An end-to-end method for predicting compound-protein interactions based on simplified homogeneous graph convolutional network and pre-trained language model

IF 7.1 2区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Yufang Zhang, Jiayi Li, Shenggeng Lin, Jianwei Zhao, Yi Xiong, Dong-Qing Wei
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引用次数: 0

Abstract

Identification of interactions between chemical compounds and proteins is crucial for various applications, including drug discovery, target identification, network pharmacology, and elucidation of protein functions. Deep neural network-based approaches are becoming increasingly popular in efficiently identifying compound-protein interactions with high-throughput capabilities, narrowing down the scope of candidates for traditional labor-intensive, time-consuming and expensive experimental techniques. In this study, we proposed an end-to-end approach termed SPVec-SGCN-CPI, which utilized simplified graph convolutional network (SGCN) model with low-dimensional and continuous features generated from our previously developed model SPVec and graph topology information to predict compound-protein interactions. The SGCN technique, dividing the local neighborhood aggregation and nonlinearity layer-wise propagation steps, effectively aggregates K-order neighbor information while avoiding neighbor explosion and expediting training. The performance of the SPVec-SGCN-CPI method was assessed across three datasets and compared against four machine learning- and deep learning-based methods, as well as six state-of-the-art methods. Experimental results revealed that SPVec-SGCN-CPI outperformed all these competing methods, particularly excelling in unbalanced data scenarios. By propagating node features and topological information to the feature space, SPVec-SGCN-CPI effectively incorporates interactions between compounds and proteins, enabling the fusion of heterogeneity. Furthermore, our method scored all unlabeled data in ChEMBL, confirming the top five ranked compound-protein interactions through molecular docking and existing evidence. These findings suggest that our model can reliably uncover compound-protein interactions within unlabeled compound-protein pairs, carrying substantial implications for drug re-profiling and discovery. In summary, SPVec-SGCN demonstrates its efficacy in accurately predicting compound-protein interactions, showcasing potential to enhance target identification and streamline drug discovery processes.

Scientific contributions

The methodology presented in this work not only enables the comparatively accurate prediction of compound-protein interactions but also, for the first time, take sample imbalance which is very common in real world and computation efficiency into consideration simultaneously, accelerating the target identification and drug discovery process.

基于简化同质图卷积网络和预训练语言模型的端到端化合物-蛋白质相互作用预测方法。
鉴定化合物与蛋白质之间的相互作用对于药物发现、靶点鉴定、网络药理学和阐明蛋白质功能等各种应用至关重要。基于深度神经网络的方法正变得越来越流行,这种方法具有高通量能力,能有效识别化合物与蛋白质之间的相互作用,缩小了传统劳动密集型、耗时且昂贵的实验技术的候选范围。在本研究中,我们提出了一种名为 SPVec-SGCN-CPI 的端到端方法,该方法利用简化图卷积网络(SGCN)模型,结合我们之前开发的模型 SPVec 和图拓扑信息生成的低维连续特征来预测化合物-蛋白质相互作用。SGCN 技术将局部邻域聚合和非线性分层传播步骤分开,有效地聚合了 K 阶邻域信息,同时避免了邻域爆炸,加快了训练速度。在三个数据集上评估了 SPVec-SGCN-CPI 方法的性能,并与四种基于机器学习和深度学习的方法以及六种最先进的方法进行了比较。实验结果表明,SPVec-SGCN-CPI 的性能优于所有这些竞争方法,尤其是在不平衡数据场景中表现突出。通过将节点特征和拓扑信息传播到特征空间,SPVec-SGCN-CPI 有效地结合了化合物和蛋白质之间的相互作用,实现了异质性融合。此外,我们的方法还对 ChEMBL 中所有未标记的数据进行了评分,通过分子对接和现有证据确认了排名前五的化合物-蛋白质相互作用。这些发现表明,我们的模型可以可靠地发现未标记化合物-蛋白质对中的化合物-蛋白质相互作用,对药物再筛选和发现具有重大意义。总之,SPVec-SGCN 证明了其在准确预测化合物-蛋白质相互作用方面的功效,展示了其在增强目标识别和简化药物发现过程方面的潜力。
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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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