Science, Technology, and Innovation Studies, University of Edinburgh, Edinburgh, UK.
JW Scannell Analytics Ltd, Edinburgh, UK.
Nat Rev Drug Discov. 2022 Dec;21(12):915-931. doi: 10.1038/s41573-022-00552-x. Epub 2022 Oct 4.
Successful drug discovery is like finding oases of safety and efficacy in chemical and biological deserts. Screens in disease models, and other decision tools used in drug research and development (R&D), point towards oases when they score therapeutic candidates in a way that correlates with clinical utility in humans. Otherwise, they probably lead in the wrong direction. This line of thought can be quantified by using decision theory, in which 'predictive validity' is the correlation coefficient between the output of a decision tool and clinical utility across therapeutic candidates. Analyses based on this approach reveal that the detectability of good candidates is extremely sensitive to predictive validity, because the deserts are big and oases small. Both history and decision theory suggest that predictive validity is under-managed in drug R&D, not least because it is so hard to measure before projects succeed or fail later in the process. This article explains the influence of predictive validity on R&D productivity and discusses methods to evaluate and improve it, with the aim of supporting the application of more effective decision tools and catalysing investment in their creation.
成功的药物发现就像是在化学和生物的荒漠中寻找安全和疗效的绿洲。在疾病模型中的筛选,以及在药物研发(R&D)中使用的其他决策工具,当它们以与人类临床应用相关的方式对治疗候选物进行评分时,就会指向绿洲。否则,它们可能会指向错误的方向。这种思路可以通过决策理论来量化,其中“预测有效性”是决策工具的输出与治疗候选物的临床应用之间的相关系数。基于这种方法的分析表明,好的候选物的可检测性对预测有效性非常敏感,因为沙漠很大,绿洲很小。历史和决策理论都表明,药物研发中对预测有效性的管理不足,尤其是因为在项目成功之前很难衡量,而在项目失败之后再衡量就太晚了。本文解释了预测有效性对研发生产力的影响,并讨论了评估和改进它的方法,旨在支持更有效的决策工具的应用,并促进对其创建的投资。