Learnt representations of proteins can be used for accurate prediction of small molecule binding sites on experimentally determined and predicted protein structures

IF 7.1 2区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY Journal of Cheminformatics Pub Date : 2024-03-14 DOI:10.1186/s13321-024-00821-4
Anna Carbery, Martin Buttenschoen, Rachael Skyner, Frank von Delft, Charlotte M. Deane
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Abstract

Protein-ligand binding site prediction is a useful tool for understanding the functional behaviour and potential drug-target interactions of a novel protein of interest. However, most binding site prediction methods are tested by providing crystallised ligand-bound (holo) structures as input. This testing regime is insufficient to understand the performance on novel protein targets where experimental structures are not available. An alternative option is to provide computationally predicted protein structures, but this is not commonly tested. However, due to the training data used, computationally-predicted protein structures tend to be extremely accurate, and are often biased toward a holo conformation. In this study we describe and benchmark IF-SitePred, a protein-ligand binding site prediction method which is based on the labelling of ESM-IF1 protein language model embeddings combined with point cloud annotation and clustering. We show that not only is IF-SitePred competitive with state-of-the-art methods when predicting binding sites on experimental structures, but it performs better on proxies for novel proteins where low accuracy has been simulated by molecular dynamics. Finally, IF-SitePred outperforms other methods if ensembles of predicted protein structures are generated.

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蛋白质的学习表示法可用于准确预测实验确定和预测的蛋白质结构上的小分子结合位点。
蛋白质-配体结合位点预测是了解感兴趣的新蛋白质的功能行为和潜在药物-靶点相互作用的有用工具。然而,大多数结合位点预测方法都是通过提供结晶配体结合(整体)结构作为输入进行测试的。在没有实验结构的情况下,这种测试方法不足以了解新蛋白质靶点的性能。另一种方法是提供计算预测的蛋白质结构,但这种方法并不常用。然而,由于使用了训练数据,计算预测的蛋白质结构往往非常准确,而且往往偏向于整体构象。在本研究中,我们介绍了 IF-SitePred,这是一种基于 ESM-IF1 蛋白语言模型嵌入的标注与点云注释和聚类相结合的蛋白质配体结合部位预测方法,并对其进行了基准测试。我们的研究表明,IF-SitePred 在预测实验结构上的结合位点时,不仅能与最先进的方法相媲美,而且在分子动力学模拟低准确度的新型蛋白质代理上表现更好。最后,如果生成预测的蛋白质结构集合,IF-SitePred 的表现也优于其他方法。
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来源期刊
Journal of Cheminformatics
Journal of Cheminformatics CHEMISTRY, MULTIDISCIPLINARY-COMPUTER SCIENCE, INFORMATION SYSTEMS
CiteScore
14.10
自引率
7.00%
发文量
82
审稿时长
3 months
期刊介绍: Journal of Cheminformatics is an open access journal publishing original peer-reviewed research in all aspects of cheminformatics and molecular modelling. Coverage includes, but is not limited to: chemical information systems, software and databases, and molecular modelling, chemical structure representations and their use in structure, substructure, and similarity searching of chemical substance and chemical reaction databases, computer and molecular graphics, computer-aided molecular design, expert systems, QSAR, and data mining techniques.
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