MEG-PPIS: a fast protein-protein interaction site prediction method based on multi-scale graph information and equivariant graph neural network.

IF 4.4 3区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Bioinformatics Pub Date : 2024-04-18 DOI:10.1093/bioinformatics/btae269
Hongzhen Ding, Xue Li, Peifu Han, Xu Tian, Fengrui Jing, Shuang Wang, Tao Song, Hanjiao Fu, Na Kang
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Abstract

MOTIVATION Protein-protein interaction sites (PPIS) are crucial for deciphering protein action mechanisms and related medical research, which is the key issue in protein action research. Recent studies have shown that graph neural networks have achieved outstanding performance in predicting PPIS. However, these studies often neglect the modeling of information at different scales in the graph and the symmetry of protein molecules within three-dimensional space. RESULTS In response to this gap, this paper proposes the MEG-PPIS approach, a PPIS prediction method based on multi-scale graph information and E(n) equivariant graph neural network (EGNN). There are two channels in MEG-PPIS: the original graph and the subgraph obtained by graph pooling. The model can iteratively update the features of the original graph and subgraph through the weight-sharing EGNN. Subsequently, the max-pooling operation aggregates the updated features of the original graph and subgraph. Ultimately, the model feeds node features into the prediction layer to obtain prediction results. Comparative assessments against other methods on benchmark datasets reveal that MEG-PPIS achieves optimal performance across all evaluation metrics and gets the fastest runtime. Furthermore, specific case studies demonstrate that our method can predict more true positive and true negative sites than the current best method, proving that our model achieves better performance in the PPIS prediction task. AVAILABILITY AND IMPLEMENTATION The data and code are available at https://github.com/dhz234/MEG-PPIS.git.
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MEG-PPIS:基于多尺度图信息和等变图神经网络的蛋白质-蛋白质相互作用位点快速预测方法。
动机蛋白质-蛋白质相互作用位点(PPIS)对于破译蛋白质作用机制和相关医学研究至关重要,是蛋白质作用研究的关键问题。最近的研究表明,图神经网络在预测 PPIS 方面表现出色。针对这一不足,本文提出了基于多尺度图信息和 E(n) 等变图神经网络(EGNN)的 PPIS 预测方法--MEG-PPIS 方法。MEG-PPIS 有两个通道:原始图和图池化得到的子图。该模型可通过权重共享 EGNN 迭代更新原始图和子图的特征。随后,最大池化操作汇总原始图和子图的更新特征。最后,该模型将节点特征输入预测层,以获得预测结果。在基准数据集上与其他方法进行的比较评估显示,MEG-PPIS 在所有评估指标上都达到了最佳性能,并获得了最快的运行时间。此外,具体案例研究表明,与目前最好的方法相比,我们的方法能预测出更多的真阳性和真阴性站点,这证明我们的模型在 PPIS 预测任务中取得了更好的性能。可用性和实施数据和代码可在 https://github.com/dhz234/MEG-PPIS.git 上获取。
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来源期刊
Bioinformatics
Bioinformatics 生物-生化研究方法
CiteScore
11.20
自引率
5.20%
发文量
753
审稿时长
2.1 months
期刊介绍: The leading journal in its field, Bioinformatics publishes the highest quality scientific papers and review articles of interest to academic and industrial researchers. Its main focus is on new developments in genome bioinformatics and computational biology. Two distinct sections within the journal - Discovery Notes and Application Notes- focus on shorter papers; the former reporting biologically interesting discoveries using computational methods, the latter exploring the applications used for experiments.
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