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Addressing potential prior-data conflict when using informative priors in proof-of-concept studies

机译:在概念验证研究中使用信息性先验时解决潜在的先验数据冲突

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摘要

Bayesian methods are increasingly used in proof-of-concept studies. An important benefit of these methods is the potential to use informative priors, thereby reducing sample size. This is particularly relevant for treatment arms where there is a substantial amount of historical information such as placebo and active comparators. One issue with using an informative prior is the possibility of a mismatch between the informative prior and the observed data, referred to as prior-data conflict. We focus on two methods for dealing with this: a testing approach and a mixture prior approach. The testing approach assesses prior-data conflict by comparing the observed data to the prior predictive distribution and resorting to a non-informative prior if prior-data conflict is declared. The mixture prior approach uses a prior with a precise and diffuse component. We assess these approaches for the normal case via simulation and show they have some attractive features as compared with the standard one-component informative prior. For example, when the discrepancy between the prior and the data is sufficiently marked, and intuitively, one feels less certain about the results, both the testing and mixture approaches typically yield wider posterior-credible intervals than when there is no discrepancy. In contrast, when there is no discrepancy, the results of these approaches are typically similar to the standard approach. Whilst for any specific study, the operating characteristics of any selected approach should be assessed and agreed at the design stage; we believe these two approaches are each worthy of consideration. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:贝叶斯方法越来越多地用于概念验证研究中。这些方法的一个重要优点是可以使用先验信息,从而减少样本量。这对于具有大量历史信息(例如安慰剂和有效比较剂)的治疗组尤其重要。使用信息先验的一个问题是信息先验和观察到的数据之间可能不匹配,称为先验数据冲突。我们专注于两种处理方法:测试方法和混合先验方法。该测试方法通过将观察到的数据与先前的预测分布进行比较,并在声明了先前数据冲突的情况下求助于非信息性的先前数据,从而评估先前数据的冲突。混合先验方法使用具有精确和扩散成分的先验。我们通过模拟评估了正常情况下的这些方法,并显示出它们与标准的单成分信息先验方法相比具有一些吸引人的功能。例如,当先验数据与数据之间的差异得到充分标记时,并且直观地,人们对结果的不确定性就降低了,与没有差异时相比,测试和混合方法通常会产生更宽的后置可信区间。相反,当没有差异时,这些方法的结果通常类似于标准方法。在进行任何特定研究时,应在设计阶段评估并商定所选方法的操作特性;我们认为这两种方法都值得考虑。版权所有(c)2015 John Wiley&Sons,Ltd.

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