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Improving the biomarker diagnostic capacity via functional transformations

机译:通过功能转换改善生物标志物诊断能力

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The use of the area under the receiver-operating characteristic, ROC, curve (AUC) as an index of diagnostic accuracy is overwhelming in fields such as biomedical science and machine learning. It seems that a larger AUC value has become synonymous with a better performance. The functional transformation of the marker values has been proposed in the specialized literature as a procedure for increasing the AUC and therefore the diagnostic accuracy. However, the classification process is based on some regions (classification subsets) which support the decision made; one subject is classified as positive if its marker is within this region and classified as negative otherwise. In this paper we study the capacity of improving the classification performance of univariate biomarkers via functional transformations and the impact of this transformation on the final classification regions based on a real-world dataset. Particularly, we consider the problem of determining the gender of a subject based on the Mode frequency of his/her voice. The shape of the cumulative distribution function of this characteristic in both the male and the female groups makes the resulting classification problem useful for illustrating the differences between having useful diagnostic rules and obtaining an optimal AUC value. Our point is that improving the AUC by means of a functional transformation can produce classification regions with no practical interpretability. We propose to improve the classification accuracy by making the selection of the classification subsets more flexible while preserving their interpretability. Besides, we provide different graphical approximations which allow us a better understanding of the classification problem.
机译:在接收器操作特性,ROC,曲线(AUC)下的使用作为诊断准确性指标是在诸如生物医学科学和机器学习等领域的压倒性。似乎更大的AUC值已成为更好的性能的代名词。在专业文献中提出了标记值的功能转换,作为增加AUC的程序,因此是诊断准确性。但是,分类过程基于支持所做决策的一些区域(分类子集);如果其标记在该区域内并归类为负数,则一个主题被归类为正。在本文中,我们研究了通过功能转换提高单变量生物标志物的分类性能的能力和基于现实世界数据集的最终分类区域的影响。特别是,我们认为基于他/她的声音的模式频率确定主题的性别问题。这种特征在男性和女性组中的累积分布函数的形状使得产生的分类问题用于说明具有有用的诊断规则和获得最佳AUC值之间的差异。我们的观点是通过功能转换改进AUC可以产生没有实际解释性的分类区域。我们建议通过在保留其解释性时更加灵活地选择分类子集来提高分类准确性。此外,我们提供了不同的图形近似,使我们更好地了解分类问题。

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