Key Laboratory of Biorheological Science and Technology, Ministry of Education, Bioengineering College, Chongqing University, Chongqing, 400030, China.
College of Life Sciences, Chongqing Normal University, Chongqing, 401331, China.
Comput Biol Med. 2023 Mar;154:106591. doi: 10.1016/j.compbiomed.2023.106591. Epub 2023 Jan 24.
Antioxidant peptides can protect against free radical-mediated diseases, especially food-derived antioxidant peptides are considered as potential competitors among synthetic antioxidants due to their safety, high activity and abundant sources. However, wet experimental methods can not meet the need for effectively screening and clearly elucidating the structure-activity relationship of antioxidant peptides. Therefore, it is particularly important to build a reliable prediction platform for antioxidant peptides. In this work, we developed a platform, AnOxPP, for prediction of antioxidant peptides using the bidirectional long short-term memory (BiLSTM) neural network. The sequence characteristics of peptides were converted into feature codes based on amino acid descriptors (AADs). Our results showed that the feature conversion ability of the combined-AADs optimized by the forward feature selection method was more accurate than that of the single-AADs. Especially, the model trained by the optimal descriptor SDPZ27 significantly outperformed the existing predictor on two independent test sets (Accuracy = 0.967 and 0.819, respectively). The SDPZ27-based AnOxPP learned four key structure-activity features of antioxidant peptides, with the following importance as steric properties > hydrophobic properties > electronic properties > hydrogen bond contributions. AnOxPP is a valuable tool for screening and design of peptide drugs, and the web-server is accessible at http://www.cqudfbp.net/AnOxPP/index.jsp.
抗氧化肽可以预防自由基介导的疾病,特别是来源于食物的抗氧化肽,由于其安全性、高活性和丰富的来源,被认为是合成抗氧化剂的潜在竞争者。然而,湿实验方法不能满足有效筛选和阐明抗氧化肽结构-活性关系的需要。因此,建立一个可靠的抗氧化肽预测平台尤为重要。在这项工作中,我们使用双向长短期记忆 (BiLSTM) 神经网络开发了一个用于预测抗氧化肽的平台 AnOxPP。基于氨基酸描述符 (AAD) 将肽的序列特征转换为特征码。我们的结果表明,通过前向特征选择方法优化的组合-AAD 的特征转换能力比单-AAD 更准确。特别是,由最优描述符 SDPZ27 训练的模型在两个独立的测试集上的表现明显优于现有的预测器 (Accuracy = 0.967 和 0.819)。基于 SDPZ27 的 AnOxPP 学习了抗氧化肽的四个关键结构-活性特征,其重要性顺序为空间性质>疏水性>电子性质>氢键贡献。AnOxPP 是筛选和设计肽类药物的有价值的工具,其网络服务器可在 http://www.cqudfbp.net/AnOxPP/index.jsp 访问。