Antimicrobial peptides (AMPs) offer a highly potent alternative solution due to their broad-spectrum activity and minimum resistance development against the rapidly evolving antibiotic-resistant pathogens. Herein, to accelerate the discovery process of new AMPs, a predictive and generative algorithm is build, which constructs new peptide sequences, scores their antimicrobial activity using a machine learning (ML) model, identifies amino acid motifs, and assembles high-ranking motifs into new peptide sequences. The eXtreme Gradient Boosting model achieves an accuracy of â87% in distinguishing between AMPs and non-AMPs. The generated peptide sequences are experimentally validated against the bacterial pathogens, and an accuracy of â60% is achieved. To refine the algorithm, the physicochemical features are analyzed, particularly charge and hydrophobicity of experimentally validated peptides. The peptides with specific range of charge and hydrophobicity are then removed, which lead to a substantial increase in an experimental accuracy, from â60% to â80%. Furthermore, generated peptides are active against different fungal strains with minimal off-target toxicity. In summary, in silico predictive and generative models for functional motif and AMP discovery are powerful tools for engineering highly effective AMPs to combat multidrug resistant pathogens.
Machine Learning-Assisted Prediction and Generation of Antimicrobial Peptides.
机器学习辅助的抗菌肽预测与生成
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作者:Bhangu Sukhvir Kaur, Welch Nicholas, Lewis Morgan, Li Fanyi, Gardner Brint, Thissen Helmut, Kowalczyk Wioleta
| 期刊: | Small Science | 影响因子: | 8.300 |
| 时间: | 2025 | 起止号: | 2025 Mar 6; 5(6):2400579 |
| doi: | 10.1002/smsc.202400579 | 研究方向: | 微生物学 |
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