Center for Research Innovation and Biomedical Informatics, Faculty of Medical Technology, Mahidol University, Bangkok, 10700, Thailand.
Department of Zoology, Faculty of Science, Kasetsart University, Bangkok, 10900, Thailand.
Sci Rep. 2024 Feb 23;14(1):4463. doi: 10.1038/s41598-024-55160-z.
The voltage-gated sodium (Na) channel is a crucial molecular component responsible for initiating and propagating action potentials. While the α subunit, forming the channel pore, plays a central role in this function, the complete physiological function of Na channels relies on crucial interactions between the α subunit and auxiliary proteins, known as protein-protein interactions (PPI). Na blocking peptides (NaBPs) have been recognized as a promising and alternative therapeutic agent for pain and itch. Although traditional experimental methods can precisely determine the effect and activity of NaBPs, they remain time-consuming and costly. Hence, machine learning (ML)-based methods that are capable of accurately contributing in silico prediction of NaBPs are highly desirable. In this study, we develop an innovative meta-learning-based NaBP prediction method (MetaNaBP). MetaNaBP generates new feature representations by employing a wide range of sequence-based feature descriptors that cover multiple perspectives, in combination with powerful ML algorithms. Then, these feature representations were optimized to identify informative features using a two-step feature selection method. Finally, the selected informative features were applied to develop the final meta-predictor. To the best of our knowledge, MetaNaBP is the first meta-predictor for NaBP prediction. Experimental results demonstrated that MetaNaBP achieved an accuracy of 0.948 and a Matthews correlation coefficient of 0.898 over the independent test dataset, which were 5.79% and 11.76% higher than the existing method. In addition, the discriminative power of our feature representations surpassed that of conventional feature descriptors over both the training and independent test datasets. We anticipate that MetaNaBP will be exploited for the large-scale prediction and analysis of NaBPs to narrow down the potential NaBPs.
电压门控钠离子 (Na) 通道是启动和传播动作电位的关键分子组成部分。虽然形成通道孔的α亚基在该功能中起着核心作用,但 Na 通道的完整生理功能依赖于α亚基与辅助蛋白之间的关键相互作用,称为蛋白质-蛋白质相互作用 (PPI)。Na 阻断肽 (NaBP) 已被认为是治疗疼痛和瘙痒的一种有前途和替代的治疗剂。尽管传统的实验方法可以精确确定 NaBP 的作用和活性,但它们仍然耗时且昂贵。因此,能够准确进行 NaBP 计算预测的基于机器学习 (ML) 的方法是非常需要的。在这项研究中,我们开发了一种基于元学习的创新 NaBP 预测方法 (MetaNaBP)。MetaNaBP 通过使用广泛的基于序列的特征描述符生成新的特征表示,这些特征描述符涵盖了多个角度,并结合了强大的 ML 算法。然后,使用两步特征选择方法对这些特征表示进行优化,以识别有信息的特征。最后,将选择的有信息特征应用于开发最终的元预测器。据我们所知,MetaNaBP 是第一个用于 NaBP 预测的元预测器。实验结果表明,MetaNaBP 在独立测试数据集上的准确率为 0.948,马修斯相关系数为 0.898,比现有方法分别高 5.79%和 11.76%。此外,我们的特征表示在训练集和独立测试集上的区分能力均超过了传统特征描述符。我们预计 MetaNaBP 将被用于大规模预测和分析 NaBP,以缩小潜在的 NaBP 范围。