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A method for analyzing clustered interval-censored data based on Cox's model

机译:一种基于Cox模型的聚类区间删失数据分析方法

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Methods for analyzing interval-censored data are well established. Unfortunately, these methods are inappropriate for the studies with correlated data. In this paper, we focus on developing a method for analyzing clustered interval-censored data. Our method is based on Cox's proportional hazard model with piecewise-constant baseline hazard function. The correlation structure of the data can be modeled by using Clayton's copula or independence model with proper adjustment in the covariance estimation. We establish estimating equations for the regression parameters and baseline hazards (and a parameter in copula) simultaneously. Simulation results confirm that the point estimators follow a multivariate normal distribution, and our proposed variance estimations are reliable. In particular, we found that the approach with independence model worked well even when the true correlation model was derived from Clayton's copula. We applied our method to a family-based cohort study of pandemic H1N1 influenza in Taiwan during 2009-2010. Using the proposed method, we investigate the impact of vaccination and family contacts on the incidence of pH1N1 influenza.
机译:很好地建立了分析间隔检查数据的方法。不幸的是,这些方法不适用于相关数据的研究。在本文中,我们专注于开发一种分析聚类间隔删节数据的方法。我们的方法基于具有分段常数基线风险函数的Cox比例风险模型。数据的相关结构可以通过使用Clayton copula或独立模型进行建模,并在协方差估计中进行适当调整。我们同时为回归参数和基线危害(以及copula中的参数)建立估计方程。仿真结果证实了点估计量服从多元正态分布,并且我们提出的方差估计值是可靠的。特别是,我们发现,即使真正的相关性模型是从Clayton的copula得出的,具有独立模型的方法也能很好地工作。我们将我们的方法应用于2009-2010年台湾大流行H1N1流感的家庭队列研究。使用提出的方法,我们调查了疫苗接种和家庭接触对pH1N1流感的发生率的影响。

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