Linking machine learning and biophysical structural features in drug discovery.

IF 3.9 3区 生物学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Frontiers in Molecular Biosciences Pub Date : 2025-01-23 eCollection Date: 2024-01-01 DOI:10.3389/fmolb.2024.1305272
Armin Ahmadi, Shivangi Gupta, Vineetha Menon, Jerome Baudry
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引用次数: 0

Abstract

Introduction: Machine learning methods were applied to analyze pharmacophore features derived from four protein-binding sites, aiming to identify key features associated with ligand-specific protein conformations.

Methods: Using molecular dynamics simulations, we generated an ensemble of protein conformations to capture the dynamic nature of their binding sites. By leveraging pharmacophore descriptors, the AI/ML framework prioritized features uniquely associated with ligand-selected conformations, enabling a mechanism-driven understanding of binding interactions. This novel approach integrates biophysical insights with machine learning, focusing on pharmacophoric properties such as charge, hydrogen bonding, hydrophobicity, and aromaticity.

Results: Results showed significant enrichment of true positive ligands-improving database enrichment by up to 54-fold compared to random selection-demonstrating the robustness of this approach across diverse proteins.

Conclusion: Unlike conventional structure-based or ligand-based screening methods, this work emphasizes the role of specific protein conformations in driving ligand binding, making the process highly interpretable and actionable for drug discovery. The key innovation lies in identifying pharmacophore features tied to conformations selected by ligands, offering a predictive framework for optimizing drug candidates. This study illustrates the potential of combining ML and pharmacophoric analysis to develop intuitive and mechanism-driven tools for lead optimization and rational drug design.

将机器学习与药物发现中的生物物理结构特征联系起来。
介绍:应用机器学习方法分析来自四个蛋白质结合位点的药效团特征,旨在识别与配体特异性蛋白质构象相关的关键特征。方法:利用分子动力学模拟,我们生成了一个蛋白质构象集合,以捕捉它们结合位点的动态性质。通过利用药效团描述符,AI/ML框架优先考虑与配体选择构象唯一相关的特征,从而实现对结合相互作用的机制驱动理解。这种新颖的方法将生物物理见解与机器学习相结合,专注于药效性质,如电荷、氢键、疏水性和芳香性。结果:结果显示了真正配体的显著富集-与随机选择相比,数据库富集程度提高了54倍-证明了该方法在不同蛋白质中的稳健性。结论:与传统的基于结构或基于配体的筛选方法不同,这项工作强调了特定蛋白质构象在驱动配体结合中的作用,使该过程具有高度的可解释性和可操作性,可用于药物发现。关键的创新在于识别与配体选择的构象相关的药效团特征,为优化候选药物提供预测框架。这项研究表明,将ML和药效分析结合起来,可以开发出直观的、机制驱动的工具,用于先导物优化和合理的药物设计。
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来源期刊
Frontiers in Molecular Biosciences
Frontiers in Molecular Biosciences Biochemistry, Genetics and Molecular Biology-Biochemistry
CiteScore
7.20
自引率
4.00%
发文量
1361
审稿时长
14 weeks
期刊介绍: Much of contemporary investigation in the life sciences is devoted to the molecular-scale understanding of the relationships between genes and the environment — in particular, dynamic alterations in the levels, modifications, and interactions of cellular effectors, including proteins. Frontiers in Molecular Biosciences offers an international publication platform for basic as well as applied research; we encourage contributions spanning both established and emerging areas of biology. To this end, the journal draws from empirical disciplines such as structural biology, enzymology, biochemistry, and biophysics, capitalizing as well on the technological advancements that have enabled metabolomics and proteomics measurements in massively parallel throughput, and the development of robust and innovative computational biology strategies. We also recognize influences from medicine and technology, welcoming studies in molecular genetics, molecular diagnostics and therapeutics, and nanotechnology. Our ultimate objective is the comprehensive illustration of the molecular mechanisms regulating proteins, nucleic acids, carbohydrates, lipids, and small metabolites in organisms across all branches of life. In addition to interesting new findings, techniques, and applications, Frontiers in Molecular Biosciences will consider new testable hypotheses to inspire different perspectives and stimulate scientific dialogue. The integration of in silico, in vitro, and in vivo approaches will benefit endeavors across all domains of the life sciences.
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