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A consistent NPMLE of the joint distribution function with competing risks data under the dependent masking and right-censoring model

机译:在依赖掩蔽和右删失模型下,联合分配函数的NPMLE与竞争风险数据一致

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摘要

Dinse (Biometrics, 38:417-431, 1982) provides a special type of right-censored and masked competing risks data and proposes a non-parametric maximum likelihood estimator (NPMLE) and a pseudo MLE of the joint distribution function with such data. However, their asymptotic properties have not been studied so far. Under the extention of either the conditional masking probability (CMP) model or the random partition masking (RPM) model (Yu and Li, J Nonparametr Stat 24:753-764, 2012), we show that (1) Dinse's estimators are consistent if takes on finitely many values and each point in the support set of can be observed; (2) if the failure time is continuous, the NPMLE is not uniquely determined, and the standard approach (which puts weights only on one element in each observed set) leads to an inconsistent NPMLE; (3) in general, Dinse's estimators are not consistent even under the discrete assumption; (4) we construct a consistent NPMLE. The consistency is given under a new model called dependent masking and right-censoring model. The CMP model and the RPM model are indeed special cases of the new model. We compare our estimator to Dinse's estimators through simulation and real data. Simulation study indicates that the consistent NPMLE is a good approximation to the underlying distribution for moderate sample sizes.
机译:Dinse(Biometrics,38:417-431,1982)提供了一种特殊的右删减和掩盖竞争风险数据,并提出了非参数最大似然估计器(NPMLE)和联合分布函数的伪MLE以及此类数据。但是,到目前为止,尚未研究它们的渐近性质。在条件掩盖概率(CMP)模型或随机分区掩盖(RPM)模型的影响下(Yu and Li,J Nonparametr Stat 24:753-764,2012),我们证明(1)如果满足以下条件,则Dinse的估计量是一致的具有有限的多个值,并且可以观察到支撑集中的每个点; (2)如果故障时间是连续的,则不能唯一确定NPMLE,而标准方法(仅对每个观察集中的一个元素赋权重)会导致NPMLE不一致; (3)通常,即使在离散假设下,Dinse的估计量也不是一致的; (4)构造一个一致的NPMLE。一致性是在称为依赖屏蔽和右删失模型的新模型下给出的。 CMP模型和RPM模型确实是新模型的特例。我们通过模拟和真实数据将我们的估算器与Dinse的估算器进行比较。仿真研究表明,一致的NPMLE非常适合中等样本大小的基础分布。

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