School of Information and Communication Technology, Hanoi University of Science and Technology, Hanoi, Vietnam.
School of Mathematics and Statistics, Victoria University of Wellington, Wellington, New Zealand.
Proteomics. 2024 Jul;24(14):e2300382. doi: 10.1002/pmic.202300382. Epub 2024 Jun 4.
Short-length antimicrobial peptides (AMPs) have been demonstrated to have intensified antimicrobial activities against a wide spectrum of microbes. Therefore, exploration of novel and promising short AMPs is highly essential in developing various types of antimicrobial drugs or treatments. In addition to experimental approaches, computational methods have been developed to improve screening efficiency. Although existing computational methods have achieved satisfactory performance, there is still much room for model improvement. In this study, we proposed iAMP-DL, an efficient hybrid deep learning architecture, for predicting short AMPs. The model was constructed using two well-known deep learning architectures: the long short-term memory architecture and convolutional neural networks. To fairly assess the performance of the model, we compared our model with existing state-of-the-art methods using the same independent test set. Our comparative analysis shows that iAMP-DL outperformed other methods. Furthermore, to assess the robustness and stability of our model, the experiments were repeated 10 times to observe the variation in prediction efficiency. The results demonstrate that iAMP-DL is an effective, robust, and stable framework for detecting promising short AMPs. Another comparative study of different negative data sampling methods also confirms the effectiveness of our method and demonstrates that it can also be used to develop a robust model for predicting AMPs in general. The proposed framework was also deployed as an online web server with a user-friendly interface to support the research community in identifying short AMPs.
短长度抗菌肽 (AMPs) 已被证明对广谱微生物具有增强的抗菌活性。因此,探索新型有前途的短 AMPs 对于开发各种类型的抗菌药物或治疗方法至关重要。除了实验方法外,还开发了计算方法来提高筛选效率。尽管现有的计算方法已经取得了令人满意的性能,但模型改进仍有很大的空间。在这项研究中,我们提出了 iAMP-DL,这是一种用于预测短 AMPs 的高效混合深度学习架构。该模型使用两种著名的深度学习架构:长短期记忆架构和卷积神经网络构建。为了公平评估模型的性能,我们使用相同的独立测试集将我们的模型与现有的最先进方法进行了比较。我们的比较分析表明,iAMP-DL 优于其他方法。此外,为了评估我们模型的稳健性和稳定性,我们重复了 10 次实验以观察预测效率的变化。结果表明,iAMP-DL 是一种用于检测有前途的短 AMPs 的有效、稳健且稳定的框架。对不同负样本数据采样方法的另一个比较研究也证实了我们方法的有效性,并表明它也可用于开发一般预测 AMPs 的稳健模型。该框架还被部署为具有用户友好界面的在线网络服务器,以支持研究社区识别短 AMPs。