Future Directions for Quantitative Systems Pharmacology.

Q1 Pharmacology, Toxicology and Pharmaceutics Handbook of experimental pharmacology Pub Date : 2025-01-16 DOI:10.1007/164_2024_737
Birgit Schoeberl, Cynthia J Musante, Saroja Ramanujan
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Abstract

In this chapter, we envision the future of Quantitative Systems Pharmacology (QSP) which integrates closely with emerging data and technologies including advanced analytics, novel experimental technologies, and diverse and larger datasets. Machine learning (ML) and Artificial Intelligence (AI) will increasingly help QSP modelers to find, prepare, integrate, and exploit larger and diverse datasets, as well as build, parameterize, and simulate models. We picture QSP models being applied during all stages of drug discovery and development: During the discovery stages, QSP models predict the early human experience of in silico compounds created by generative AI. In preclinical development, QSP will integrate with non-animal "new approach methodologies" and reverse-translated datasets to improve understanding of and translation to the human patient. During clinical development, integration with complementary modeling approaches and multimodal patient data will create multidimensional digital twins and virtual populations for clinical trial simulations that guide clinical development and point to opportunities for precision medicine. QSP can evolve into this future by (1) pursuing high-impact applications enabled by novel experimental and quantitative technologies and data types; (2) integrating closely with analytical and computational advancements; and (3) increasing efficiencies through automation, standardization, and model reuse. In this vision, the QSP expert will play a critical role in designing strategies, evaluating data, staging and executing analyses, verifying, interpreting, and communicating findings, and ensuring the ethical, safe, and rational application of novel data types, technologies, and advanced analytics including AI/ML.

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定量系统药理学的未来方向。
在本章中,我们展望了定量系统药理学(QSP)的未来,它与新兴数据和技术紧密结合,包括先进的分析,新颖的实验技术,以及多样化和更大的数据集。机器学习(ML)和人工智能(AI)将越来越多地帮助QSP建模者寻找、准备、集成和利用更大、更多样化的数据集,以及构建、参数化和模拟模型。我们描绘了QSP模型在药物发现和开发的各个阶段的应用:在发现阶段,QSP模型预测了由生成式人工智能创建的硅化合物的早期人类体验。在临床前开发中,QSP将与非动物“新方法方法”和反向翻译数据集相结合,以提高对人类患者的理解和翻译。在临床开发过程中,与互补建模方法和多模态患者数据的集成将为临床试验模拟创建多维数字双胞胎和虚拟人群,从而指导临床开发并指出精准医疗的机会。QSP可以通过以下方式向未来发展:(1)追求由新颖的实验和定量技术和数据类型实现的高影响力应用;(2)与分析和计算技术紧密结合;(3)通过自动化、标准化和模型重用来提高效率。在这一愿景中,QSP专家将在设计策略、评估数据、分期和执行分析、验证、解释和沟通结果,以及确保新数据类型、技术和高级分析(包括AI/ML)的道德、安全和合理应用方面发挥关键作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Handbook of experimental pharmacology
Handbook of experimental pharmacology Pharmacology, Toxicology and Pharmaceutics-Pharmacology, Toxicology and Pharmaceutics (all)
CiteScore
5.20
自引率
0.00%
发文量
54
期刊介绍: The Handbook of Experimental Pharmacology is one of the most authoritative and influential book series in pharmacology. It provides critical and comprehensive discussions of the most significant areas of pharmacological research, written by leading international authorities. Each volume in the series represents the most informative and contemporary account of its subject available, making it an unrivalled reference source.
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