Large-scale genomic survey with deep learning-based method reveals strain-level phage specificity determinants

Author:

Yang Yiyan1ORCID,Dufault-Thompson Keith1ORCID,Yan Wei1ORCID,Cai Tian2,Xie Lei23ORCID,Jiang Xiaofang1ORCID

Affiliation:

1. National Library of Medicine, National Institutes of Health , Bethesda, MD 20894 , USA

2. Ph.D. Program in Computer Science, The Graduate Center, The City University of New York , New York, NY 10016 , USA

3. Department of Computer Science, Hunter College, The City University of New York , New York, NY 10065 , USA

Abstract

Abstract Background Phage therapy, reemerging as a promising approach to counter antimicrobial-resistant infections, relies on a comprehensive understanding of the specificity of individual phages. Yet the significant diversity within phage populations presents a considerable challenge. Currently, there is a notable lack of tools designed for large-scale characterization of phage receptor-binding proteins, which are crucial in determining the phage host range. Results In this study, we present SpikeHunter, a deep learning method based on the ESM-2 protein language model. With SpikeHunter, we identified 231,965 diverse phage-encoded tailspike proteins, a crucial determinant of phage specificity that targets bacterial polysaccharide receptors, across 787,566 bacterial genomes from 5 virulent, antibiotic-resistant pathogens. Notably, 86.60% (143,200) of these proteins exhibited strong associations with specific bacterial polysaccharides. We discovered that phages with identical tailspike proteins can infect different bacterial species with similar polysaccharide receptors, underscoring the pivotal role of tailspike proteins in determining host range. The specificity is mainly attributed to the protein’s C-terminal domain, which strictly correlates with host specificity during domain swapping in tailspike proteins. Importantly, our dataset-driven predictions of phage–host specificity closely match the phage–host pairs observed in real-world phage therapy cases we studied. Conclusions Our research provides a rich resource, including both the method and a database derived from a large-scale genomics survey. This substantially enhances understanding of phage specificity determinants at the strain level and offers a valuable framework for guiding phage selection in therapeutic applications.

Funder

National Institutes of Health

National Science Foundation

Publisher

Oxford University Press (OUP)

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