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A Semi-stationary Copula Model Approach for Bivariate Survival Data with Interval Sampling

机译:具有间隔采样的双变量生存数据的半平稳Copula模型方法

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摘要

In disease registries, bivariate survival data are typically collected under interval sampling. It refers to a situation when entry into a registry is at the time of the first failure event (i.e., HIV infection) within a calendar time window. For all the cases in the registry, time of the initiating event (i.e., birth) is retrospectively identified, and subsequently the second failure event (i.e., death) is observed during follow-up. In this paper we discuss how interval sampling introduces bias into the data. Given the sampling design that the first event occurs within a specific time interval, the first failure time is doubly truncated, and the second failure time is possibly informatively right censored. Consider semi-stationary condition that the disease progression is independent of when the initiating event occurs. Under this condition, this paper adopts copula models to assess association between the bivariate survival times with interval sampling. We first obtain bias-corrected estimators of marginal survival functions, and estimate association parameter of copula model by a two-stage procedure. In the second part of the work, covariates are incorporated into the survival distributions via the proportional hazards models. Inference of the association measure in copula model is established, where the association is allowed to depend on covariates. Asymptotic properties of proposed estimators are established, and finite sample performance is evaluated by simulation studies. The method is applied to a community-based AIDS study in Rakai to investigate dependence between age at infection and residual lifetime without and with adjustment for HIV subtype.
机译:在疾病登记处,通常在间隔采样下收集双变量生存数据。它是指在日历时间段内第一次失败事件(即HIV感染)发生时登录注册表的情况。对于注册表中的所有情况,回顾性地确定起始事件(即出生)的时间,随后在随访期间观察到第二次失败事件(即死亡)。在本文中,我们讨论了间隔采样如何将偏差引入数据中。给定采样设计,第一个事件在特定的时间间隔内发生,则第一个故障时间会被双重截断,而第二个故障时间可能会得到有意义的正确检查。考虑半静止状态,该疾病的发展与起始事件的发生时间无关。在这种情况下,本文采用copula模型来评估双变量生存时间与间隔采样之间的关联。我们首先获得边缘生存函数的偏差校正估计量,并通过两步过程估计copula模型的关联参数。在工作的第二部分中,通过比例风险模型将协变量纳入生存分布。建立了关联模型中关联度量的推论,其中关联被允许依赖于协变量。建立拟议估计量的渐近性质,并通过仿真研究评估有限样本性能。该方法被应用于拉凯的一项基于社区的艾滋病研究,以研究感染年龄与剩余寿命之间的依赖关系,而无需调整艾滋病毒亚型。

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