抗菌剂
生物信息学
抗菌肽
肽
计算生物学
生物
化学
生物化学
微生物学
基因
作者
Xuefei Wang,Jing‐Ya Tang,Jing Sun,Sonam Dorje,Tian‐Qi Sun,Bo Peng,Xuwo Ji,Zhe Li,Xian‐En Zhang,Dianbing Wang
出处
期刊:Advanced Science
[Wiley]
日期:2024-09-25
卷期号:11 (43): e2406305-e2406305
被引量:37
标识
DOI:10.1002/advs.202406305
摘要
Antimicrobial peptides (AMPs) are a promising solution for treating antibiotic-resistant pathogens. However, efficient generation of diverse AMPs without prior knowledge of peptide structures or sequence alignments remains a challenge. Here, ProT-Diff is introduced, a modularized deep generative approach that combines a pretrained protein language model with a diffusion model for the de novo generation of AMPs sequences. ProT-Diff generates thousands of AMPs with diverse lengths and structures within a few hours. After silico physicochemical screening, 45 peptides are selected for experimental validation. Forty-four peptides showed antimicrobial activity against both gram-positive or gram-negative bacteria. Among broad-spectrum peptides, AMP_2 exhibited potent antimicrobial activity, low hemolysis, and minimal cytotoxicity. An in vivo assessment demonstrated its effectiveness against a drug-resistant E. coli strain in acute peritonitis. This study not only introduces a viable and user-friendly strategy for de novo generation of antimicrobial peptides, but also provides potential antimicrobial drug candidates with excellent activity. It is believed that this study will facilitate the development of other peptide-based drug candidates in the future, as well as proteins with tailored characteristics.
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