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Bayesian sequential meta-analysis design in evaluating cardiovascular risk in a new antidiabetic drug development program

机译:贝叶斯序贯荟萃分析设计用于评估新的抗糖尿病药物开发计划中的心血管风险

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Recently, the Center for Drug Evaluation and Research at the Food and Drug Administration released a guidance that makes recommendations about how to demonstrate that a new antidiabetic therapy to treat type 2 diabetes is not associated with an unacceptable increase in cardiovascular risk. One of the recommendations from the guidance is that phases II and III trials should be appropriately designed and conducted so that a meta-analysis can be performed. In addition, the guidance implies that a sequential meta-analysis strategy could be adopted. That is, the initial meta-analysis could aim at demonstrating the upper bound of a 95% confidence interval (CI) for the estimated hazard ratio to be<1.8 for the purpose of enabling a new drug application or a biologics license application. Subsequently after the marketing authorization, a final meta-analysis would need to show the upper bound to be<1.3. In this context, we develop a new Bayesian sequential meta-analysis approach using survival regression models to assess whether the size of a clinical development program is adequate to evaluate a particular safety endpoint. We propose a Bayesian sample size determination methodology for sequential meta-analysis clinical trial design with a focus on controlling the familywise type I error rate and power. We use the partial borrowing power prior to incorporate the historical survival meta-data into the Bayesian design. We examine various properties of the proposed methodology, and simulation-based computational algorithms are developed to generate predictive data at various interim analyses, sample from the posterior distributions, and compute various quantities such as the power and the type I error in the Bayesian sequential meta-analysis trial design. We apply the proposed methodology to the design of a hypothetical antidiabetic drug development program for evaluating cardiovascular risk.
机译:最近,美国食品药品监督管理局(FDA)的药物评估和研究中心发布了一项指南,该指南对如何证明治疗2型糖尿病的新抗糖尿病疗法不会增加心血管疾病危险性提出了建议。指南中的建议之一是应适当设计和进行II期和III期试验,以便进行荟萃分析。此外,该指南暗示可以采用顺序荟萃分析策略。也就是说,最初的荟萃分析的目的在于证明95%置信区间(CI)的上限,使估计的危险比<1.8,以实现新药申请或生物制剂许可申请。随后,在获得销售授权后,最终的荟萃分析将需要显示上限<1.3。在这种情况下,我们使用生存回归模型开发了一种新的贝叶斯序贯荟萃分析方法,以评估临床开发计划的规模是否足以评估特定的安全终点。我们提出了用于顺序荟萃分析临床试验设计的贝叶斯样本量确定方法,重点是控制家族式I型错误率和功效。在将历史生存元数据合并到贝叶斯设计之前,我们使用了部分借用权。我们检查了所提出方法的各种属性,并开发了基于仿真的计算算法,以在各种临时分析中生成预测数据,从后验分布中采样,并计算各种数量,例如贝叶斯顺序元中的幂和I型误差分析试验设计。我们将拟议的方法应用于假设的抗糖尿病药物开发计划的设计中,以评估心血管风险。

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