Combining machine learning, molecular dynamics, and free energy analysis for (5HT)-2A receptor modulator classification

IF 2.7 4区 生物学 Q2 BIOCHEMICAL RESEARCH METHODS Journal of molecular graphics & modelling Pub Date : 2024-08-05 DOI:10.1016/j.jmgm.2024.108842
Xian Yu, Yasmine Eid, Maryam Jama, Diane Pham, Marawan Ahmed, Melika Shabani attar, Zainab Samiuddin, Khaled Barakat
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Abstract

The 5-Hydroxytryptamine (5HT)-2A receptor, a key target in psychoactive drug development, presents significant challenges in the design of selective compounds. Here, we describe the construction, evaluation and validation of two machine learning (ML) models for the classification of bioactivity mechanisms against the (5HT)-2A receptor. Employing neural networks and XGBoost models, we achieved an overall accuracy of around 87 %, which was further enhanced through molecular modelling (MM) (e.g. molecular dynamics simulations) and binding free energy analysis. This ML-MM integration provided insights into the mechanisms of direct modulators and prodrugs. A significant outcome of the current study is the development of a ‘binding free energy fingerprint’ specific to (5HT)-2A modulators, offering a novel metric for evaluating drug efficacy against this target. Our study demonstrates the prospective of employing a successful workflow combining AI with structural biology, offering a powerful tool for advancing psychoactive drug discovery.

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结合机器学习、分子动力学和自由能分析进行 (5HT)-2A 受体调节剂分类
5-Hydroxytryptamine (5HT)-2A receptor(5HT-2A 受体)是精神活性药物开发的一个关键靶点,它给选择性化合物的设计带来了巨大挑战。在此,我们介绍了针对 (5HT)-2A 受体生物活性机制分类的两种机器学习(ML)模型的构建、评估和验证。利用神经网络和 XGBoost 模型,我们实现了约 87% 的总体准确率,并通过分子建模(MM)(如分子动力学模拟)和结合自由能分析进一步提高了准确率。这种 ML-MM 整合使我们对直接调节剂和原药的机制有了更深入的了解。本研究的一个重要成果是开发出了(5HT)-2A 调节剂特有的 "结合自由能指纹",为评估针对该靶点的药物疗效提供了一种新的指标。我们的研究展示了采用人工智能与结构生物学相结合的成功工作流程的前景,为推动精神活性药物的发现提供了强有力的工具。
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来源期刊
Journal of molecular graphics & modelling
Journal of molecular graphics & modelling 生物-计算机:跨学科应用
CiteScore
5.50
自引率
6.90%
发文量
216
审稿时长
35 days
期刊介绍: The Journal of Molecular Graphics and Modelling is devoted to the publication of papers on the uses of computers in theoretical investigations of molecular structure, function, interaction, and design. The scope of the journal includes all aspects of molecular modeling and computational chemistry, including, for instance, the study of molecular shape and properties, molecular simulations, protein and polymer engineering, drug design, materials design, structure-activity and structure-property relationships, database mining, and compound library design. As a primary research journal, JMGM seeks to bring new knowledge to the attention of our readers. As such, submissions to the journal need to not only report results, but must draw conclusions and explore implications of the work presented. Authors are strongly encouraged to bear this in mind when preparing manuscripts. Routine applications of standard modelling approaches, providing only very limited new scientific insight, will not meet our criteria for publication. Reproducibility of reported calculations is an important issue. Wherever possible, we urge authors to enhance their papers with Supplementary Data, for example, in QSAR studies machine-readable versions of molecular datasets or in the development of new force-field parameters versions of the topology and force field parameter files. Routine applications of existing methods that do not lead to genuinely new insight will not be considered.
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