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Robust Bayesian monitoring of sequential trials

机译:连续试验的鲁棒贝叶斯监测

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摘要

In sequential experiments the sample size is not planned in advance. Data are progressively collected and a stopping rule based on the observed results is defined in order to terminate the study. In a Bayesian framework, it is straightforward to monitor an ongoing experiment looking at the posterior probability that a parameter of interest (theta ), belongs to a given set. Specifically, in this paper we focus on the context of phase II clinical trials, where (theta ) represents treatment efficacy. The Bayesian stopping rule we adopt involves the posterior probability that (theta ) exceeds a clinically relevant threshold. Moreover, we introduce a robust version of this criterion by replacing the single prior distribution with a class of prior distributions. A simulation study is performed to compare the average sample sizes of the robust sequential approach both with the sample sizes of the non robust approach and of the non sequential approach. An interesting result is that, when the class of prior distributions is sufficiently narrow, the average sample sizes of the robust sequential approach can be smaller than the non sequential sample sizes.
机译:在顺序实验中,样本大小不是预先计划的。逐步收集数据,并定义基于观察结果的终止规则,以终止研究。在贝叶斯框架中,直接监控正在进行的实验,以观察关注参数(theta)属于给定集合的后验概率。具体而言,在本文中,我们重点关注II期临床试验的背景,其中(θ)代表治疗效果。我们采用的贝叶斯停止规则涉及(θ)超过临床相关阈值的后验概率。此外,我们通过用一类先验分布替换单个先验分布来引入此标准的可靠版本。进行仿真研究以比较鲁棒顺序方法的平均样本大小与非鲁棒方法和非顺序方法的样本大小。一个有趣的结果是,当先验分布的类别足够狭窄时,稳健顺序方法的平均样本大小可能会比非顺序样本大小小。

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