De novo synthetic antimicrobial peptide design with a recurrent neural network

Author:

Li Chenkai12ORCID,Sutherland Darcy134,Richter Amelia13,Coombe Lauren1,Yanai Anat13,Warren René L.1,Kotkoff Monica1,Hof Fraser5,Hoang Linda M. N.34,Helbing Caren C.6,Birol Inanc1347

Affiliation:

1. Canada's Michael Smith Genome Sciences Centre BC Cancer Agency Vancouver British Columbia Canada

2. Bioinformatics Graduate Program University of British Columbia Vancouver British Columbia Canada

3. Public Health Laboratory British Columbia Centre for Disease Control Vancouver British Columbia Canada

4. Department of Pathology and Laboratory Medicine University of British Columbia Vancouver British Columbia Canada

5. Department of Chemistry and the Centre for Advanced Materials and Related Technology University of Victoria Victoria British Columbia Canada

6. Department of Biochemistry and Microbiology University of Victoria Victoria British Columbia Canada

7. Department of Medical Genetics University of British Columbia Vancouver British Columbia Canada

Abstract

AbstractAntibiotic resistance is recognized as an imminent and growing global health threat. New antimicrobial drugs are urgently needed due to the decreasing effectiveness of conventional small‐molecule antibiotics. Antimicrobial peptides (AMPs), a class of host defense peptides, are emerging as promising candidates to address this need. The potential sequence space of amino acids is combinatorially vast, making it possible to extend the current arsenal of antimicrobial agents with a practically infinite number of new peptide‐based candidates. However, mining naturally occurring AMPs, whether directly by wet lab screening methods or aided by bioinformatics prediction tools, has its theoretical limit regarding the number of samples or genomic/transcriptomic resources researchers have access to. Further, manually designing novel synthetic AMPs requires prior field knowledge, restricting its throughput. In silico sequence generation methods are gaining interest as a high‐throughput solution to the problem. Here, we introduce AMPd‐Up, a recurrent neural network based tool for de novo AMP design, and demonstrate its utility over existing methods. Validation of candidates designed by AMPd‐Up through antimicrobial susceptibility testing revealed that 40 of the 58 generated sequences possessed antimicrobial activity against Escherichia coli and/or Staphylococcus aureus. These results illustrate that AMPd‐Up can be used to design novel synthetic AMPs with potent activities.

Funder

Genome British Columbia

Genome Canada

Publisher

Wiley

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