Albert Paul S
Biometric Research Branch, National Cancer Institute, Bethesda, Maryland 20892, USA.
Biometrics. 2007 Jun;63(2):593-602. doi: 10.1111/j.1541-0420.2006.00712.x.
Estimating diagnostic accuracy without a gold standard is an important problem in medical testing. Although there is a fairly large literature on this problem for the case of repeated binary tests, there is substantially less work for the case of ordinal tests. A noted exception is the work by Zhou, Castelluccio, and Zhou (2005, Biometrics 61, 600-609), which proposed a methodology for estimating receiver operating characteristic (ROC) curves without a gold standard from multiple ordinal tests. A key assumption in their work was that the test results are independent conditional on the true test result. I propose random effects modeling approaches that incorporate dependence between the ordinal tests, and I show through asymptotic results and simulations the importance of correctly accounting for the dependence between tests. These modeling approaches, along with the importance of accounting for the dependence between tests, are illustrated by analyzing the uterine cancer pathology data analyzed by Zhou et al. (2005).
在没有金标准的情况下估计诊断准确性是医学检测中的一个重要问题。尽管针对重复二元检测的情况已有相当多关于此问题的文献,但针对有序检测的情况,相关研究要少得多。一个显著的例外是周、卡斯特卢乔和周(2005年,《生物统计学》61卷,600 - 609页)的研究,该研究提出了一种在没有金标准的情况下从多个有序检测中估计受试者工作特征(ROC)曲线的方法。他们研究中的一个关键假设是,检测结果在给定真实检测结果的条件下是独立的。我提出了纳入有序检测之间相关性的随机效应建模方法,并通过渐近结果和模拟展示了正确考虑检测之间相关性的重要性。通过分析周等人(2005年)分析的子宫癌病理数据,阐述了这些建模方法以及考虑检测之间相关性的重要性。