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Continuous event monitoring via a Bayesian predictive approach

机译:通过贝叶斯预测方法进行连续事件监控

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In clinical trials, continuous monitoring of event incidence rate plays a critical role in making timely decisions affecting trial outcome. For example, continuous monitoring of adverse events protects the safety of trial participants, while continuous monitoring of efficacy events helps identify early signals of efficacy or futility. Because the endpoint of interest is often the event incidence associated with a given length of treatment duration (e.g., incidence proportion of an adverse event with 2 years of dosing), assessing the event proportion before reaching the intended treatment duration becomes challenging, especially when the event onset profile evolves over time with accumulated exposure. In particular, in the earlier part of the study, ignoring censored subjects may result in significant bias in estimating the cumulative event incidence rate. Such a problem is addressed using a predictive approach in the Bayesian framework. In the proposed approach, experts' prior knowledge about both the frequency and timing of the event occurrence is combined with observed data. More specifically, during any interim look, each event-free subject will be counted with a probability that is derived using prior knowledge. The proposed approach is particularly useful in early stage studies for signal detection based on limited information. But it can also be used as a tool for safety monitoring (e.g., data monitoring committee) during later stage trials. Application of the approach is illustrated using a case study where the incidence rate of an adverse event is continuously monitored during an Alzheimer's disease clinical trial. The performance of the proposed approach is also assessed and compared with other Bayesian and frequentist methods via simulation. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:在临床试验中,事件发生率的连续监测在及时做出影响试验结果的决定中起着至关重要的作用。例如,持续监测不良事件可保护试验参与者的安全,而持续监测功效事件则有助于识别功效或无效的早期信号。因为关注的终点通常是与给定的治疗时间长度相关的事件发生率(例如,服用2年的不良事件的发生比例),因此在达到预期的治疗持续时间之前评估事件的比例变得具有挑战性,尤其是当事件发作概况随时间累积积累。特别是,在研究的较早部分,忽略受检对象可能会导致在估计累积事件发生率方面存在重大偏见。使用贝叶斯框架中的预测方法可以解决此问题。在提出的方法中,将专家对事件发生的频率和时间的先验知识与观察到的数据结合在一起。更具体地,在任何临时外观期间,将以使用先验知识得出的概率来对每个无事件的主题进行计数。所提出的方法在基于有限信息的信号检测的早期研究中特别有用。但它也可以在后期试验中用作安全监控的工具(例如,数据监控委员会)。通过案例研究说明了该方法的应用,其中在阿尔茨海默氏病临床试验中持续监测不良事件的发生率。还评估了所提出方法的性能,并通过模拟将其与其他贝叶斯方法和常客方法进行了比较。版权所有(c)2015 John Wiley&Sons,Ltd.

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