Improved Prediction of Ligand-Protein Binding Affinities by Meta-modeling.

IF 5.6 2区 化学 Q1 CHEMISTRY, MEDICINAL
Ho-Joon Lee, Prashant S Emani, Mark B Gerstein
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引用次数: 0

Abstract

The accurate screening of candidate drug ligands against target proteins through computational approaches is of prime interest to drug development efforts. Such virtual screening depends in part on methods to predict the binding affinity between ligands and proteins. Many computational models for binding affinity prediction have been developed, but with varying results across targets. Given that ensembling or meta-modeling approaches have shown great promise in reducing model-specific biases, we develop a framework to integrate published force-field-based empirical docking and sequence-based deep learning models. In building this framework, we evaluate many combinations of individual base models, training databases, and several meta-modeling approaches. We show that many of our meta-models significantly improve affinity predictions over base models. Our best meta-models achieve comparable performance to state-of-the-art deep learning tools exclusively based on 3D structures while allowing for improved database scalability and flexibility through the explicit inclusion of features such as physicochemical properties or molecular descriptors. We further demonstrate improved generalization capability by our models using a large-scale benchmark of affinity prediction as well as a virtual screening application benchmark. Overall, we demonstrate that diverse modeling approaches can be ensembled together to gain meaningful improvement in binding affinity prediction.

通过元建模改进配体与蛋白质结合亲和力的预测。
通过计算方法针对目标蛋白质准确筛选候选药物配体,是药物开发工作的重中之重。这种虚拟筛选部分取决于配体与蛋白质之间结合亲和力的预测方法。目前已开发出许多用于预测结合亲和力的计算模型,但不同靶标的结果各不相同。鉴于集合或元建模方法在减少特定模型偏差方面已显示出巨大前景,我们开发了一个框架来整合已发表的基于力场的经验对接和基于序列的深度学习模型。在构建这一框架的过程中,我们对单个基础模型、训练数据库和几种元建模方法的多种组合进行了评估。我们的研究表明,与基础模型相比,我们的许多元模型都能显著提高亲和力预测。我们的最佳元模型与完全基于三维结构的最先进深度学习工具性能相当,同时通过明确纳入理化性质或分子描述符等特征,提高了数据库的可扩展性和灵活性。我们还利用大规模亲和力预测基准和虚拟筛选应用基准进一步证明了我们的模型具有更强的泛化能力。总之,我们证明了多种建模方法可以组合在一起,从而在结合亲和力预测方面获得有意义的改进。
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
CiteScore
9.80
自引率
10.70%
发文量
529
审稿时长
1.4 months
期刊介绍: The Journal of Chemical Information and Modeling publishes papers reporting new methodology and/or important applications in the fields of chemical informatics and molecular modeling. Specific topics include the representation and computer-based searching of chemical databases, molecular modeling, computer-aided molecular design of new materials, catalysts, or ligands, development of new computational methods or efficient algorithms for chemical software, and biopharmaceutical chemistry including analyses of biological activity and other issues related to drug discovery. Astute chemists, computer scientists, and information specialists look to this monthly’s insightful research studies, programming innovations, and software reviews to keep current with advances in this integral, multidisciplinary field. As a subscriber you’ll stay abreast of database search systems, use of graph theory in chemical problems, substructure search systems, pattern recognition and clustering, analysis of chemical and physical data, molecular modeling, graphics and natural language interfaces, bibliometric and citation analysis, and synthesis design and reactions databases.
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