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Control charts for monitoring accumulating adverse event count frequencies from single and multiple blinded trials

机译:控制图,用于监控单盲和多盲试验中累积的不良事件计数频率

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Conventional practice monitors accumulating information about drug safety in terms of the numbers of adverse events reported from trials in a drug development program. Estimates of between-treatment adverse event risk differences can be obtained readily from unblinded trials with adjustment for differences among trials using conventional statistical methods. Recent regulatory guidelines require monitoring the cumulative frequency of adverse event reports to identify possible between-treatment adverse event risk differences without unblinding ongoing trials. Conventional statistical methods for assessing between-treatment adverse event risks cannot be applied when the trials are blinded. However, CUSUM charts can be used to monitor the accumulation of adverse event occurrences. CUSUM charts for monitoring adverse event occurrence in a Bayesian paradigm are based on assumptions about the process generating the adverse event counts in a trial as expressed by informative prior distributions. This article describes the construction of control charts for monitoring adverse event occurrence based on statistical models for the processes, characterizes their statistical properties, and describes how to construct useful prior distributions. Application of the approach to two adverse events of interest in a real trial gave nearly identical results for binomial and Poisson observed event count likelihoods. Copyright (c) 2016 John Wiley & Sons, Ltd.
机译:传统做法是根据药物开发计划中试验报告的不良事件数量来监控有关药物安全性的信息。可以从非盲试验中轻松获得治疗间不良事件风险差异的估计值,并使用常规统计方法对试验之间的差异进行调整。最新的法规指南要求监视不良事件报告的累积频率,以识别治疗之间可能发生的不良事件风险差异,而不会影响正在进行的试验。当试验不知情时,不能采用常规的统计方法来评估治疗之间不良事件的风险。但是,CUSUM图表可用于监视不良事件发生的累积。用于监视贝叶斯范式中不良事件发生的CUSUM图表是基于关于在试验中生成不良事件计数的过程的假设,该假设由先验性先验分布表示。本文介绍了基于过程的统计模型来监视不良事件发生的控制图的构造,表征其统计特性,并描述了如何构造有用的先验分布。在实际试验中将该方法应用于两个关注的不良事件,得出的二项式和泊松观测事件计数可能性几乎相同。版权所有(c)2016 John Wiley&Sons,Ltd.

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