Swinney David C, Lee Jonathan A
DCSwinney consulting, Belmont, California, USA.
PDD4Patients LLC, Indianapolis, Indiana, USA.
F1000Res. 2020 Aug 7;9. doi: 10.12688/f1000research.25813.1. eCollection 2020.
There is a great need for innovative new medicines to treat unmet medical needs. The discovery and development of innovative new medicines is extremely difficult, costly, and inefficient. In the last decade, phenotypic drug discovery (PDD) was reintroduced as a strategy to provide first-in-class medicines. PDD uses empirical, target-agnostic lead generation to identify pharmacologically active molecules and novel therapeutics which work through unprecedented drug mechanisms. The economic and scientific value of PDD is exemplified through game-changing medicines for hepatitis C virus, spinal muscular atrophy, and cystic fibrosis. In this short review, recent advances are noted for the implementation and de-risking of PDD (for compound library selection, biomarker development, mechanism identification, and safety studies) and the potential for artificial intelligence. A significant barrier in the decision to implement PDD is balancing the potential impact of a novel mechanism of drug action with an under-defined scientific path forward, with the desire to provide infrastructure and metrics to optimize return on investment, which a known mechanism provides. A means to address this knowledge gap in the future is to empower precompetitive research utilizing the empirical concepts of PDD to identify new mechanisms and pharmacologically active compounds.
迫切需要创新型新药来满足未被满足的医疗需求。创新型新药的发现和开发极其困难、成本高昂且效率低下。在过去十年中,表型药物发现(PDD)作为一种提供同类首创药物的策略被重新引入。PDD利用经验性的、不依赖靶点的先导化合物生成方法来识别具有药理活性的分子和通过前所未有的药物作用机制发挥作用的新型疗法。PDD的经济和科学价值通过治疗丙型肝炎病毒、脊髓性肌萎缩症和囊性纤维化的突破性药物得到了体现。在这篇简短的综述中,我们注意到了PDD实施和降低风险方面(用于化合物库选择、生物标志物开发、作用机制识别和安全性研究)的最新进展以及人工智能的潜力。实施PDD决策中的一个重大障碍是,要在药物作用新机制的潜在影响与尚不明确的科学前进道路之间取得平衡,同时还要考虑到提供基础设施和衡量标准以优化投资回报的愿望,而这是已知机制所能提供的。未来解决这一知识差距的一种方法是利用PDD的经验性概念推动竞争前研究,以识别新机制和具有药理活性的化合物。