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指定敏感性分析的暴露分类参数:家族乳腺癌史。

Specifying exposure classification parameters for sensitivity analysis: family breast cancer history.

机构信息

Department of Pediatrics, University of Minnesota, Minneapolis, MN, USA;

出版信息

Clin Epidemiol. 2009 Aug 9;1:109-17. doi: 10.2147/clep.s5755.

Abstract

One of the challenges to implementing sensitivity analysis for exposure misclassification is the process of specifying the classification proportions (eg, sensitivity and specificity). The specification of these assignments is guided by three sources of information: estimates from validation studies, expert judgment, and numerical constraints given the data. The purpose of this teaching paper is to describe the process of using validation data and expert judgment to adjust a breast cancer odds ratio for misclassification of family breast cancer history. The parameterization of various point estimates and prior distributions for sensitivity and specificity were guided by external validation data and expert judgment. We used both nonprobabilistic and probabilistic sensitivity analyses to investigate the dependence of the odds ratio estimate on the classification error. With our assumptions, a wider range of odds ratios adjusted for family breast cancer history misclassification resulted than portrayed in the conventional frequentist confidence interval.

摘要

实施暴露分类错误敏感性分析的挑战之一是指定分类比例(例如,敏感性和特异性)的过程。这些任务的指定是由以下三个信息来源指导的:验证研究的估计值、专家判断和给定数据的数值约束。本文的目的是描述使用验证数据和专家判断来调整乳腺癌家族史分类错误的乳腺癌比值比的过程。敏感性和特异性的各种点估计和先验分布的参数化是由外部验证数据和专家判断指导的。我们使用了非概率和概率敏感性分析来研究比值比估计值对分类错误的依赖性。根据我们的假设,经家庭乳腺癌史分类错误调整后的比值比范围比传统的频率置信区间所描述的要广。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b1d2/2943170/34c53c193131/clep-1-109f1.jpg

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