Cell-free biosynthesis combined with deep learning accelerates de novo-development of antimicrobial peptides

Author:

Pandi AmirORCID,Adam David,Zare AmirORCID,Trinh Van TuanORCID,Schaefer Stefan L.ORCID,Burt Marie,Klabunde Björn,Bobkova Elizaveta,Kushwaha ManishORCID,Foroughijabbari Yeganeh,Braun PeterORCID,Spahn ChristophORCID,Preußer Christian,Pogge von Strandmann Elke,Bode Helge B.,von Buttlar Heiner,Bertrams WilhelmORCID,Jung Anna Lena,Abendroth Frank,Schmeck BerndORCID,Hummer GerhardORCID,Vázquez OlallaORCID,Erb Tobias J.ORCID

Abstract

AbstractBioactive peptides are key molecules in health and medicine. Deep learning holds a big promise for the discovery and design of bioactive peptides. Yet, suitable experimental approaches are required to validate candidates in high throughput and at low cost. Here, we established a cell-free protein synthesis (CFPS) pipeline for the rapid and inexpensive production of antimicrobial peptides (AMPs) directly from DNA templates. To validate our platform, we used deep learning to design thousands of AMPs de novo. Using computational methods, we prioritized 500 candidates that we produced and screened with our CFPS pipeline. We identified 30 functional AMPs, which we characterized further through molecular dynamics simulations, antimicrobial activity and toxicity. Notably, six de novo-AMPs feature broad-spectrum activity against multidrug-resistant pathogens and do not develop bacterial resistance. Our work demonstrates the potential of CFPS for high throughput and low-cost production and testing of bioactive peptides within less than 24 h.

Funder

Max-Planck-Gesellschaft

European Molecular Biology Organization

Publisher

Springer Science and Business Media LLC

Subject

General Physics and Astronomy,General Biochemistry, Genetics and Molecular Biology,General Chemistry,Multidisciplinary

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