| Literature DB >> 24489449 |
Bin Nan1, Jon A Wellner2.
Abstract
Case-cohort design, an outcome-dependent sampling design for censored survival data, is increasingly used in biomedical research. The development of asymptotic theory for a case-cohort design in the current literature primarily relies on counting process stochastic integrals. Such an approach, however, is rather limited and lacks theoretical justification for outcome-dependent weighted methods due to non-predictability. Instead of stochastic integrals, we derive asymptotic properties for case-cohort studies based on a general Z-estimation theory for semi-parametric models with bundled parameters using empirical process theory. Both the Cox model and the additive hazards model with time-dependent covariates are considered.Entities:
Keywords: Additive hazards model; Cox model; Donsker class; Glivenko-Cantelli class; Z-estimation; bundled parameters; case-cohort study; empirical process; missing covariates; semiparametric estimation function
Year: 2013 PMID: 24489449 PMCID: PMC3904394
Source DB: PubMed Journal: Stat Sin ISSN: 1017-0405 Impact factor: 1.261