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DLFea4AMPGen de novo design of antimicrobial peptides by integrating features learned from deep learning models

Nature Communications. 2025-10; 
Han Gao, Feifei Guan, Boyu Luo, Dongdong Zhang, Wei Liu, Yuying Shen, Lingxi Fan, Guoshun Xu, Yuan Wang, Tao Tu, Ningfeng Wu, Bin Yao, Huiying Luo, Yue Teng, Jian Tian, Huoqing Huang State Key Laboratory of Animal Nutrition and Feeding, Institute of Animal Science, Chinese Academy of Agricultural Sciences
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Abstract

Deep learning models show promise in accelerating the design and optimization of antimicrobial peptides (AMPs), but current methods face challenges, such as low success rates, or large virtual library scales. In this study, we introduce DLFea4AMPGen, a bioactive peptide design strategy that leverages deep learning models to identify and extract key features associated with antimicrobial peptide activity. This approach enables the generation of peptide sequences with potential bioactivities. Using the SHapley Additive exPlanations (SHAP) method, we quantify the contribution of each amino acid in multifunctional peptides with potential antibacterial, antifungal, and antioxidant activities. Key feature fragments (... More

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