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Non-parametric estimation of gap time survival functions for ordered multivariate failure time data.

机译:有序多元失效时间数据的间隙时间生存函数的非参数估计。

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Times between sequentially ordered events (gap times) are often of interest in biomedical studies. For example, in a cancer study, the gap times from incidence-to-remission and remission-to-recurrence may be examined. Such data are usually subject to right censoring, and within-subject failure times are generally not independent. Statistical challenges in the analysis of the second and subsequent gap times include induced dependent censoring and non-identifiability of the marginal distributions. We propose a non-parametric method for constructing one-sample estimators of conditional gap-time specific survival functions. The estimators are uniformly consistent and, upon standardization, converge weakly to a zero-mean Gaussian process, with a covariance function which can be consistently estimated. Simulation studies reveal that the asymptotic approximations are appropriate for finite samples. Methods for confidence bands are provided. The proposed methods are illustrated on a renal failure data set, where the probabilities of transplant wait-listing and kidney transplantation are of interest.
机译:生物医学研究通常会关注顺序事件之间的时间(间隔时间)。例如,在一项癌症研究中,可以检查从发病到缓解和缓解到复发的间隔时间。此类数据通常受权限检查,并且对象内故障时间通常不是独立的。在分析第二个及以后的间隔时间时,统计上的挑战包括诱发的依赖检查和边缘分布的不可识别性。我们提出了一种非参数方法来构造条件间隔时间特定生存函数的一样本估计量。估计量是一致一致的,并且在标准化后,会微弱地收敛到零均值高斯过程,并且具有可以一致估计的协方差函数。仿真研究表明,渐近近似适用于有限样本。提供了置信带的方法。在肾衰竭数据集上说明了所提出的方法,其中移植等待列表和肾移植的可能性受到关注。

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