Frontiers in Immunology (Feb 2021)

Utilizing Computational Machine Learning Tools to Understand Immunogenic Breadth in the Context of a CD8 T-Cell Mediated HIV Response

  • Ed McGowan,
  • Rachel Rosenthal,
  • Andrew Fiore-Gartland,
  • Gladys Macharia,
  • Sheila Balinda,
  • Anne Kapaata,
  • Gisele Umviligihozo,
  • Erick Muok,
  • Jama Dalel,
  • Claire L. Streatfield,
  • Helen Coutinho,
  • Dario Dilernia,
  • Daniela C. Monaco,
  • David Morrison,
  • Ling Yue,
  • Eric Hunter,
  • Morten Nielsen,
  • Jill Gilmour,
  • Jonathan Hare

DOI
https://doi.org/10.3389/fimmu.2021.609884
Journal volume & issue
Vol. 12

Abstract

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Predictive models are becoming more and more commonplace as tools for candidate antigen discovery to meet the challenges of enabling epitope mapping of cohorts with diverse HLA properties. Here we build on the concept of using two key parameters, diversity metric of the HLA profile of individuals within a population and consideration of sequence diversity in the context of an individual's CD8 T-cell immune repertoire to assess the HIV proteome for defined regions of immunogenicity. Using this approach, analysis of HLA adaptation and functional immunogenicity data enabled the identification of regions within the proteome that offer significant conservation, HLA recognition within a population, low prevalence of HLA adaptation and demonstrated immunogenicity. We believe this unique and novel approach to vaccine design as a supplement to vitro functional assays, offers a bespoke pipeline for expedited and rational CD8 T-cell vaccine design for HIV and potentially other pathogens with the potential for both global and local coverage.

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