Zhang Xinyan, Sun Jianguo
Int J Biostat. 2013 Aug 13;9(2):205-14. doi: 10.1515/ijb-2012-0047.
Clustered interval-censored failure time data are commonly encountered in many medical settings. In such situations, one issue that often arises in practice is that the cluster size is related to the risk for the outcome of interest. It is well-known that ignoring the informativeness of the cluster size can result in biased parameter estimates. In this article, we consider regression analysis of clustered interval-censored data with informative cluster size with the focus on semiparametric methods. For the problem, two approaches are presented and investigated. One is a within-cluster resampling procedure and the other is a weighted estimating equation approach. Unlike previously published methods, the new approaches take into account cluster sizes and heterogeneous correlation structures without imposing strong parametric assumptions. A simulation experiment is carried out to evaluate the performance of the proposed approaches and indicates that they perform well for practical situations. The approaches are applied to a lymphatic filariasis study that motivated this study.
聚类区间删失失效时间数据在许多医学场景中普遍存在。在这种情况下,实际中经常出现的一个问题是聚类大小与感兴趣的结局风险相关。众所周知,忽略聚类大小的信息性会导致参数估计有偏差。在本文中,我们考虑对具有信息性聚类大小的聚类区间删失数据进行回归分析,重点是半参数方法。针对该问题,提出并研究了两种方法。一种是聚类内重采样程序,另一种是加权估计方程方法。与先前发表的方法不同,新方法考虑了聚类大小和异质相关结构,而无需施加强参数假设。进行了一项模拟实验来评估所提出方法的性能,结果表明它们在实际情况下表现良好。这些方法应用于一项激发本研究的淋巴丝虫病研究。