Department of Statistical Sciences, University of Padua, Padua, Italy.
Cancer Rep (Hoboken). 2020 Aug;3(4):e1206. doi: 10.1002/cnr2.1206. Epub 2019 Dec 10.
With three ordered diagnostic categories, the volume under the receiver operating characteristic (ROC) surface, which is the extension of the area under the ROC curve for binary diagnostic outcomes, is the most commonly used measure for the overall diagnostic accuracy. For a continuous-scale diagnostic test, classical likelihood-based inference about the area under the ROC curve can be inaccurate, in particular when the sample size is small, and higher order inferential procedures have been proposed.
The goal of this paper is to illustrate higher order likelihood procedures for parametric inference in small samples, which provide accurate point estimates and confidence intervals for the volume under the ROC surface.
Simulation studies are performed in order to illustrate the accuracy of the proposed methodology, and two applications to real data are discussed.
We show that likelihood modern inference provide refinements to classical inferential results. Furthermore, the freely available R package likelihoodAsy makes now their use almost automatic.
Modern likelihood inference based on higher-order asymptotic methods for the area under the ROC surface provide refinements to classical inferential results. A possible limitation of higher-order asymptotic methods for practical use is that their software implementation can be awkward. Nevertheless, use of the freely available R package likelihoodAsy makes such implementation straightforward.
有三个有序的诊断类别,接收器操作特征(ROC)曲面下的面积,它是二进制诊断结果的 ROC 曲线下面积的扩展,是最常用的整体诊断准确性度量。对于连续尺度的诊断测试,基于经典似然的 ROC 曲线下面积推断可能不准确,特别是在样本量较小时,已经提出了更高阶的推断程序。
本文的目的是说明用于小样本参数推断的高阶似然程序,这些程序为 ROC 曲面下的面积提供了准确的点估计和置信区间。
为了说明拟议方法的准确性,进行了模拟研究,并讨论了两个实际数据的应用。
我们表明,似然现代推断为经典推断结果提供了改进。此外,免费的 R 包 likelihoodAsy 现在使其使用几乎自动。
基于 ROC 曲面下面积的高阶渐近方法的现代似然推断为经典推断结果提供了改进。高阶渐近方法在实际使用中的一个可能限制是其软件实现可能很棘手。然而,使用免费的 R 包 likelihoodAsy 使得这种实现变得简单。