ERL-ProLiGraph: Enhanced representation learning on protein-ligand graph structured data for binding affinity prediction.

IF 2.8 4区 医学 Q3 CHEMISTRY, MEDICINAL Molecular Informatics Pub Date : 2024-10-15 DOI:10.1002/minf.202400044
Gloria Geine Paendong, Soualihou Ngnamsie Njimbouom, Candra Zonyfar, Jeong-Dong Kim
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Abstract

Predicting Protein-Ligand Binding Affinity (PLBA) is pivotal in drug development, as accurate estimations of PLBA expedite the identification of promising drug candidates for specific targets, thereby accelerating the drug discovery process. Despite substantial advancements in PLBA prediction, developing an efficient and more accurate method remains non-trivial. Unlike previous computer-aid PLBA studies which primarily using ligand SMILES and protein sequences represented as strings, this research introduces a Deep Learning-based method, the Enhanced Representation Learning on Protein-Ligand Graph Structured data for Binding Affinity Prediction (ERL-ProLiGraph). The unique aspect of this method is the use of graph representations for both proteins and ligands, intending to learn structural information continued from both to enhance the accuracy of PLBA predictions. In these graphs, nodes represent atomic structures, while edges depict chemical bonds and spatial relationship. The proposed model, leveraging deep-learning algorithms, effectively learns to correlate these graphical representations with binding affinities. This graph-based representations approach enhances the model's ability to capture the complex molecular interactions critical in PLBA. This work represents a promising advancement in computational techniques for protein-ligand binding prediction, offering a potential path toward more efficient and accurate predictions in drug development. Comparative analysis indicates that the proposed ERL-ProLiGraph outperforms previous models, showcasing notable efficacy and providing a more suitable approach for accurate PLBA predictions.

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ERL-ProLiGraph:用于结合亲和力预测的蛋白质配体图结构数据的增强表示学习。
预测蛋白质配体结合亲和力(PLBA)在药物开发中至关重要,因为准确估计 PLBA 可以加快针对特定靶点确定有前途的候选药物,从而加速药物发现过程。尽管在 PLBA 预测方面取得了长足的进步,但开发一种高效、更准确的方法仍然不是一件容易的事。与以往主要使用配体 SMILES 和以字符串表示的蛋白质序列的计算机辅助 PLBA 研究不同,本研究引入了一种基于深度学习的方法,即用于结合亲和力预测的蛋白质配体图结构化数据的增强表示学习(ERL-ProLiGraph)。该方法的独特之处在于同时使用蛋白质和配体的图表示法,目的是从蛋白质和配体中持续学习结构信息,以提高 PLBA 预测的准确性。在这些图中,节点代表原子结构,而边则描述化学键和空间关系。所提出的模型利用深度学习算法,有效地学习将这些图形表示与结合亲和力相关联。这种基于图的表示方法增强了模型捕捉 PLBA 中关键的复杂分子相互作用的能力。这项工作代表了蛋白质配体结合预测计算技术的一大进步,为药物开发中更高效、更准确的预测提供了一条潜在的途径。对比分析表明,所提出的 ERL-ProLiGraph 优于以前的模型,展示了显著的功效,为准确预测 PLBA 提供了更合适的方法。
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来源期刊
Molecular Informatics
Molecular Informatics CHEMISTRY, MEDICINAL-MATHEMATICAL & COMPUTATIONAL BIOLOGY
CiteScore
7.30
自引率
2.80%
发文量
70
审稿时长
3 months
期刊介绍: Molecular Informatics is a peer-reviewed, international forum for publication of high-quality, interdisciplinary research on all molecular aspects of bio/cheminformatics and computer-assisted molecular design. Molecular Informatics succeeded QSAR & Combinatorial Science in 2010. Molecular Informatics presents methodological innovations that will lead to a deeper understanding of ligand-receptor interactions, macromolecular complexes, molecular networks, design concepts and processes that demonstrate how ideas and design concepts lead to molecules with a desired structure or function, preferably including experimental validation. The journal''s scope includes but is not limited to the fields of drug discovery and chemical biology, protein and nucleic acid engineering and design, the design of nanomolecular structures, strategies for modeling of macromolecular assemblies, molecular networks and systems, pharmaco- and chemogenomics, computer-assisted screening strategies, as well as novel technologies for the de novo design of biologically active molecules. As a unique feature Molecular Informatics publishes so-called "Methods Corner" review-type articles which feature important technological concepts and advances within the scope of the journal.
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GDMol: Generative Double-Masking Self-Supervised Learning for Molecular Property Prediction. GCLmf: A Novel Molecular Graph Contrastive Learning Framework Based on Hard Negatives and Application in Toxicity Prediction. Chemoinformatics for corrosion science: Data-driven modeling of corrosion inhibition by organic molecules. ERL-ProLiGraph: Enhanced representation learning on protein-ligand graph structured data for binding affinity prediction. My 50 Years with Chemoinformatics.
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