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Periodic benefit-risk assessment using Bayesian stochastic multi-criteria acceptability analysis

机译:使用贝叶斯随机多标准可接受性分析定期益处风险评估

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Benefit-risk (BR) assessment is essential to ensure the best decisions are made for a medical product in the clinical development process, regulatory marketing authorization, post-market surveillance, and coverage and reimbursement decisions. One challenge of BR assessment in practice is that the benefit and risk profile may keep evolving while new evidence is accumulating. Regulators and the International Conference on Harmonization (ICH) recommend performing periodic benefit-risk evaluation report (PBRER) through the product's lifecycle. In this paper, we propose a general statistical framework for periodic benefit-risk assessment, in which Bayesian meta-analysis and stochastic multi-criteria acceptability analysis (SMAA) will be combined to synthesize the accumulating evidence. The proposed approach allows us to compare the acceptability of different drugs dynamically and effectively and accounts for the uncertainty of clinical measurements and imprecise or incomplete preference information of decision makers. We apply our approaches to two real examples in a post-hoc way for illustration purpose. The proposed method may easily be modified for other pre and post market settings, and thus be an important complement to the current structured benefit-risk assessment (sBRA) framework to improve the transparent and consistency of the decision-making process.
机译:受益风险(BR)评估对于确保在临床开发过程中,监管营销授权,市场后监督和报销和报销决策中最佳决策是必不可少的。 BR评估在实践中的一个挑战是,利益和风险概况可能会在新的证据积累时继续不断发展。监管机构和协调会议(ICH)建议通过产品的生命周期进行定期福利风险评估报告(PBRER)。在本文中,我们提出了一般统计框架,用于定期益处风险评估,其中贝叶斯荟萃分析和随机多标准可接受性分析(SMAA)将合并以综合累积证据。拟议的方法使我们能够动态地,有效地比较不同药物的可接受性,并占决策者的临床测量和不精确或不完整或不完全信息的不确定性。我们将我们的方法应用于两个实际例子,以便在HOC方法中用于说明目的。该提出的方法可以容易地修改其他预先和后期市场环境,因此是对当前结构化益处风险评估(SBRA)框架的重要补充,以提高决策过程的透明和一致性。

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