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首页> 外文期刊>Value in health: the journal of the International Society for Pharmacoeconomics and Outcomes Research >Two approaches to incorporate clinical data uncertainty into multiple criteria decision analysis for benefit-risk assessment of medicinal products
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Two approaches to incorporate clinical data uncertainty into multiple criteria decision analysis for benefit-risk assessment of medicinal products

机译:将临床数据不确定性纳入多标准决策分析的两种方法,以评估药品的收益风险

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Background The Problem formulation, Objectives, Alternatives, Consequences, Trade-offs, Uncertainties, Risk attitude, and Linked decisions (PrOACT-URL) framework and multiple criteria decision analysis (MCDA) have been recommended by the European Medicines Agency for structured benefit-risk assessment of medicinal products undergoing regulatory review. Objective The objective of this article was to provide solutions to incorporate the uncertainty from clinical data into the MCDA model when evaluating the overall benefit-risk profiles among different treatment options. Methods Two statistical approaches, the δ-method approach and the Monte-Carlo approach, were proposed to construct the confidence interval of the overall benefit-risk score from the MCDA model as well as other probabilistic measures for comparing the benefit-risk profiles between treatment options. Both approaches can incorporate the correlation structure between clinical parameters (criteria) in the MCDA model and are straightforward to implement. Results The two proposed approaches were applied to a case study to evaluate the benefit-risk profile of an add-on therapy for rheumatoid arthritis (drug X) relative to placebo. It demonstrated a straightforward way to quantify the impact of the uncertainty from clinical data to the benefit-risk assessment and enabled statistical inference on evaluating the overall benefit-risk profiles among different treatment options. Conclusions The δ-method approach provides a closed form to quantify the variability of the overall benefit-risk score in the MCDA model, whereas the Monte-Carlo approach is more computationally intensive but can yield its true sampling distribution for statistical inference. The obtained confidence intervals and other probabilistic measures from the two approaches enhance the benefit-risk decision making of medicinal products.
机译:背景技术欧洲药品管理局已针对结构化的利益风险建议了问题的制定,目标,替代方案,后果,权衡,不确定性,风险态度和关联决策(PrOACT-URL)框架和多标准决策分析(MCDA)。进行监管审查的药品评估。目的本文的目的是提供一种解决方案,用于在评估不同治疗方案之间的总体受益风险概况时将临床数据的不确定性纳入MCDA模型。方法提出了两种统计方法,分别是δ方法和蒙特卡洛方法,用于通过MCDA模型构建总体受益风险评分的置信区间,并采用其他概率措施来比较治疗之间的受益风险特征选项。两种方法都可以在MCDA模型中纳入临床参数(标准)之间的相关结构,并且易于实现。结果将这两种拟议的方法应用于案例研究,以评估类风湿关节炎(药物X)相对于安慰剂的附加疗法的获益风险曲线。它展示了一种简单的方法,可以量化从临床数据到受益风险评估的不确定性的影响,并可以进行统计推断来评估不同治疗方案之间的总体受益风险状况。结论δ方法提供了一种封闭的形式来量化MCDA模型中总体利益风险评分的变异性,而蒙特卡洛方法的计算量更大,但可以得出其真实的抽样分布以进行统计推断。从这两种方法获得的置信区间和其他概率测度增强了药品的利益风险决策。

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