Sheng Jennifer, Zhang Tongli
College of Pharmacy, University of Michigan, Ann Arbor, MI, 48109, USA.
Department of Pharmacology, Physiology, and Neurobiology, College of Medicine, University of Cincinnati, Cincinnati, OH, 45219, USA.
J Pharmacokinet Pharmacodyn. 2025 Sep 15;52(5):52. doi: 10.1007/s10928-025-09995-2.
Model-informed Drug Development (MIDD) is an essential framework for advancing drug development and supporting regulatory decision-making. The current review presents a strategic blueprint to closely align MIDD tools with key questions of interests (QOI), content of use (COU), and model impact across stages of development -from early discovery to post-market lifecycle management. To demonstrate how the strategy works, we have also provided examples of how the MIDD tools can be applied to enhance the target identification, assist with lead compound optimization, improve preclinical prediction accuracy, facilitate First-in-Human (FIH) studies, optimize clinical trial design including dosage optimization, describe clinical population pharmacokinetics/exposure-response (PPK/ER) characteristics, and support label updates during post-approval stages. Additionally, the roles of some commonly used modeling methodologies, such as quantitative structure-activity relationship (QSAR), physiologically based pharmacokinetic (PBPK), semi-mechanistic pharmacokinetics/pharmacodynamics (PK/PD), PPK/ER, and quantitative systems pharmacology (QSP), are highlighted. What is more, we also explored the evolving role of MIDD in the context of emerging technologies, such as artificial intelligence (AI) and machine learning (ML) approaches. Further, MIDD utilities in development and regulatory evaluation of 505(b) (2) and generic drug products, as well as practical considerations of MIDD in regulatory interactions and asset acquisitions, are briefly discussed. At the end of the review, we briefly addressed the potential challenges faced by MIDD, such as lack of appropriate resources and slow organizational acceptance and alignment, as well as our perspectives on future opportunities of how MIDD could be further expanded.
模型引导药物研发(MIDD)是推进药物研发和支持监管决策的重要框架。本综述提出了一个战略蓝图,以使MIDD工具与关键兴趣问题(QOI)、使用内容(COU)以及从早期发现到上市后生命周期管理等各研发阶段的模型影响紧密结合。为展示该策略的运作方式,我们还提供了一些示例,说明MIDD工具如何应用于加强靶点识别、协助先导化合物优化、提高临床前预测准确性、促进首次人体(FIH)研究、优化包括剂量优化在内的临床试验设计、描述临床群体药代动力学/暴露-反应(PPK/ER)特征以及支持批准后阶段的标签更新。此外,还强调了一些常用建模方法的作用,如定量构效关系(QSAR)、生理药代动力学(PBPK)、半机制药代动力学/药效学(PK/PD)、PPK/ER和定量系统药理学(QSP)。而且,我们还探讨了MIDD在人工智能(AI)和机器学习(ML)方法等新兴技术背景下不断演变的作用。此外,还简要讨论了MIDD在505(b)(2)和仿制药产品研发及监管评估中的效用,以及MIDD在监管互动和资产收购中的实际考量。在综述结尾,我们简要阐述了MIDD面临的潜在挑战,如缺乏适当资源以及组织接受和协调缓慢,以及我们对MIDD未来如何进一步扩展的机会的看法。