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A Bayesian non-inferiority approach using experts’ margin elicitation – application to the monitoring of safety events

机译:使用专家的边际启发的贝叶斯非劣性方法–在安全事件监视中的应用

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When conducing Phase-III trial, regulatory agencies and investigators might want to get reliable information about rare but serious safety outcomes during the trial. Bayesian non-inferiority approaches have been developed, but commonly utilize historical placebo-controlled data to define the margin, depend on a single final analysis, and no recommendation is provided to define the prespecified decision threshold. In this study, we propose a non-inferiority Bayesian approach for sequential monitoring of rare dichotomous safety events incorporating experts’ opinions on margins. A Bayesian decision criterion was constructed to monitor four safety events during a non-inferiority trial conducted on pregnant women at risk for premature delivery. Based on experts’ elicitation, margins were built using mixtures of beta distributions that preserve experts’ variability. Non-informative and informative prior distributions and several decision thresholds were evaluated through an extensive sensitivity analysis. The parameters were selected in order to maintain two rates of misclassifications under prespecified rates, that is, trials that wrongly concluded an unacceptable excess in the experimental arm, or otherwise. The opinions of 44 experts were elicited about each event non-inferiority margins and its relative severity. In the illustrative trial, the maximal misclassification rates were adapted to events’ severity. Using those maximal rates, several priors gave good results and one of them was retained for all events. Each event was associated with a specific decision threshold choice, allowing for the consideration of some differences in their prevalence, margins and severity. Our decision rule has been applied to a simulated dataset. In settings where evidence is lacking and where some rare but serious safety events have to be monitored during non-inferiority trials, we propose a methodology that avoids an arbitrary margin choice and helps in the decision making at each interim analysis. This decision rule is parametrized to consider the rarity and the relative severity of the events and requires a strong collaboration between physicians and the trial statisticians for the benefit of all. This Bayesian approach could be applied as a complement to the frequentist analysis, so both Data Safety Monitoring Boards and investigators can benefit from such an approach.
机译:在进行III期试验时,监管机构和研究人员可能希望获得有关罕见但严重的安全性结果的可靠信息。贝叶斯非劣性方法已经被开发出来,但是通常使用历史安慰剂控制的数据来定义裕度,取决于单个最终分析,并且没有提供建议来定义预先确定的决策阈值。在这项研究中,我们提出了一种非劣势贝叶斯方法,用于连续监测罕见的二分类安全事件,并结合了专家对利润的看法。在对患有早产风险的孕妇进行的非劣效性试验期间,构建了贝叶斯决策标准来监视四个安全事件。根据专家的启发,使用保留专家可变性的beta分布的混合来建立边距。通过广泛的敏感性分析评估了非信息性和信息性的先验分布以及几个决策阈值。选择参数是为了将两个错误分类率保持在预先设定的速率之下,即错误地得出结论,认为试验组中的不可接受的过量是错误的。引起了关于每个事件非劣质性边缘及其相对严重程度的44位专家的意见。在说明性试验中,最大误分类率已根据事件的严重性进行了调整。使用这些最大速率,几个先验给出了良好的结果,其中一个保留了所有事件。每个事件都与特定的决策阈值选择相关联,可以考虑其发生率,边际和严重性方面的一些差异。我们的决策规则已应用于模拟数据集。在缺乏证据的情况下,以及在非劣效性试验期间必须监测一些罕见但严重的安全事件的情况下,我们提出了一种避免随意选择余量并有助于每次中期分析做出决策的方法。参数化此决策规则时要考虑事件的稀有性和相对严重性,并且为了所有人的利益,需要医生和试验统计人员之间的密切合作。这种贝叶斯方法可以作为对频繁性分析的补充,因此数据安全监视委员会和调查人员都可以从这种方法中受益。

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