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Bayesian Approaches for Confirmatory Trials in Rare Diseases: Opportunities and Challenges

机译:贝叶斯患者在罕见疾病中的确诊试验方法:机遇和挑战

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摘要

The aim of this narrative review is to introduce the reader to Bayesian methods that, in our opinion, appear to be the most important in the context of rare diseases. A disease is defined as rare depending on the prevalence of the affected patients in the considered population, for example, about 1 in 1500 people in U.S.; about 1 in 2500 people in Japan; and fewer than 1 in 2000 people in Europe. There are between 6000 and 8000 rare diseases and the main issue in drug development is linked to the challenge of achieving robust evidence from clinical trials in small populations. A better use of all available information can help the development process and Bayesian statistics can provide a solid framework at the design stage, during the conduct of the trial, and at the analysis stage. The focus of this manuscript is to provide a review of Bayesian methods for sample size computation or reassessment during phase II or phase III trial, for response adaptive randomization and of for meta-analysis in rare disease. Challenges regarding prior distribution choice, computational burden and dissemination are also discussed.
机译:这一叙事审查的目的是向贝叶斯方法介绍读者,在我们看来,似乎是罕见疾病的背景下最重要的。疾病定义为罕见,这取决于受影响患者在被审议的人口中的患病率,例如,美国1500人中约1人。日本约有2500人中约1人;在欧洲的2000人中少于1人。含有6000至8000个罕见的疾病,药物发展的主要问题与从小种群的临床试验中实现了强大的证据。更好地利用所有可用信息可以帮助开发过程,贝叶斯统计数据可以在试验期间和分析阶段提供设计阶段的实心框架。该稿件的重点是在II期或III期试验期间提供对样品大小计算或重新评估的贝叶斯尺寸计算或重新评估的综述,用于罕见疾病的响应适应随机化和荟萃分析。还讨论了关于先前分配选择,计算负担和传播的挑战。

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