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比较约登指数的有效统计检验:考虑列联相关性。

Efficient statistical tests to compare Youden index: accounting for contingency correlation.

作者信息

Chen Fangyao, Xue Yuqiang, Tan Ming T, Chen Pingyan

机构信息

Department of Biostatistics, School of Public Health and Tropical Medicine, Southern Medical University, Guangzhou, Guangdong, China.

出版信息

Stat Med. 2015 Apr 30;34(9):1560-76. doi: 10.1002/sim.6432. Epub 2015 Jan 29.

Abstract

Youden index is widely utilized in studies evaluating accuracy of diagnostic tests and performance of predictive, prognostic, or risk models. However, both one and two independent sample tests on Youden index have been derived ignoring the dependence (association) between sensitivity and specificity, resulting in potentially misleading findings. Besides, paired sample test on Youden index is currently unavailable. This article develops efficient statistical inference procedures for one sample, independent, and paired sample tests on Youden index by accounting for contingency correlation, namely associations between sensitivity and specificity and paired samples typically represented in contingency tables. For one and two independent sample tests, the variances are estimated by Delta method, and the statistical inference is based on the central limit theory, which are then verified by bootstrap estimates. For paired samples test, we show that the estimated covariance of the two sensitivities and specificities can be represented as a function of kappa statistic so the test can be readily carried out. We then show the remarkable accuracy of the estimated variance using a constrained optimization approach. Simulation is performed to evaluate the statistical properties of the derived tests. The proposed approaches yield more stable type I errors at the nominal level and substantially higher power (efficiency) than does the original Youden's approach. Therefore, the simple explicit large sample solution performs very well. Because we can readily implement the asymptotic and exact bootstrap computation with common software like R, the method is broadly applicable to the evaluation of diagnostic tests and model performance.

摘要

尤登指数在评估诊断试验准确性以及预测、预后或风险模型性能的研究中被广泛应用。然而,关于尤登指数的单样本和两独立样本检验在推导过程中都忽略了灵敏度和特异度之间的相关性(关联性),这可能会导致产生误导性的结果。此外,目前尚无关于尤登指数的配对样本检验方法。本文通过考虑列联相关性,即灵敏度和特异度之间的关联性以及列联表中典型表示的配对样本,开发了针对尤登指数的单样本、独立样本和配对样本检验的有效统计推断程序。对于单样本和两独立样本检验,方差采用德尔塔方法进行估计,统计推断基于中心极限定理,随后通过自助法估计进行验证。对于配对样本检验,我们表明两种灵敏度和特异度的估计协方差可以表示为kappa统计量的函数,因此该检验可以很容易地进行。然后,我们使用约束优化方法展示了估计方差的显著准确性。通过模拟来评估所推导检验的统计性质。与原始的尤登方法相比,所提出的方法在名义水平上产生更稳定的I型错误,并且具有显著更高的检验效能(效率)。因此,这种简单明确的大样本解决方案表现非常出色。由于我们可以使用诸如R等常用软件轻松实现渐近和精确的自助法计算,该方法广泛适用于诊断试验和模型性能的评估。

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