机器学习和实验验证的整合揭示了新的降脂候选药物。

IF 6.9 1区 医学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Jing-Hong Chen, Ke-Xin Li, Chao-Fan Fan, Hong Yang, Zhi-Rou Zhang, Yi-Han Chen, Chang Qi, Ang-Hua Li, An-Qi Lin, Xin Chen, Peng Luo
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引用次数: 0

摘要

高脂血症是心血管疾病的主要危险因素,与临床降脂药物的局限性有关。药物再利用策略加快了研究进程,降低了开发成本,为药物发现提供了一种创新方法。本研究采用系统文献法和指南复习法,编制了包含176种降脂药物和3254种非降脂药物的训练集。开发了多种机器学习模型来预测药物的降脂潜力。采用多层次验证策略,包括大规模回顾性临床数据分析、标准化动物研究、分子对接模拟和动力学分析。通过利用机器学习的综合筛选分析,确定了29种fda批准的具有降脂潜力的药物。临床数据分析证实,以阿加曲班为代表的4种候选药物具有降脂作用。在动物实验中,候选药物显著改善多项血脂参数。分子对接和动力学模拟阐明了候选药物与相关靶点相互作用的结合模式和稳定性。通过将最先进的机器学习技术与多层次验证方法相结合,我们成功地识别出多种具有降脂潜力的非降脂药物,从而为降脂药物提供了新的见解,建立了基于人工智能的药物重新定位研究范式,并扩大了临床医生可用的降脂药物库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integration of machine learning and experimental validation reveals new lipid-lowering drug candidates.

Hyperlipidemia, a major risk factor for cardiovascular diseases, is associated with limitations in clinical lipid-lowering medications. Drug repurposing strategies expedite the research process and mitigate development costs, offering an innovative approach to drug discovery. This study employed systematic literature and guidelines review to compile a training set comprising 176 lipid-lowering drugs and 3254 non-lipid-lowering drugs. Multiple machine learning models were developed to predict the lipid-lowering potential of drugs. A multi-tiered validation strategy was implemented, encompassing large-scale retrospective clinical data analysis, standardized animal studies, molecular docking simulations and dynamics analyses. Through a comprehensive screening analysis utilizing machine learning, 29 FDA-approved drugs with lipid-lowering potential were identified. Clinical data analysis confirmed that four candidate drugs, with Argatroban as the representative, demonstrated lipid-lowering effects. In animal experiments, the candidate drugs significantly improved multiple blood lipid parameters. Molecular docking and dynamics simulations elucidated the binding patterns and stability of candidate drugs in interaction with related targets. We successfully identified multiple non-lipid-lowering drugs with lipid-lowering potential by integrating state-of-the-art machine learning techniques with multi-level validation methods, thereby providing new insights into lipid-lowering drugs, establishing a paradigm for AI-based drug repositioning research, and expanding the repertoire of lipid-lowering medications available to clinicians.

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来源期刊
Acta Pharmacologica Sinica
Acta Pharmacologica Sinica 医学-化学综合
CiteScore
15.10
自引率
2.40%
发文量
4365
审稿时长
2 months
期刊介绍: APS (Acta Pharmacologica Sinica) welcomes submissions from diverse areas of pharmacology and the life sciences. While we encourage contributions across a broad spectrum, topics of particular interest include, but are not limited to: anticancer pharmacology, cardiovascular and pulmonary pharmacology, clinical pharmacology, drug discovery, gastrointestinal and hepatic pharmacology, genitourinary, renal, and endocrine pharmacology, immunopharmacology and inflammation, molecular and cellular pharmacology, neuropharmacology, pharmaceutics, and pharmacokinetics. Join us in sharing your research and insights in pharmacology and the life sciences.
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