Jia Jianhua, Lv Peinuo, Wei Xin, Qiu Wangren
Computer Department, Jingdezhen Ceramic University, Jingdezhen, 330403, China.
Business School, Jiangxi Institute of Fashion Technology, Nanchang, 330201, China.
Heliyon. 2023 Dec 3;10(1):e23187. doi: 10.1016/j.heliyon.2023.e23187. eCollection 2024 Jan 15.
Protein -nitrosylation is a reversible oxidative reduction post-translational modification that is widely present in the biological community. -nitrosylation can regulate protein function and is closely associated with a variety of diseases, thus identifying -nitrosylation sites are crucial for revealing the function of proteins and related drug discovery. Traditional experimental methods are time-consuming and expensive; therefore, it is necessary to explore more efficient computational methods. Deep learning algorithms perform well in the field of bioinformatics sites prediction, and many studies show that they outperform existing machine learning algorithms. In this work, we proposed a deep learning algorithm-based predictor SNO-DCA for distinguishing between -nitrosylated and non--nitrosylated sequences. First, one-hot encoding of protein sequences was performed. Second, the dense convolutional blocks were used to capture feature information, and an attention module was added to weigh different features to improve the prediction ability of the model. The 10-fold cross-validation and independent testing experimental results show that our SNO-DCA model outperforms existing -nitrosylation sites prediction models under imbalanced data. In this paper, a web server prediction website: https://sno.cangmang.xyz/SNO-DCA/was established to provide an online prediction service for users. SNO-DCA can be available at https://github.com/peanono/SNO-DCA.
蛋白质亚硝基化是一种广泛存在于生物界的可逆氧化还原翻译后修饰。亚硝基化可调节蛋白质功能,并与多种疾病密切相关,因此识别亚硝基化位点对于揭示蛋白质功能和相关药物研发至关重要。传统实验方法耗时且昂贵;因此,有必要探索更高效的计算方法。深度学习算法在生物信息学位点预测领域表现出色,许多研究表明它们优于现有的机器学习算法。在这项工作中,我们提出了一种基于深度学习算法的预测器SNO-DCA,用于区分亚硝基化和非亚硝基化序列。首先,对蛋白质序列进行独热编码。其次,使用密集卷积块来捕获特征信息,并添加注意力模块对不同特征进行加权,以提高模型的预测能力。十折交叉验证和独立测试实验结果表明,在数据不平衡的情况下,我们的SNO-DCA模型优于现有的亚硝基化位点预测模型。本文建立了一个网络服务器预测网站:https://sno.cangmang.xyz/SNO-DCA/,为用户提供在线预测服务。SNO-DCA可在https://github.com/peanono/SNO-DCA获取。