Garcia-Hernandez Alberto
Global Data Science, Astellas Pharma Europe B.V., Sylviusweg 62, 2333 BE, Leiden, The Netherlands.
Drug Saf. 2015 Nov;38(11):1049-57. doi: 10.1007/s40264-015-0344-2.
The comparative evaluation of benefits and risks is one of the most important tasks during the development, market authorization and post-approval pharmacovigilance of medicinal products. Multi-criteria decision analysis (MCDA) has been recommended to support decision making in the benefit-risk assessment (BRA) of medicines. This paper identifies challenges associated with bias or variability that practitioners may encounter in this field and presents solutions to overcome them. The inclusion of overlapping or preference-complementary criteria, which are frequent violations to the assumptions of this model, should be avoided. For each criterion, a value function translates the original outcomes into preference-related scores. Applying non-linear value functions to criteria defined as the risk of suffering a certain event during the study introduces specific risk behaviours in this prescriptive, rather than descriptive, model and is therefore a questionable practice. MCDA uses weights to compare the importance of the model criteria with each other; during their elicitation a frequent situation where (generally favourable) mild effects are directly traded off against low probabilities of suffering (generally unfavourable) severe effects during the study is known to lead to biased and variable weights and ought to be prevented. The way the outcomes are framed during the elicitation process, positively versus negatively for instance, may also lead to differences in the preference weights, warranting an appropriate justification during each implementation. Finally, extending the weighted-sum MCDA model into a fully inferential tool through a probabilistic sensitivity analysis is desirable. However, this task is troublesome and should not ignore that clinical trial endpoints generally are positively correlated.
效益与风险的比较评估是药品研发、上市许可及批准后药物警戒过程中最重要的任务之一。多标准决策分析(MCDA)已被推荐用于支持药品效益-风险评估(BRA)中的决策制定。本文识别了从业者在该领域可能遇到的与偏差或变异性相关的挑战,并提出了克服这些挑战的解决方案。应避免纳入重叠或偏好互补的标准,这是对该模型假设的常见违背。对于每个标准,一个价值函数将原始结果转化为与偏好相关的分数。将非线性价值函数应用于定义为研究期间发生某一事件风险的标准,会在这个规范性而非描述性模型中引入特定的风险行为,因此是一种有问题的做法。MCDA使用权重来相互比较模型标准的重要性;在权重确定过程中,已知一种常见情况,即(通常有利的)轻微影响直接与研究期间遭受(通常不利的)严重影响的低概率进行权衡,这会导致权重出现偏差和变异性,应该加以避免。在确定过程中对结果的表述方式,例如正面与负面表述,也可能导致偏好权重的差异,因此在每次实施过程中都需要进行适当的说明。最后,通过概率敏感性分析将加权求和MCDA模型扩展为一个完全推理工具是可取的。然而,这项任务很麻烦,并且不应忽视临床试验终点通常是正相关的这一事实。