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Sieve maximum likelihood estimation for the proportional hazards model under informative censoring

机译:信息审查下的比例危险模型的最大似然估计

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Failure time data often occur in many areas such as clinical trails, economics and medical follow-up studies, and a great deal of literature has been developed for their analysis when the censoring is noninformative. A number of methods have also been developed for the situation where the censoring may be informative. However, most of the existing procedures for the latter case apply only to limited situations or may not be stable or robust. In this paper, we present a copula model approach for regression analysis of right-censored failure time data in the presence of informative censoring. In the method, the copula model is used to describe the dependence between the failure time of interest and censoring time and for estimation, a sieve maximum likelihood estimation procedure is developed. In addition, the asymptotic properties of the proposed estimators are established and the simulation study indicates that the proposed method seems to work well in practice. An illustrative example is also provided. (C) 2017 Elsevier B.V. All rights reserved.
机译:失败时间数据经常发生在许多领域,例如临床小径,经济学和医疗后续研究,并且当审查是非信息时,已经开发出大量的文学来分析。还制定了许多方法,用于审查可能是信息性的。但是,后者案件的大多数现有程序仅适用于有限的情况或可能不稳定或强劲。在本文中,我们介绍了在线审查的存在右审查的失效时间数据的回归分析的Copula模型方法。在该方法中,Copula模型用于描述感兴趣的失败时间与抗察觉时间和估计之间的依赖性,开发了筛分最大似然估计过程。此外,建立了所提出的估计人的渐近性质,仿真研究表明,该方法似乎在实践中良好工作。还提供了说明性示例。 (c)2017 Elsevier B.v.保留所有权利。

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