Zhang Bo, Chen Zhen, Albert Paul S
Biostatistics Core, School of Biological and Population Health Sciences, College of Public Health and Human Sciences, Oregon State University, OR 97331, USA.
Biometrics. 2012 Dec;68(4):1294-302. doi: 10.1111/j.1541-0420.2012.01789.x. Epub 2012 Sep 24.
In diagnostic medicine, estimating the diagnostic accuracy of a group of raters or medical tests relative to the gold standard is often the primary goal. When a gold standard is absent, latent class models where the unknown gold standard test is treated as a latent variable are often used. However, these models have been criticized in the literature from both a conceptual and a robustness perspective. As an alternative, we propose an approach where we exploit an imperfect reference standard with unknown diagnostic accuracy and conduct sensitivity analysis by varying this accuracy over scientifically reasonable ranges. In this article, a latent class model with crossed random effects is proposed for estimating the diagnostic accuracy of regional obstetrics and gynaecological (OB/GYN) physicians in diagnosing endometriosis. To avoid the pitfalls of models without a gold standard, we exploit the diagnostic results of a group of OB/GYN physicians with an international reputation for the diagnosis of endometriosis. We construct an ordinal reference standard based on the discordance among these international experts and propose a mechanism for conducting sensitivity analysis relative to the unknown diagnostic accuracy among them. A Monte Carlo EM algorithm is proposed for parameter estimation and a BIC-type model selection procedure is presented. Through simulations and data analysis we show that this new approach provides a useful alternative to traditional latent class modeling approaches used in this setting.
在诊断医学中,评估一组评估者或医学检测相对于金标准的诊断准确性通常是主要目标。当没有金标准时,常使用将未知金标准检测视为潜在变量的潜在类别模型。然而,这些模型在文献中从概念和稳健性角度都受到了批评。作为一种替代方法,我们提出一种方法,即利用一个诊断准确性未知的不完美参考标准,并通过在科学合理的范围内改变该准确性来进行敏感性分析。在本文中,提出了一种具有交叉随机效应的潜在类别模型,用于评估区域妇产科医生诊断子宫内膜异位症的诊断准确性。为了避免没有金标准的模型的缺陷,我们利用了一组在子宫内膜异位症诊断方面享有国际声誉的妇产科医生的诊断结果。我们基于这些国际专家之间的不一致构建了一个有序参考标准,并提出了一种针对他们之间未知诊断准确性进行敏感性分析的机制。提出了一种蒙特卡罗期望最大化(EM)算法用于参数估计,并给出了一种贝叶斯信息准则(BIC)类型的模型选择程序。通过模拟和数据分析,我们表明这种新方法为该环境中使用的传统潜在类别建模方法提供了一种有用的替代方案。