1 Department of Research and Clinical Sciences Statistics, Bayer AG, Berlin, Germany and Competence Center for Clinical Trials, University of Bremen, Germany.
2 Competence Center for Clinical Trials, University of Bremen, Bremen, Germany.
Stat Methods Med Res. 2019 Aug;28(8):2538-2556. doi: 10.1177/0962280218784778. Epub 2018 Jul 3.
To enable targeted therapies and enhance medical decision-making, biomarkers are increasingly used as screening and diagnostic tests. When using quantitative biomarkers for classification purposes, this often implies that an appropriate cutoff for the biomarker has to be determined and its clinical utility must be assessed. In the context of drug development, it is of interest how the probability of response changes with increasing values of the biomarker. Unlike sensitivity and specificity, predictive values are functions of the accuracy of the test, depend on the prevalence of the disease and therefore are a useful tool in this setting. In this paper, we propose a Bayesian method to not only estimate the cutoff value using the negative and positive predictive values, but also estimate the uncertainty around this estimate. Using Bayesian inference allows us to incorporate prior information, and obtain posterior estimates and credible intervals for the cut-off and associated predictive values. The performance of the Bayesian approach is compared with alternative methods via simulation studies of bias, interval coverage and width and illustrations on real data with binary and time-to-event outcomes are provided.
为了实现靶向治疗和增强医疗决策,生物标志物越来越多地被用作筛选和诊断测试。当使用定量生物标志物进行分类目的时,这通常意味着必须确定生物标志物的适当截止值,并评估其临床实用性。在药物开发的背景下,感兴趣的是随着生物标志物值的增加,响应的概率如何变化。与敏感性和特异性不同,预测值是测试准确性的函数,取决于疾病的流行程度,因此在这种情况下是一种有用的工具。在本文中,我们提出了一种贝叶斯方法,不仅可以使用阴性和阳性预测值来估计截止值,还可以估计该估计值的不确定性。使用贝叶斯推断可以使我们结合先验信息,并获得截止值和相关预测值的后验估计和可信区间。通过对偏倚、区间覆盖率和宽度的模拟研究以及对二元和事件时间结局的真实数据的说明,比较了贝叶斯方法的性能。