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Use of likelihood ratios for comparisons of binary diagnostic tests: Underlying ROC curves

机译:将似然比用于二元诊断测试的比较:底层ROC曲线

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摘要

>Purpose: When comparing binary test results from two diagnostic systems, superiority in both “sensitivity” and “specificity” also implies differences in all conventional summary indices and locally in the underlying receiver operating characteristics (ROC) curves. However, when one of the two binary tests has higher sensitivity and lower specificity (or vice versa), comparisons of their performance levels are nontrivial and the use of different summary indices may lead to contradictory conclusions. A frequently used approach that is free of subjectivity associated with summary indices is based on the comparison of the underlying ROC curves that requires the collection of rating data using multicategory scales, whether natural or experimentally imposed. However, data for reliable estimation of ROC curves are frequently unavailable. The purpose of this article is to develop an approach of using “diagnostic likelihood ratios,” namely, likelihood ratios of “positive” or “negative” responses, to make simple inferences regarding the underlying ROC curves and associated areas in the absence of reliable rating data or regarding the relative binary characteristics, when these are of primary interest.>Methods: For inferences related to underlying curves, the authors exploit the assumption of concavity of the true underlying ROC curve to describe conditions under which these curves have to be different and under which the curves have different areas. For scenarios when the binary characteristics are of primary interest, the authors use characteristics of “chance performance” to demonstrate that the derived conditions provide strong evidence of superiority of one binary test as compared to another. By relating these derived conditions to hypotheses about the true likelihood ratios of two binary diagnostic tests being compared, the authors enable a straightforward statistical procedure for the corresponding inferences.>Results: The authors derived simple algebraic and graphical methods for describing the conditions for superiority of one of two diagnostic tests with respect to their binary characteristics, the underlying ROC curves, or the areas under the curves. The graphical regions are useful for identifying potential differences between two systems, which then have to be tested statistically. The simple statistical tests can be performed with well known methods for comparison of diagnostic likelihood ratios. The developed approach offers a solution for some of the more difficult to analyze scenarios, where diagnostic tests do not demonstrate concordant differences in terms of both sensitivity and specificity. In addition, the resulting inferences do not contradict the conclusions that can be obtained using conventional and reasonably defined summary indices.>Conclusions: When binary diagnostic tests are of primary interest, the proposed approach offers an objective and powerful method for comparing two binary diagnostic tests. The significant advantage of this method is that it enables objective analyses when one test has higher sensitivity but lower specificity, while ensuring agreement with study conclusions based on other reasonable and widely acceptable summary indices. For truly multicategory diagnostic tests, the proposed method can help in concluding inferiority of one of the diagnostic tests based on binary data, thereby potentially saving the need for conducting a more expensive multicategory ROC study.
机译:>目的:比较两个诊断系统的二进制测试结果时,“灵敏度”和“特异性”的优越性还意味着所有常规汇总指标以及潜在的接收器工作特性(ROC)曲线都存在差异。但是,当两个二元测试之一具有较高的灵敏度和较低的特异性(反之亦然)时,对其性能水平进行比较是不平凡的,使用不同的摘要指数可能会得出矛盾的结论。一种不受汇总指标影响的主观性的常用方法是基于基本ROC曲线的比较,该比较需要使用多类别量表(无论是自然的还是实验的)来收集评级数据。但是,经常无法获得用于可靠估计ROC曲线的数据。本文的目的是开发一种使用“诊断似然比”(即“阳性”或“阴性”响应的似然比)的方法,以在没有可靠评分的情况下简单地推断潜在的ROC曲线和相关区域>方法:对于与基础曲线有关的推论,作者利用真实的基础ROC曲线凹度的假设来描述这些条件下的条件。曲线必须不同,并且曲线下的面积不同。对于以二进制特征为主要关注点的场景,作者使用“机会性能”特征来证明推导的条件提供了一种强有力的证据,证明一种二进制测试优于另一种二进制测试。通过将这些导出的条件与关于两个二进制诊断测试的真实似然比的假设相关联,作者为相应的推论提供了一种简单的统计程序。>结果:作者得出了简单的代数和图形方法描述相对于其二进制特性,基本ROC曲线或曲线下面积的两种诊断测试之一的优越条件。图形区域可用于识别两个系统之间的潜在差异,然后必须进行统计测试。可以使用众所周知的方法进行简单的统计检验,以比较诊断可能性比。所开发的方法为某些较难分析的方案提供了解决方案,在这些方案中,诊断测试在敏感性和特异性方面均未显示出一致的差异。此外,得出的推论与使用常规且合理定义的摘要索引所得出的结论并不矛盾。>结论:当二进制诊断测试成为主要关注对象时,建议的方法提供了一种客观而有效的方法用于比较两个二进制诊断测试。该方法的显着优点是,当一项检测的灵敏度更高而特异性较低时,它可以进行客观分析,同时确保与基于其他合理且广泛接受的摘要指数的研究结论相一致。对于真正的多类别诊断测试,提出的方法可以帮助推断基于二进制数据的诊断测试之一的劣质性,从而潜在地节省了进行更昂贵的多类别ROC研究的需要。

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