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Modelling risk when binary outcomes are subject to error.

机译:当二元结果容易出错时,对风险进行建模。

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We present methods for binomial regression when the outcome is determined using the results of a single diagnostic test with imperfect sensitivity and specificity. We present our model, illustrate it with the analysis of real data, and provide an example of WinBUGS program code for performing such an analysis. Conditional means priors are used in order to allow for inclusion of prior data and expert opinion in the estimation of odds ratios, probabilities, risk ratios, risk differences, and diagnostic test sensitivity and specificity. A simple method of obtaining Bayes factors for link selection is presented. Methods are illustrated and compared with Bayesian ordinary binary regression using data from a study of the effectiveness of a smoking cessation program among pregnant women. Regression coefficient estimates are shown to change noticeably when expert prior knowledge and imperfect sensitivity and specificity are incorporated into the model.
机译:当使用具有不完善的敏感性和特异性的单个诊断测试的结果确定结果时,我们提出了二项式回归的方法。我们介绍了我们的模型,并通过对实际数据的分析进行了说明,并提供了用于执行此类分析的WinBUGS程序代码示例。使用条件均值先验是为了在评估优势比,概率,风险比,风险差异以及诊断测试的敏感性和特异性时考虑先验数据和专家意见。提出了一种获得贝叶斯因子以进行链路选择的简单方法。通过对孕妇戒烟计划有效性的研究数据,对方法进行了说明并与贝叶斯普通二元回归进行了比较。当将专家的先验知识以及不完善的敏感性和特异性纳入模型后,回归系数估计值将发生显着变化。

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