School of Mega Data, Jiangxi Institute of Fashion Technology, 330201, Nanchang, Jiangxi, China.
Business School, Jiangxi Institute of Fashion Technology, 330201, Nanchang, Jiangxi, China.
Anal Biochem. 2024 Apr;687:115460. doi: 10.1016/j.ab.2024.115460. Epub 2024 Jan 7.
SUMOylation is a protein post-translational modification that plays an essential role in cellular functions. For predicting SUMO sites, numerous researchers have proposed advanced methods based on ordinary machine learning algorithms. These reported methods have shown excellent predictive performance, but there is room for improvement. In this study, we constructed a novel deep neural network Residual Pyramid Network (RsFPN), and developed an ensemble deep learning predictor called iSUMO-RsFPN. Initially, three feature extraction methods were employed to extract features from samples. Following this, weak classifiers were trained based on RsFPN for each feature type. Ultimately, the weak classifiers were integrated to construct the final classifier. Moreover, the predictor underwent systematically testing on an independent test dataset, where the results demonstrated a significant improvement over the existing state-of-the-art predictors. The code of iSUMO-RsFPN is free and available at https://github.com/454170054/iSUMO-RsFPN.
SUMOylation 是一种蛋白质翻译后修饰,在细胞功能中起着至关重要的作用。为了预测 SUMO 位点,许多研究人员已经提出了基于普通机器学习算法的先进方法。这些报道的方法已经表现出了优异的预测性能,但仍有改进的空间。在这项研究中,我们构建了一种新的深度神经网络 Residual Pyramid Network (RsFPN),并开发了一种名为 iSUMO-RsFPN 的集成深度学习预测器。首先,我们使用三种特征提取方法从样本中提取特征。然后,我们基于 RsFPN 为每种特征类型训练弱分类器。最终,将弱分类器集成构建最终的分类器。此外,我们在一个独立的测试数据集上对该预测器进行了系统测试,结果表明该预测器明显优于现有的最先进的预测器。iSUMO-RsFPN 的代码是免费的,并可在 https://github.com/454170054/iSUMO-RsFPN 上获得。