HLA-binding properties of tumor neoepitopes in humans

EF Fritsch, M Rajasagi, PA Ott, V Brusic… - Cancer immunology …, 2014 - AACR
EF Fritsch, M Rajasagi, PA Ott, V Brusic, N Hacohen, CJ Wu
Cancer immunology research, 2014AACR
Cancer genome sequencing has enabled the rapid identification of the complete repertoire
of coding sequence mutations within a patient's tumor and facilitated their use as
personalized immunogens. Although a variety of techniques are available to assist in the
selection of mutation-defined epitopes to be included within the tumor vaccine, the ability of
the peptide to bind to patient MHC is a key gateway to peptide presentation. With advances
in the accuracy of predictive algorithms for MHC class I binding, choosing epitopes on the …
Abstract
Cancer genome sequencing has enabled the rapid identification of the complete repertoire of coding sequence mutations within a patient's tumor and facilitated their use as personalized immunogens. Although a variety of techniques are available to assist in the selection of mutation-defined epitopes to be included within the tumor vaccine, the ability of the peptide to bind to patient MHC is a key gateway to peptide presentation. With advances in the accuracy of predictive algorithms for MHC class I binding, choosing epitopes on the basis of predicted affinity provides a rapid and unbiased approach to epitope prioritization. We show herein the retrospective application of a prediction algorithm to a large set of bona fide T cell–defined mutated human tumor antigens that induced immune responses, most of which were associated with tumor regression or long-term disease stability. The results support the application of this approach for epitope selection and reveal informative features of these naturally occurring epitopes to aid in epitope prioritization for use in tumor vaccines. Cancer Immunol Res; 2(6); 522–9. ©2014 AACR.
AACR