Computationally Efficient Estimation for the Generalized Odds Rate Mixture Cure Model with Interval-Censored Data.

TitleComputationally Efficient Estimation for the Generalized Odds Rate Mixture Cure Model with Interval-Censored Data.
Publication TypeJournal Article
Year of Publication2018
AuthorsZhou, Jie, Jiajia Zhang, and Wenbin Lu
JournalJ Comput Graph Stat
Volume27
Issue1
Pagination48-58
Date Published2018
ISSN1061-8600
Abstract

For semiparametric survival models with interval censored data and a cure fraction, it is often difficult to derive nonparametric maximum likelihood estimation due to the challenge in maximizing the complex likelihood function. In this paper, we propose a computationally efficient EM algorithm, facilitated by a gamma-poisson data augmentation, for maximum likelihood estimation in a class of generalized odds rate mixture cure (GORMC) models with interval censored data. The gamma-poisson data augmentation greatly simplifies the EM estimation and enhances the convergence speed of the EM algorithm. The empirical properties of the proposed method are examined through extensive simulation studies and compared with numerical maximum likelihood estimates. An R package "GORCure" is developed to implement the proposed method and its use is illustrated by an application to the Aerobic Center Longitudinal Study dataset.

DOI10.1080/10618600.2017.1349665
Alternate JournalJ Comput Graph Stat
Original PublicationComputationally efficient estimation for the generalized odds rate mixture cure model with interval censored data
PubMed ID29861617
PubMed Central IDPMC5978779
Grant ListP01 CA142538 / CA / NCI NIH HHS / United States
Project: