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SEMIPARAMETRIC TIME TO EVENT MODELS IN THE PRESENCE OF ERROR-PRONE SELF-REPORTED OUTCOMES—WITH APPLICATION TO THE WOMEN’S HEALTH INITIATIVE

机译:存在错误报告自我报告结果的事件发生时的半参数时间-适用于女性健康计划

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摘要

The onset of several silent, chronic diseases such as diabetes can be detected only through diagnostic tests. Due to cost considerations, self-reported outcomes are routinely collected in lieu of expensive diagnostic tests in large-scale prospective investigations such as the Women’s Health Initiative. However, self-reported outcomes are subject to imperfect sensitivity and specificity. Using a semiparametric likelihood-based approach, we present time to event models to estimate the association of one or more covariates with a error-prone, self-reported outcome. We present simulation studies to assess the effect of error in self-reported outcomes with regard to bias in the estimation of the regression parameter of interest. We apply the proposed methods to prospective data from 152,830 women enrolled in the Women’s Health Initiative to evaluate the effect of statin use with the risk of incident diabetes mellitus among postmenopausal women. The current analysis is based on follow-up through 2010, with a median duration of follow-up of 12.1 years. The methods proposed in this paper are readily implemented using our freely available R software package icensmis, which is available at the Comprehensive R Archive Network (CRAN) website.
机译:只有通过诊断测试才能发现几种无声的慢性疾病(如糖尿病)的发作。出于成本考虑,在诸如妇女健康倡议这样的大规模前瞻性调查中,通常会收集自我报告的结果,以代替昂贵的诊断测试。但是,自我报告的结果易受敏感性和特异性的影响。使用基于半参数的似然方法,我们介绍了事件发生时间模型,以估计一个或多个协变量与容易出错的自我报告结果的关联。我们目前进行模拟研究,以评估自我报告结果中的误差对相关回归参数的估计偏差的影响。我们将拟议的方法应用于来自152830名妇女健康计划中的女性的前瞻性数据,以评估他汀类药物的使用对绝经后妇女发生糖尿病风险的影响。当前的分析基于对2010年的随访,中位随访时间为12.1年。本文中提出的方法可以使用我们的免费R软件包icensmis轻松实现,该软件包可从综合R存档网络(CRAN)网站上获得。

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