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Development of a diagnostic test based on multiple continuous biomarkers with an imperfect reference test

机译:基于多个连续生物标志物和不完善的参考测试的诊断测试的开发

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摘要

Ignoring the fact that the reference test used to establish the discriminative properties of a combination of diagnostic biomarkers is imperfect can lead to a biased estimate of the diagnostic accuracy of the combination. In this paper, we propose a Bayesian latent-class mixture model to select a combination of biomarkers that maximizes the area under the ROC curve (AUC), while taking into account the imperfect nature of the reference test. In particular, a method for specification of the prior for the mixture component parameters is developed that allows controlling the amount of prior information provided for the AUC. The properties of the model are evaluated by using a simulation study and an application to real data from Alzheimer's disease research. In the simulation study, 100 data sets are simulated for sample sizes ranging from 100 to 600 observations, with a varying correlation between biomarkers. The inclusion of an informative as well as a flat prior for the diagnostic accuracy of the reference test is investigated. In the real-data application, the proposed model was compared with the generally used logistic-regression model that ignores the imperfectness of the reference test. Conditional on the selected sample size and prior distributions, the simulation study results indicate satisfactory performance of the model-based estimates. In particular, the obtained average estimates for all parameters are close to the true values. For the real-data application, AUC estimates for the proposed model are substantially higher than those from the 'traditional' logistic-regression model. Copyright (C) 2015 John Wiley & Sons, Ltd.
机译:忽略用于建立诊断生物标志物组合的鉴别特性的参考测试不完善的事实会导致对组合诊断准确性的估计有偏差。在本文中,我们提出了一种贝叶斯潜伏类混合模型,以选择一种生物标记组合,以最大化ROC曲线(AUC)下的面积,同时考虑到参考测试的不完善性质。特别地,开发了一种用于指定混合物组分参数的先验的方法,该方法允许控制为AUC提供的先验信息的量。通过使用模拟研究以及对阿尔茨海默氏病研究的真实数据的应用来评估模型的属性。在模拟研究中,模拟了100个数据集,样本大小从100到600个观察值不等,生物标记之间的相关性也有所不同。对于参考测试的诊断准确性,调查了信息量和平坦度之前的内容。在实际数据应用中,将所提出的模型与忽略参考测试不完善性的常用逻辑回归模型进行了比较。以所选样本量和先前分布为条件,模拟研究结果表明基于模型的估计具有令人满意的性能。特别地,所获得的所有参数的平均估计值接近真实值。对于实际数据应用,所提出模型的AUC估计值明显高于“传统”逻辑回归模型的估计值。版权所有(C)2015 John Wiley&Sons,Ltd.

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