable drop-out in longitudinal cohort studies of mental health outcomes. The model combines a (non)-linear growth curve model for the time-dependent outcomes and a discrete-time survival model for the drop-out with random effects shared by the two sub-models. The mixture part of the model takes into account population heterogeneity by accounting for latent subgroups of the shared effects that may lead to different patterns for the growth and the drop-out tendency. A simulation study shows that the joint mixture model provides greater precision in estimating the average slope and covariance matrix of random effects. We illustrate its benefits with data from a longitudinal cohort study that characterizes depression symptoms over time yet is hindered by non-trivial participant drop-out.Entities:
Keywords: Latent growth curve; MNAR drop-out; finite mixture model; mental health; survival analysis
Year: 2021 PMID: 36213777 PMCID: PMC9542546 DOI: 10.1080/02664763.2021.1945000
Source DB: PubMed Journal: J Appl Stat ISSN: 0266-4763 Impact factor: 1.416