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失效时间回归中的辅助协变量数据

Auxiliary Covariate Data in Failure Time Regression

Biometrika · 1995
被引 10
ABS 4

中文导读

针对删失失效时间相对风险回归中协变量缺失的问题,提出一种估计偏似然方法,利用辅助协变量信息估计参数,无需对缺失与观测变量间的关系做参数假设,并通过模拟和渐近理论验证其有效性。

Abstract

We consider the problem of missing covariate data in the context of censored failure time relative risk regression. Auxiliary covariate data, which are considered informative about the missing data but which are not explicitly part of the relative risk regression model, may be available. Full covariate information is available for a validation set. An estimated partial likelihood method is proposed for estimating relative risk parameters. This method is an extension of the estimated likelihood regression analysis method for uncensored data (Pepe, 1992; Pepe & Fleming, 1991). A key feature of the method is that it is nonparametric with respect to the association between the missing and observed, including auxiliary, covariate components. Asymptotic distribution theory is derived for the proposed estimated partial likelihood estimator in the case where the auxiliary or mismeasured covariates are categorical. Asymptotic efficiencies are calculated for exponential failure times using an exponential relative risk model. The estimated partial likelihood estimator compares favourably with a fully parametric maximum likelihood analysis. Comparisons are also made with a standard partial likelihood analysis which ignores the incomplete observations. Important efficiency gains can be made with the estimated partial likelihood method. Small sample properties are investigated through simulation studies.

生存分析缺失数据相对风险回归估计偏似然非参数方法