Integrating Latent Classes in the Bayesian Shared Parameter Joint Model of Longitudinal and Survival Outcomes

Cystic fibrosis is a chronic lung disease which requires frequent patient monitoring to maintain lung function over time and minimize onset of acute respiratory events known as pulmonary exacerbations. From the clinical point of view it is important to characterize the association between key biomarkers such as FEV_1 and time-to first exacerbation. Progression of the disease is heterogeneous, yielding different sub-groups in the population exhibiting distinct longitudinal profiles. It is desirable to categorize these unobserved sub-groups (latent classes) according to their distinctive trajectories. Accounting for these latent classes, in other words heterogeneity, will lead to improved estimates of association arising from the joint longitudinal-survival model. The joint model of longitudinal and survival data constitutes a popular framework to analyze such data arising from heterogeneous cohorts. In particular, two paradigms within this framework are the shared parameter joint models and the joint latent class models. The former paradigm allows one to quantify the strength of the association between the longitudinal and survival outcomes but does not allow for latent sub-populations. The latter paradigm explicitly postulates the existence of sub-populations but does not directly quantify the strength of the association. We propose to integrate latent classes in the shared parameter joint model in a fully Bayesian approach, which allows us to investigate the association between FEV_1 and time-to first exacerbation within each latent class. We, furthermore, focus on the selection of the optimal number of latent classes.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/06/2018

A Flexible Joint Longitudinal-Survival Model for Analysis of End-Stage Renal Disease Data

We propose a flexible joint longitudinal-survival framework to examine t...
research
12/03/2021

A Gaussian copula joint model for longitudinal and time-to-event data with random effects

Longitudinal and survival sub-models are two building blocks for joint m...
research
06/22/2022

A joint latent class model of longitudinal and survival data with a time-varying membership probability

Joint latent class modelling has been developed considerably in the past...
research
01/27/2019

Joint models as latent Gaussian models - not reinventing the wheel

Joint models have received increasing attention during recent years with...
research
09/07/2020

Bayesian shared-parameter models for analysing sardine fishing in the Mediterranean Sea

European sardine is experiencing an overfishing around the world. The dy...
research
09/11/2022

A bivariate functional copula joint model for longitudinal measurements and time-to-event data

A bivariate functional copula joint model, which models the repeatedly m...
research
12/05/2018

Joint latent class trees: A Tree-Based Approach to Joint Modeling of Time-to-event and Longitudinal Data

Joint modeling of longitudinal and time-to-event data provides insights ...

Please sign up or login with your details

Forgot password? Click here to reset