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Bayesian noninferiority test for 2 binomial probabilities as the extension of Fisher exact test

机译:Bayesian非资格性测试2张概率作为Fisher精确测试的延伸

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摘要

Noninferiority trials have recently gained importance for the clinical trials of drugs and medical devices. In these trials, most statistical methods have been used from a frequentist perspective, and historical data have been used only for the specification of the noninferiority margin Δ0. In contrast, Bayesian methods, which have been studied recently are advantageous in that they can use historical data to specify prior distributions and are expected to enable more efficient decision making than frequentist methods by borrowing information from historical trials. In the case of noninferiority trials for response probabilities π 1 , π 2 , Bayesian methods evaluate the posterior probability of H 1 : π 1 π 2 ?Δ being true. To numerically calculate such posterior probability, complicated Appell hypergeometric function or approximation methods are used. Further, the theoretical relationship between Bayesian and frequentist methods is unclear. In this work, we give the exact expression of the posterior probability of the noninferiority under some mild conditions and propose the Bayesian noninferiority test framework which can flexibly incorporate historical data by using the conditional power prior. Further, we show the relationship between Bayesian posterior probability and the P value of the Fisher exact test. From this relationship, our method can be interpreted as the Bayesian noninferior extension of the Fisher exact test, and we can treat superiority and noninferiority in the same framework. Our method is illustrated through Monte Carlo simulations to evaluate the operating characteristics, the application to the real HIV clinical trial data, and the sample size calculation using historical data.
机译:非事实体试验最近获得了药物和医疗器械的临床试验的重要性。在这些试验中,大多数统计方法已经从频繁的角度使用,并且仅用于非事实体边缘δ&gt的规范使用的历史数据。相比之下,最近已经研究过的贝叶斯方法是有利的,它们可以使用历史数据来指定先前的分布,并且预计通过借入历史试验的信息来实现比频率的方法更有效的决策。在响应概率π1,π2的非流体试验的情况下,贝叶斯方法评估H 1:π1&gt的后验概率。 Π2?δ是真的。为了数值计算这种后验概率,使用复杂的Appell HyperGeomic函数或近似方法。此外,贝叶斯和频率方法之间的理论关系尚不清楚。在这项工作中,我们在一些温和条件下给出了非闭合性的后验概率的确切表达,并提出了贝叶斯非事实体测试框架,该测试框架可以通过先前使用条件功率灵活地整合历史数据。此外,我们展示了贝叶斯后概率与Fisher精确测试的P值之间的关系。从这种关系中,我们的方法可以被解释为贝叶斯非资源针延伸的Fisher精确测试,我们可以在同一框架中治疗优越性和不合理性。我们的方法通过蒙特卡罗模拟来说明,以评估操作特性,应用于真实的艾滋病毒临床试验数据,以及使用历史数据计算的样本量计算。

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