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Nonparametric association analysis of exchangeable clustered competing risks data.

机译:可交换的聚集竞争风险数据的非参数关联分析。

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摘要

SUMMARY: The work is motivated by the Cache County Study of Aging, a population-based study in Utah, in which sibship associations in dementia onset are of interest. Complications arise because only a fraction of the population ever develops dementia, with the majority dying without dementia. The application of standard dependence analyses for independently right-censored data may not be appropriate with such multivariate competing risks data, where death may violate the independent censoring assumption. Nonparametric estimators of the bivariate cumulative hazard function and the bivariate cumulative incidence function are adapted from the simple nonexchangeable bivariate setup to exchangeable clustered data, as needed with the large sibships in the Cache County Study. Time-dependent association measures are evaluated using these estimators. Large sample inferences are studied rigorously using empirical process techniques. The practical utility of the methodology is demonstrated with realistic samples both via simulations and via an application to the Cache County Study, where dementia onset clustering among siblings varies strongly by age.
机译:摘要:这项工作是由美国犹他州的一项基于人口的研究——Cache County Aging研究推动的,其中痴呆症发作中的同居关系引起了人们的关注。之所以会出现并发症,是因为只有一小部分人患有痴呆症,而大多数人死于无痴呆症。对于此类多变量竞争风险数据,将标准依赖性分析应用于独立的右删失数据可能不合适,因为这种情况下死亡可能违反了独立删失假设。双变量累积危害函数和双变量累积发生率函数的非参数估计量可从简单的不可交换的双变量设置改成可交换的聚类数据,这适用于Cache County研究中的大型同居关系。使用这些估计器评估时间相关的关联度量。使用经验过程技术对大量样本推论进行了严格研究。该方法的实用性通过仿真和通过Cache County研究的实际样本得到了证明,在该研究中,同胞之间的痴呆发作聚类随年龄变化很大。

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