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用于化合物药代动力学预测的人工智能

Artificial intelligence for compound pharmacokinetics prediction.

作者信息

Obrezanova Olga

机构信息

Imaging and Data Analytics, Clinical Pharmacology & Safety Sciences, R&D, AstraZeneca, Cambridge, CB4 0WJ, UK.

出版信息

Curr Opin Struct Biol. 2023 Apr;79:102546. doi: 10.1016/j.sbi.2023.102546. Epub 2023 Feb 15.

Abstract

Optimisation of compound pharmacokinetics (PK) is an integral part of drug discovery and development. Animal in vivo PK data as well as human and animal in vitro systems are routinely utilised to evaluate PK in humans. In recent years machine learning and artificial intelligence (AI) emerged as a major tool for modelling of in vivo animal and human PK, enabling prediction from chemical structure early in drug discovery, and therefore offering opportunities to guide the design and prioritisation of molecules based on relevant in vivo properties and, ultimately, predicting human PK at the point of design. This review presents recent advances in machine learning and AI models for in vivo animal and human PK for small-molecule compounds as well as some examples for antibody therapeutics.

摘要

化合物药代动力学(PK)优化是药物发现与开发的一个重要组成部分。动物体内PK数据以及人和动物的体外系统通常用于评估人体中的PK。近年来,机器学习和人工智能(AI)成为体内动物和人体PK建模的主要工具,能够在药物发现早期从化学结构进行预测,从而为基于相关体内特性指导分子设计和优先级排序提供机会,并最终在设计阶段预测人体PK。本文综述了小分子化合物体内动物和人体PK的机器学习和AI模型的最新进展以及抗体疗法的一些实例。

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