Diagnostic accuracy studies assess sensitivity and specificity of a new index test in relation to an established comparator or the reference standard. The development and selection of the index test is usually assumed to be conducted prior to the accuracy study. In practice, this is often violated, for instance if the choice of the (apparently) best biomarker, model or cutpoint is based on the same data that is used later for validation purposes. In this work, we investigate several multiple comparison procedures which provide family-wise error rate control for the emerging multiple testing problem. Due to the nature of the co-primary hypothesis problem, conventional approaches for multiplicity adjustment are too conservative for the specific problem and thus need to be adapted. In an extensive simulation study, five multiple comparison procedures are compared with regards to statistical error rates in least-favorable and realistic scenarios. This covers parametric and nonparamtric methods and one Bayesian approach. All methods have been implemented in the new open-source R package DTAmc which allows to reproduce all simulation results. Based on our numerical results, we conclude that the parametric approaches (maxT, Bonferroni) are easy to apply but can have inflated type I error rates for small sample sizes. The two investigated Bootstrap procedures, in particular the so-called pairs Bootstrap, allow for a family-wise error rate control in finite samples and in addition have a competitive statistical power.
翻译:诊断性准确性研究评估与既定参照国或参考标准相比,新的指数测试的敏感性和特殊性。通常假定在精确性研究之前就进行指数测试的开发和选择。在实践中,这经常被违反,例如,如果选择(显然)最佳生物标记、模型或切分所依据的数据与后来用于验证目的的相同,那么选择最佳生物标记、模型或切分的依据与(明显)最佳生物标记、模型或切分所依据的数据相同。在这项工作中,我们调查了若干多个比较程序,这些程序为新出现的多重测试问题提供了家庭错误率控制。由于共同主要假设问题的性质,常规的多重调整方法对于具体问题过于保守,因此需要加以调整。在一项广泛的模拟研究中,五个多重比较程序与统计错误率进行比较,这包括参数和非参数方法,以及一种巴耶斯方法。所有方法都已在新的开放源R软件包DTTAMc中实施,可以复制所有模拟结果。根据我们的数字结果,我们的结论是,对于特定问题而言,对多重调整的常规方法(Max、Bonferroni)过于保守,因此需要加以调整。在广泛模拟研究中,对统计样本样本中的比重率程序适用了两种标准,但可以允许对I号的弹性测定序的比。