English

Modeling semi-competing risks data as a longitudinal bivariate process

Methodology 2020-07-09 v1 Applications

Abstract

The Adult Changes in Thought (ACT) study is a long-running prospective study of incident all-cause dementia and Alzheimer's disease (AD). As the cohort ages, death (a terminal event) is a prominent competing risk for AD (a non-terminal event), although the reverse is not the case. As such, analyses of data from ACT can be placed within the semi-competing risks framework. Central to semi-competing risks, and in contrast to standard competing risks, is that one can learn about the dependence structure between the two events. To-date, however, most methods for semi-competing risks treat dependence as a nuisance and not a potential source of new clinical knowledge. We propose a novel regression-based framework that views the two time-to-event outcomes through the lens of a longitudinal bivariate process on a partition of the time scale. A key innovation of the framework is that dependence is represented in two distinct forms, local\textit{local} and global\textit{global} dependence, both of which have intuitive clinical interpretations. Estimation and inference are performed via penalized maximum likelihood, and can accommodate right censoring, left truncation and time-varying covariates. The framework is used to investigate the role of gender and having \ge1 APOE-ϵ4\epsilon4 allele on the joint risk of AD and death.

Keywords

Cite

@article{arxiv.2007.04037,
  title  = {Modeling semi-competing risks data as a longitudinal bivariate process},
  author = {Daniel Nevo and Deborah Blacker and Eric B. Larson and Sebastien Haneuse},
  journal= {arXiv preprint arXiv:2007.04037},
  year   = {2020}
}

Comments

36 pages, 3 figures