Causal mediation analysis for longitudinal and survival data in continuous time using Bayesian non-parametric joint models

Michael Daniels Co-Author
University of Florida
 
Juned Siddique Co-Author
Northwestern University
 
Saurabh Bhandari Speaker
University of Florida
 
Wednesday, Aug 6: 3:05 PM - 3:25 PM
Topic-Contributed Paper Session 
Music City Center 
Observational cohort data is an important source of information for understanding the causal effects of treatments on survival and the degree to which these effects are mediated through changes in disease-related risk factors. However, these analyses are often complicated by irregular data collection intervals and the presence of longitudinal confounders and mediators. We propose a causal mediation framework that jointly models longitudinal exposures, confounders, mediators, and time-to-event outcomes as continuous functions of age. This framework for longitudinal covariate trajectories enables statistical inference even at ages where the subject's covariate measurements are unavailable. The observed data distribution in our framework is modeled using an enriched Dirichlet process mixture (EDPM) model. Using data from the Atherosclerosis Risk in Communities cohort study, we apply our methods to assess how medication—prescribed to target cardiovascular disease (CVD) risk factors—affects the time-to-CVD death.

Keywords

causal mediation

enriched Dirichlet process mixture (EDPM) model

jointly model longitudinal and survival data