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Bayesian sample sizes for exploratory clinical trials comparing multiple experimental treatments with a control

机译:探索性临床试验的贝叶斯样本量,将多种实验方法与对照进行比较

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摘要

In this paper, a Bayesian approach is developed for simultaneously comparing multiple experimental treatments with a common control treatment in an exploratory clinical trial. The sample size is set to ensure that, at the end of the study, there will be at least one treatment for which the investigators have a strong belief that it is better than control, or else they have a strong belief that none of the experimental treatments are substantially better than control. This criterion bears a direct relationship with conventional frequentist power requirements, while allowing prior opinion to feature in the analysis with a consequent reduction in sample size. If it is concluded that at least one of the experimental treatments shows promise, then it is envisaged that one or more of these promising treatments will be developed further in a definitive phase III trial. The approach is developed in the context of normally distributed responses sharing a common standard deviation regardless of treatment. To begin with, the standard deviation will be assumed known when the sample size is calculated. The final analysis will not rely upon this assumption, although the intended properties of the design may not be achieved if the anticipated standard deviation turns out to be inappropriate. Methods that formally allow for uncertainty about the standard deviation, expressed in the form of a Bayesian prior, are then explored. Illustrations of the sample sizes computed from the new method are presented, and comparisons are made with frequentist methods devised for the same situation. Copyright (c) 2015John Wiley & Sons, Ltd.
机译:在本文中,提出了一种贝叶斯方法,用于在一项探索性临床试验中同时比较多种实验方法和普通对照方法。样本量的设定是为了确保在研究结束时,至少有一种治疗方法使研究人员坚信其优于对照,否则他们坚决认为没有一种实验治疗远胜于对照。该标准与常规的常客权力要求有直接关系,同时允许在分析中采用先验意见,从而减少样本量。如果得出结论,至少其中一种治疗方法显示出希望,那么可以设想将在一项确定的III期试验中进一步开发一种或多种这些有前途的治疗方法。该方法是在正态分布的响应情况下开发的,无论响应如何,该响应均具有相同的标准偏差。首先,在计算样本量时将假定已知标准偏差。最终分析将不依赖于此假设,尽管如果预期的标准偏差证明不合适,则可能无法实现设计的预期特性。然后探索正式允许以贝叶斯先验形式表示的标准偏差不确定性的方法。给出了用新方法计算出的样本量的图示,并与针对相同情况设计的常客方法进行了比较。版权所有(c)2015 John Wiley&Sons,Ltd.

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