巴马
生物
操纵子
抗生素
计算生物学
发光杆菌属
药物发现
微生物学
基因
大肠杆菌
革兰氏阴性菌
细菌外膜
遗传学
生物信息学
作者
Ryan D. Miller,Akira Iinishi,Seyed Majed Modaresi,Byung‐Kuk Yoo,Thomas D. Curtis,Patrick J. Lariviere,Libang Liang,Sangkeun Son,Samantha Nicolau,Rachel Bargabos,Madeleine Morrissette,Michael F. Gates,Norman Pitt,R.P. Jakob,Parthasarathi Rath,Timm Maier,Andrey Malyutin,Jens T. Kaiser,Samantha Niles,Blake Karavas
标识
DOI:10.1038/s41564-022-01227-4
摘要
Discovery of antibiotics acting against Gram-negative species is uniquely challenging due to their restrictive penetration barrier. BamA, which inserts proteins into the outer membrane, is an attractive target due to its surface location. Darobactins produced by Photorhabdus, a nematode gut microbiome symbiont, target BamA. We reasoned that a computational search for genes only distantly related to the darobactin operon may lead to novel compounds. Following this clue, we identified dynobactin A, a novel peptide antibiotic from Photorhabdus australis containing two unlinked rings. Dynobactin is structurally unrelated to darobactins, but also targets BamA. Based on a BamA-dynobactin co-crystal structure and a BAM-complex-dynobactin cryo-EM structure, we show that dynobactin binds to the BamA lateral gate, uniquely protruding into its β-barrel lumen. Dynobactin showed efficacy in a mouse systemic Escherichia coli infection. This study demonstrates the utility of computational approaches to antibiotic discovery and suggests that dynobactin is a promising lead for drug development. Computational search identifies dynobactin A which is a systemically active, natural-product peptide antibiotic that kills Gram-negative bacteria.
科研通智能强力驱动
Strongly Powered by AbleSci AI