The rise in antimicrobial resistance poses a worldwide threat, reducing the efficacy of common antibiotics. Determining the antimicrobial activity of new chemical compounds through experimental methods remains time-consuming and costly. While compound-centric deep learning models promise to accelerate this search and prioritization process, current strategies require large amounts of custom training data. Here, we introduce a lightweight computational strategy for antimicrobial discovery that builds on MolE (Molecular representation through redundancy reduced Embedding), a self-supervised deep learning framework that leverages unlabeled chemical structures to learn task-independent molecular representations. By combining MolE representation learning with available, experimentally validated compound-bacteria activity data, we design a general predictive model that enables assessing compounds with respect to their antimicrobial potential. Our model correctly identifies recent growth-inhibitory compounds that are structurally distinct from current antibiotics. Using this approach, we discover de novo, and experimentally confirm, three human-targeted drugs as growth inhibitors of Staphylococcus aureus. This framework offers a viable, cost-effective strategy to accelerate antibiotic discovery.
Pre-trained molecular representations enable antimicrobial discovery.
预训练的分子表征能够促进抗菌药物的发现
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作者:Olayo-Alarcon Roberto, Amstalden Martin K, Zannoni Annamaria, Bajramovic Medina, Sharma Cynthia M, Brochado Ana Rita, Rezaei Mina, Müller Christian L
| 期刊: | Nature Communications | 影响因子: | 15.700 |
| 时间: | 2025 | 起止号: | 2025 Apr 10; 16(1):3420 |
| doi: | 10.1038/s41467-025-58804-4 | 研究方向: | 微生物学 |
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