| Literature DB >> 32084340 |
Jonathan M Stokes1, Kevin Yang2, Kyle Swanson2, Wengong Jin2, Andres Cubillos-Ruiz3, Nina M Donghia4, Craig R MacNair5, Shawn French5, Lindsey A Carfrae5, Zohar Bloom-Ackermann6, Victoria M Tran7, Anush Chiappino-Pepe8, Ahmed H Badran7, Ian W Andrews3, Emma J Chory9, George M Church10, Eric D Brown5, Tommi S Jaakkola2, Regina Barzilay11, James J Collins12.
Abstract
Due to the rapid emergence of antibiotic-resistant bacteria, there is a growing need to discover new antibiotics. To address this challenge, we trained a deep neural network capable of predicting molecules with antibacterial activity. We performed predictions on multiple chemical libraries and discovered a molecule from the Drug Repurposing Hub-halicin-that is structurally divergent from conventional antibiotics and displays bactericidal activity against a wide phylogenetic spectrum of pathogens including Mycobacterium tuberculosis and carbapenem-resistant Enterobacteriaceae. Halicin also effectively treated Clostridioides difficile and pan-resistant Acinetobacter baumannii infections in murine models. Additionally, from a discrete set of 23 empirically tested predictions from >107 million molecules curated from the ZINC15 database, our model identified eight antibacterial compounds that are structurally distant from known antibiotics. This work highlights the utility of deep learning approaches to expand our antibiotic arsenal through the discovery of structurally distinct antibacterial molecules.Entities:
Keywords: antibiotic resistance; antibiotic tolerance; antibiotics; drug discovery; machine learning
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Year: 2020 PMID: 32084340 PMCID: PMC8349178 DOI: 10.1016/j.cell.2020.01.021
Source DB: PubMed Journal: Cell ISSN: 0092-8674 Impact factor: 41.582