Geerts Hugo, Barrett James E
In Silico Biosciences, Inc., Berwyn, IL, United States.
Center for Substance Abuse Research, Lewis Katz School of Medicine, Temple University, Philadelphia, PA, United States.
Front Neurosci. 2019 Jul 16;13:723. doi: 10.3389/fnins.2019.00723. eCollection 2019.
With the success rate of drugs for CNS indications at an all-time low, new approaches are needed to turn the tide of failed clinical trials. This paper reviews the history of CNS drug Discovery over the last 60 years and proposes a new paradigm based on the lessons learned. The initial wave of successful therapeutics discovered using careful clinical observations was followed by an emphasis on a phenotypic target-agnostic approach, often leading to successful drugs with a rich pharmacology. The subsequent introduction of molecular biology and the focus on a target-driven strategy has largely dominated drug discovery efforts over the last 30 years, but has not increased the probability of success, because these highly selective molecules are unlikely to address the complex pathological phenotypes of most CNS disorders. In many cases, reliance on preclinical animal models has lacked robust translational power. We argue that Quantitative Systems Pharmacology (QSP), a mechanism-based computer model of biological processes informed by preclinical knowledge and enhanced by neuroimaging and clinical data could be a new powerful knowledge generator engine and paradigm for rational polypharmacy. Progress in the academic discipline of computational neurosciences, allows one to model the effect of pathology and therapeutic interventions on neuronal circuit firing activity that can relate to clinical phenotypes, driven by complex properties of specific brain region activation states. The model is validated by optimizing the correlation between relevant emergent properties of these neuronal circuits and historical clinical and imaging datasets. A rationally designed polypharmacy target profile will be discovered using reverse engineering and sensitivity analysis. Small molecules will be identified using a combination of Artificial Intelligence methods and computational modeling, tested subsequently in heterologous cellular systems with human targets. Animal models will be used to establish target engagement and for ADME-Tox, with the QSP approach complemented by preclinical models that can be further refined to increase predictive validity. The QSP platform can also mitigate the variability in clinical trials with the concept of virtual patients. Because the QSP platform integrates knowledge from a wide variety of sources in an actionable simulation, it offers the possibility of substantially improving the success rate of CNS R&D programs while, at the same time, reducing both cost and the number of animals.
由于用于中枢神经系统适应症的药物成功率处于历史低点,因此需要新的方法来扭转临床试验失败的局面。本文回顾了过去60年中枢神经系统药物研发的历史,并根据所吸取的经验教训提出了一种新的范式。最初,通过仔细的临床观察发现了一波成功的治疗方法,随后重点转向了表型靶点无偏向性方法,这常常带来具有丰富药理作用的成功药物。随后分子生物学的引入以及对靶点驱动策略的关注在过去30年中主导了药物研发工作,但并未提高成功的概率,因为这些高度选择性的分子不太可能解决大多数中枢神经系统疾病复杂的病理表型。在许多情况下,对临床前动物模型的依赖缺乏强大的转化能力。我们认为,定量系统药理学(QSP),一种基于机制的生物过程计算机模型,由临床前知识提供信息,并通过神经影像学和临床数据得到增强,可能成为一种新的强大的知识生成引擎和合理联合用药的范式。计算神经科学学术领域的进展使得人们能够对病理和治疗干预对神经元回路放电活动的影响进行建模,这种影响可能与临床表型相关,这是由特定脑区激活状态的复杂特性驱动的。该模型通过优化这些神经元回路的相关涌现特性与历史临床和影像数据集之间的相关性来进行验证。将使用逆向工程和敏感性分析来发现合理设计的联合用药靶点谱。将结合人工智能方法和计算建模来识别小分子,随后在具有人类靶点的异源细胞系统中进行测试。动物模型将用于确定靶点结合情况以及进行药物代谢动力学-药物毒理学研究,QSP方法将辅以可进一步优化以提高预测有效性的临床前模型。QSP平台还可以通过虚拟患者的概念来减轻临床试验中的变异性。由于QSP平台在可操作的模拟中整合了来自各种来源的知识,它提供了大幅提高中枢神经系统研发项目成功率的可能性,同时降低成本和动物数量。