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计算神经科学和定量系统药理学:支持神经退行性疾病药物开发的强大组合。

Computational neurosciences and quantitative systems pharmacology: a powerful combination for supporting drug development in neurodegenerative diseases.

机构信息

Certara-US, Princeton, USA.

Downstate Health Science University, State University of New York, Brooklyn, USA.

出版信息

J Pharmacokinet Pharmacodyn. 2024 Oct;51(5):563-573. doi: 10.1007/s10928-023-09876-6. Epub 2023 Jul 28.

Abstract

Successful clinical development of new therapeutic interventions is notoriously difficult, especially in neurodegenerative diseases, where predictive biomarkers are scarce and functional improvement is often based on patient's perception, captured by structured interviews. As a consequence, mechanistic modeling of the processes relevant to therapeutic interventions in CNS disorders has been lagging behind other disease indications, probably because of the perceived complexity of the brain. However in this report, we develop the argument that a combination of Computational Neurosciences and Quantitative Systems Pharmacology (QSP) modeling of molecular pathways is a powerful simulation tool to enhance the probability of successful drug development for neurodegenerative diseases. Computational Neurosciences aims to predict action potential dynamics and neuronal circuit activation that are ultimately linked to behavioral changes and clinically relevant functional outcomes. These processes can not only be affected by the disease state, but also by common genotype variants on neurotransmitter-related proteins and the psycho-active medications often prescribed in these patient populations. Quantitative Systems Pharmacology (QSP) modeling of molecular pathways allows to simulate key pathological drivers of dementia, such as protein aggregation and neuroinflammatory responses. They often impact neurotransmitter homeostasis and voltage-gated ion-channels or lead to mitochondrial dysfunction, ultimately leading to changes in action potential dynamics and clinical readouts. Combining these two modeling approaches can lead to better actionable understanding of the many non-linear pharmacodynamic processes active in the human diseased brain. Practical applications include a rational selection of the optimal doses in combination therapies, identification of subjects more likely to respond to treatment, a more balanced stratification of treatment arms in terms of comedications, disease status and common genotype variants and re-analysis of small clinical trials to uncover a possible clinical signal. Ultimately this will lead to a higher success rate of bringing new therapeutics to the right patient populations.

摘要

新治疗干预措施的临床成功开发是众所周知的困难,尤其是在神经退行性疾病中,预测生物标志物稀缺,功能改善通常基于患者的感知,通过结构化访谈来捕捉。因此,与中枢神经系统疾病治疗干预相关的机制建模一直落后于其他疾病指征,这可能是因为大脑的复杂性。然而,在本报告中,我们提出了这样的观点,即计算神经科学和定量系统药理学(QSP)分子途径建模的结合是增强神经退行性疾病药物开发成功概率的强大模拟工具。计算神经科学旨在预测动作电位动力学和神经元回路激活,这些最终与行为变化和临床相关的功能结果相关。这些过程不仅会受到疾病状态的影响,还会受到神经递质相关蛋白常见基因型变异和这些患者群体中经常开的精神活性药物的影响。定量系统药理学(QSP)分子途径建模可以模拟痴呆症的关键病理驱动因素,如蛋白质聚集和神经炎症反应。它们经常影响神经递质稳态和电压门控离子通道,或导致线粒体功能障碍,最终导致动作电位动力学和临床结果的变化。将这两种建模方法结合起来,可以更好地了解人类患病大脑中活跃的许多非线性药效学过程。实际应用包括合理选择联合治疗的最佳剂量、确定更有可能对治疗有反应的受试者、在药物治疗、疾病状态和常见基因型变异方面更平衡地分层治疗组、以及重新分析小型临床试验以发现可能的临床信号。最终,这将导致为正确的患者群体带来新疗法的成功率更高。

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