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ROC analysis for multiple markers with tree-based classification

机译:基于树分类的多个标记的ROC分析

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Multiple biomarkers are frequently observed or collected for detecting or understanding a disease. The research interest of this article is to extend tools of receiver operating characteristic (ROC) analysis from univariate marker setting to multivariate marker setting for evaluating predictive accuracy of biomarkers using a tree-based classification rule. Using an arbitrarily combined and-or classifier, an ROC function together with a weighted ROC function (WROC) and their conjugate counterparts are introduced for examining the performance of multivariate markers. Specific features of the ROC and WROC functions and other related statistics are discussed in comparison with those familiar properties for univariate marker. Nonparametric methods are developed for estimating the ROC and WROC functions, and area under curve and concordance probability. With emphasis on population average performance of markers, the proposed procedures and inferential results are useful for evaluating marker predictability based on multivariate marker measurements with different choices of markers, and for evaluating different and-or combinations in classifiers.
机译:经常观察或收集多种生物标志物以检测或了解疾病。本文的研究兴趣是将接收器工作特征(ROC)分析工具从单变量标记设置扩展到多变量标记设置,以使用基于树的分类规则评估生物标记的预测准确性。使用任意组合和/或分类器,将ROC函数与加权ROC函数(WROC)及其共轭对应项一起引入,以检查多元标记的性能。与单变量标记的那些熟悉的属性相比较,讨论了ROC和WROC函数的特定功能以及其他相关统计数据。开发了非参数方法来估计ROC和WROC函数以及曲线下的面积和一致性概率。着重于标记的总体平均性能,所提出的程序和推论结果对于基于具有不同标记选择的多变量标记测量来评估标记可预测性,以及评估分类器中不同和/或组合有用。

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