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Robust Medical Test Evaluation Using Flexible Bayesian Semiparametric Regression Models

机译:使用灵活的贝叶斯半参数回归模型进行可靠的医学测试评估

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The application of Bayesian methods is increasing in modern epidemiology. Although parametric Bayesian analysis has penetrated the population health sciences, flexible nonparametric Bayesian methods have received less attention. A goal in nonparametric Bayesian analysis is to estimate unknown functions (e.g., density or distribution functions) rather than scalar parameters (e.g., means or proportions). For instance, ROC curves are obtained from the distribution functions corresponding to continuous biomarker data taken from healthy and diseased populations. Standard parametric approaches to Bayesian analysis involve distributions with a small number of parameters, where the prior specification is relatively straight forward. In the nonparametric Bayesian case, the prior is placed on an infinite dimensional space of all distributions, which requires special methods. A popular approach to nonparametric Bayesian analysis that involves Polya tree prior distributions is described. We provide example code to illustrate how models that contain Polya tree priors can be fit using SAS software. The methods are used to evaluate the covariate-specific accuracy of the biomarker, soluble epidermal growth factor receptor, for discerning lung cancer cases from controls using a flexible ROC regression modeling framework. The application highlights the usefulness of flexible models over a standard parametric method for estimating ROC curves.
机译:贝叶斯方法在现代流行病学中的应用正在增加。尽管参数贝叶斯分析已经渗透到人口健康科学中,但是灵活的非参数贝叶斯方法却很少受到关注。非参数贝叶斯分析的目标是估计未知函数(例如密度或分布函数),而不是标量参数(例如均值或比例)。例如,ROC曲线是从分布函数获得的,该分布函数对应于从健康和患病人群中获取的连续生物标志物数据。贝叶斯分析的标准参数方法涉及具有少量参数的分布,而先前的规范相对简单。在非参数贝叶斯情况下,先验被置于所有分布的无穷维空间上,这需要特殊的方法。描述了一种流行的非参数贝叶斯分析方法,该方法涉及Polya树先验分布。我们提供示例代码来说明如何使用SAS软件拟合包含Polya树先验的模型。该方法用于评估生物标记物可溶性表皮生长因子受体的协变量特异性准确性,从而使用灵活的ROC回归建模框架从对照中识别出肺癌病例。该应用程序着重介绍了灵活模型的实用性,而不是用于估计ROC曲线的标准参数方法。

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