Fan Shen, Qin Peng, Lu Jie, Wang Shuaitao, Zhang Jie, Wang Yan, Cheng Aifang, Cao Yan, Ding Wei, Zhang Weipeng
MOE Key Laboratory of Evolution & Marine Biodiversity and Institute of Evolution & Marine Biodiversity Ocean University of China Qingdao China.
Department of Biomedical Sciences, Faculty of Health Sciences University of Macau Taipa Macao SAR China.
Imeta. 2024 Oct 17;3(6):e244. doi: 10.1002/imt2.244. eCollection 2024 Dec.
Antimicrobial peptides (AMPs) have become a viable source of novel antibiotics that are effective against human pathogenic bacteria. In this study, we construct a bank of culturable marine biofilm bacteria constituting 713 strains and their nearly complete genomes and predict AMPs using ribosome profiling and deep learning. Compared with previous approaches, ribosome profiling has improved the identification and validation of small open reading frames (sORFs) for AMP prediction. Among the 80,430 expressed sORFs, 341 are identified as candidate AMPs with high probability. Most potential AMPs have less than 40% similarity in their amino acid sequence compared to those listed in public databases. Furthermore, these AMPs are associated with bacterial groups that are not previously known to produce AMPs. Therefore, our deep learning model has acquired characteristics of unfamiliar AMPs. Chemical synthesis of 60 potential AMP sequences yields 54 compounds with antimicrobial activity, including potent inhibitory effects on various drug-resistant human pathogens. This study extends the range of AMP compounds by investigating marine biofilm microbiomes using a novel approach, accelerating AMP discovery.
抗菌肽(AMPs)已成为对抗人类病原菌有效的新型抗生素的可行来源。在本研究中,我们构建了一个由713株可培养海洋生物膜细菌及其近乎完整的基因组组成的文库,并使用核糖体谱分析和深度学习预测抗菌肽。与以前的方法相比,核糖体谱分析改进了用于抗菌肽预测的小开放阅读框(sORFs)的鉴定和验证。在80430个表达的sORFs中,341个被确定为极有可能的候选抗菌肽。与公共数据库中列出的抗菌肽相比,大多数潜在抗菌肽的氨基酸序列相似度不到40%。此外,这些抗菌肽与以前未知产生抗菌肽的细菌类群相关。因此,我们的深度学习模型获得了不熟悉的抗菌肽的特征。对60个潜在抗菌肽序列进行化学合成,得到了54种具有抗菌活性的化合物,包括对各种耐药人类病原体的强效抑制作用。本研究通过一种新方法研究海洋生物膜微生物群落,扩展了抗菌肽化合物的范围,加速了抗菌肽的发现。