Bioinformatics Center, Insititute for Chemical Research, Kyoto University, Gokasho, Uji, Kyoto, 611-0011, Japan.
Institute of Bioinformatics and Systems Biology, National Yang Ming Chiao Tung University, Hsinchu, 300, Taiwan.
Sci Rep. 2022 Jan 7;12(1):229. doi: 10.1038/s41598-021-04230-7.
Protein kinase-inhibitor interactions are key to the phosphorylation of proteins involved in cell proliferation, differentiation, and apoptosis, which shows the importance of binding mechanism research and kinase inhibitor design. In this study, a novel machine learning module (i.e., the WL Box) was designed and assembled to the Prediction of Interaction Sites of Protein Kinase Inhibitors (PISPKI) model, which is a graph convolutional neural network (GCN) to predict the interaction sites of protein kinase inhibitors. The WL Box is a novel module based on the well-known Weisfeiler-Lehman algorithm, which assembles multiple switch weights to effectively compute graph features. The PISPKI model was evaluated by testing with shuffled datasets and ablation analysis using 11 kinase classes. The accuracy of the PISPKI model with the shuffled datasets varied from 83 to 86%, demonstrating superior performance compared to two baseline models. The effectiveness of the model was confirmed by testing with shuffled datasets. Furthermore, the performance of each component of the model was analyzed via the ablation study, which demonstrated that the WL Box module was critical. The code is available at https://github.com/feiqiwang/PISPKI .
蛋白激酶抑制剂相互作用是参与细胞增殖、分化和凋亡的蛋白质磷酸化的关键,这表明结合机制研究和激酶抑制剂设计的重要性。在这项研究中,设计并组装了一个新的机器学习模块(即 WL 框)到预测蛋白激酶抑制剂相互作用位点(PISPKI)模型中,该模型是一个图卷积神经网络(GCN),用于预测蛋白激酶抑制剂的相互作用位点。WL 框是一个基于著名的 Weisfeiler-Lehman 算法的新模块,它组合了多个开关权重,以有效地计算图特征。使用 11 种激酶类别的随机数据集测试和消融分析评估了 PISPKI 模型。PISPKI 模型在随机数据集上的准确率在 83%到 86%之间,与两个基线模型相比表现出色。通过随机数据集测试证实了模型的有效性。此外,通过消融研究分析了模型的每个组件的性能,结果表明 WL 框模块至关重要。代码可在 https://github.com/feiqiwang/PISPKI 获得。