Li Zhiguo, Owzar Kouros
Department of Biostatistics and Bioinformatics, Duke University.
Scand Stat Theory Appl. 2016 Jun;43(2):476-486. doi: 10.1111/sjos.12186. Epub 2015 Nov 23.
In some applications, the failure time of interest is the time from an originating event to a failure event, while both event times are interval censored. We propose fitting Cox proportional hazards models to this type of data using a spline-based sieve maximum marginal likelihood, where the time to the originating event is integrated out in the empirical likelihood function of the failure time of interest. This greatly reduces the complexity of the objective function compared with the fully semiparametric likelihood. The dependence of the time of interest on time to the originating event is induced by including the latter as a covariate in the proportional hazards model for the failure time of interest. The use of splines results in a higher rate of convergence of the estimator of the baseline hazard function compared with the usual nonparametric estimator. The computation of the estimator is facilitated by a multiple imputation approach. Asymptotic theory is established and a simulation study is conducted to assess its finite sample performance. It is also applied to analyzing a real data set on AIDS incubation time.
在某些应用中,感兴趣的失效时间是从起始事件到失效事件的时间,而两个事件时间均为区间删失。我们建议使用基于样条的筛分最大边际似然法对这类数据拟合Cox比例风险模型,其中在感兴趣的失效时间的经验似然函数中对起始事件的时间进行积分。与完全半参数似然法相比,这极大地降低了目标函数的复杂性。通过将起始事件的时间作为感兴趣的失效时间的比例风险模型中的协变量,引入了感兴趣的时间对起始事件时间的依赖性。与通常的非参数估计量相比,样条的使用导致基线风险函数估计量的收敛速度更高。通过多重填补方法简化了估计量的计算。建立了渐近理论,并进行了模拟研究以评估其有限样本性能。它还被应用于分析一个关于艾滋病潜伏期的真实数据集。