Abstract:The rise in antimicrobial resistance poses a worldwide threat, reducing the efficacy of common antibiotics. Yet, determining the antimicrobial activity of new chemical compounds through experimental methods is still a time-consuming and costly endeavor. Compound-centric deep learning models hold the promise to speed up the search and prioritization process. Here, we introduce a lightweight computational strategy for antimicrobial discovery that builds on MolE (Molecular representation through redundancy reduce… Show more
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