| Literature DB >> 27540275 |
Wei Xiao1, Wenbin Lu1, Hao Helen Zhang1.
Abstract
Time-varying coefficient Cox model has been widely studied and popularly used in survival data analysis due to its flexibility for modeling covariate effects. It is of great practical interest to accurately identify the structure of covariate effects in a time-varying coefficient Cox model, i.e. covariates with null effect, constant effect and truly time-varying effect, and estimate the corresponding regression coefficients. Combining the ideas of local polynomial smoothing and group nonnegative garrote, we develop a new penalization approach to achieve such goals. Our method is able to identify the underlying true model structure with probability tending to one and simultaneously estimate the time-varying coefficients consistently. The asymptotic normalities of the resulting estimators are also established. We demonstrate the performance of our method using simulations and an application to the primary biliary cirrhosis data.Entities:
Keywords: Group nonnegative garrote; local polynomial smoothing; model selection; time-varying coefficient Cox model
Year: 2016 PMID: 27540275 PMCID: PMC4987133 DOI: 10.5705/ss.2013.076
Source DB: PubMed Journal: Stat Sin ISSN: 1017-0405 Impact factor: 1.261