| Literature DB >> 32066989 |
Weining Shen1, Suyu Liu2, Yong Chen3, Jing Ning2.
Abstract
We consider regression analysis of longitudinal data in the presence of outcome-dependent observation times and informative censoring. Existing approaches commonly require correct specification of the joint distribution of the longitudinal measurements, observation time process and informative censoring time under the joint modeling framework, and can be computationally cumbersome due to the complex form of the likelihood function. In view of these issues, we propose a semi-parametric joint regression model and construct a composite likelihood function based on a conditional order statistics argument. As a major feature of our proposed methods, the aforementioned joint distribution is not required to be specified and the random effect in the proposed joint model is treated as a nuisance parameter. Consequently, the derived composite likelihood bypasses the need to integrate over the random effect and offers the advantage of easy computation. We show that the resulting estimators are consistent and asymptotically normal. We use simulation studies to evaluate the finite-sample performance of the proposed method, and apply it to a study of weight loss data that motivated our investigation.Entities:
Keywords: Biased sampling; composite likelihood; informative censoring; joint modeling; time-varying covariate
Year: 2018 PMID: 32066989 PMCID: PMC7025472 DOI: 10.1111/sjos.12373
Source DB: PubMed Journal: Scand Stat Theory Appl ISSN: 0303-6898 Impact factor: 1.396