Nature Communications (Feb 2024)

Efficient encoding of large antigenic spaces by epitope prioritization with Dolphyn

  • Anna-Maria Liebhoff,
  • Thiagarajan Venkataraman,
  • William R. Morgenlander,
  • Miso Na,
  • Tomasz Kula,
  • Kathleen Waugh,
  • Charles Morrison,
  • Marian Rewers,
  • Randy Longman,
  • June Round,
  • Stephen Elledge,
  • Ingo Ruczinski,
  • Ben Langmead,
  • H. Benjamin Larman

DOI
https://doi.org/10.1038/s41467-024-45601-8
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 12

Abstract

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Abstract We investigate a relatively underexplored component of the gut-immune axis by profiling the antibody response to gut phages using Phage Immunoprecipitation Sequencing (PhIP-Seq). To cover large antigenic spaces, we develop Dolphyn, a method that uses machine learning to select peptides from protein sets and compresses the proteome through epitope-stitching. Dolphyn compresses the size of a peptide library by 78% compared to traditional tiling, increasing the antibody-reactive peptides from 10% to 31%. We find that the immune system develops antibodies to human gut bacteria-infecting viruses, particularly E.coli-infecting Myoviridae. Cost-effective PhIP-Seq libraries designed with Dolphyn enable the assessment of a wider range of proteins in a single experiment, thus facilitating the study of the gut-immune axis.