Xu Yujie, Zhang Shengli, Zhu Feng, Liang Yunyun
School of Mathematics and Statistics, Xidian University, Xi'an, 710071, People's Republic of China.
Center for Translational Medicine, The First Affiliated Hospital of Xi'an Jiaotong University, Xi'an, 710061, People's Republic of China.
Sci Rep. 2024 Aug 8;14(1):18451. doi: 10.1038/s41598-024-69419-y.
As a class of biologically active molecules with significant immunomodulatory and anti-inflammatory effects, anti-inflammatory peptides have important application value in the medical and biotechnology fields due to their unique biological functions. Research on the identification of anti-inflammatory peptides provides important theoretical foundations and practical value for a deeper understanding of the biological mechanisms of inflammation and immune regulation, as well as for the development of new drugs and biotechnological applications. Therefore, it is necessary to develop more advanced computational models for identifying anti-inflammatory peptides. In this study, we propose a deep learning model named DAC-AIPs based on variational autoencoder and contrastive learning for accurate identification of anti-inflammatory peptides. In the sequence encoding part, the incorporation of multi-hot encoding helps capture richer sequence information. The autoencoder, composed of convolutional layers and linear layers, can learn latent features and reconstruct features, with variational inference enhancing the representation capability of latent features. Additionally, the introduction of contrastive learning aims to improve the model's classification ability. Through cross-validation and independent dataset testing experiments, DAC-AIPs achieves superior performance compared to existing state-of-the-art models. In cross-validation, the classification accuracy of DAC-AIPs reached around 88%, which is 7% higher than previous models. Furthermore, various ablation experiments and interpretability experiments validate the effectiveness of DAC-AIPs. Finally, a user-friendly online predictor is designed to enhance the practicality of the model, and the server is freely accessible at http://dac-aips.online .
作为一类具有显著免疫调节和抗炎作用的生物活性分子,抗炎肽因其独特的生物学功能在医学和生物技术领域具有重要的应用价值。抗炎肽的鉴定研究为深入理解炎症和免疫调节的生物学机制以及新药开发和生物技术应用提供了重要的理论基础和实用价值。因此,有必要开发更先进的计算模型来鉴定抗炎肽。在本研究中,我们提出了一种基于变分自编码器和对比学习的深度学习模型DAC-AIPs,用于准确鉴定抗炎肽。在序列编码部分,多热编码的加入有助于捕获更丰富的序列信息。由卷积层和线性层组成的自编码器可以学习潜在特征并重构特征,变分推理增强了潜在特征的表示能力。此外,引入对比学习旨在提高模型的分类能力。通过交叉验证和独立数据集测试实验,DAC-AIPs与现有的最先进模型相比具有卓越的性能。在交叉验证中,DAC-AIPs的分类准确率达到约88%,比之前的模型高7%。此外,各种消融实验和可解释性实验验证了DAC-AIPs的有效性。最后,设计了一个用户友好的在线预测器以增强模型的实用性,服务器可通过http://dac-aips.online免费访问。