Back to Search
Start Over
In silico and cell-based analyses reveal strong divergence between prediction and observation of T-cell-recognized tumor antigen T-cell epitopes.
- Source :
-
The Journal of biological chemistry [J Biol Chem] 2017 Jul 14; Vol. 292 (28), pp. 11840-11849. Date of Electronic Publication: 2017 May 23. - Publication Year :
- 2017
-
Abstract
- Tumor exomes provide comprehensive information on mutated, overexpressed genes and aberrant splicing, which can be exploited for personalized cancer immunotherapy. Of particular interest are mutated tumor antigen T-cell epitopes, because neoepitope-specific T cells often are tumoricidal. However, identifying tumor-specific T-cell epitopes is a major challenge. A widely used strategy relies on initial prediction of human leukocyte antigen-binding peptides by in silico algorithms, but the predictive power of this approach is unclear. Here, we used the human tumor antigen NY-ESO-1 (ESO) and the human leukocyte antigen variant HLA-A*0201 (A2) as a model and predicted in silico the 41 highest-affinity, A2-binding 8-11-mer peptides and assessed their binding, kinetic complex stability, and immunogenicity in A2-transgenic mice and on peripheral blood mononuclear cells from ESO-vaccinated melanoma patients. We found that 19 of the peptides strongly bound to A2, 10 of which formed stable A2-peptide complexes and induced CD8 <superscript>+</superscript> T cells in A2-transgenic mice. However, only 5 of the peptides induced cognate T cells in humans; these peptides exhibited strong binding and complex stability and contained multiple large hydrophobic and aromatic amino acids. These results were not predicted by in silico algorithms and provide new clues to improving T-cell epitope identification. In conclusion, our findings indicate that only a small fraction of in silico -predicted A2-binding ESO peptides are immunogenic in humans, namely those that have high peptide-binding strength and complex stability. This observation highlights the need for improving in silico predictions of peptide immunogenicity.<br /> (© 2017 by The American Society for Biochemistry and Molecular Biology, Inc.)
- Subjects :
- Animals
Antigens, Neoplasm chemistry
Antigens, Neoplasm genetics
Antigens, Neoplasm therapeutic use
Artificial Intelligence
Cancer Vaccines genetics
Cancer Vaccines metabolism
Cancer Vaccines therapeutic use
Cells, Cultured
Computational Biology
Epitopes
HLA-A2 Antigen chemistry
HLA-A2 Antigen genetics
Humans
Immunogenicity, Vaccine
Melanoma metabolism
Melanoma pathology
Melanoma therapy
Membrane Proteins chemistry
Membrane Proteins genetics
Membrane Proteins therapeutic use
Mice, Knockout
Mice, Transgenic
Neoplasm Proteins chemistry
Neoplasm Proteins genetics
Neoplasm Proteins metabolism
Neoplasm Proteins therapeutic use
Oligopeptides chemistry
Oligopeptides metabolism
Peptide Fragments chemistry
Peptide Fragments genetics
Peptide Fragments metabolism
Peptide Fragments therapeutic use
Protein Refolding
Protein Stability
Reproducibility of Results
T-Lymphocytes, Cytotoxic metabolism
T-Lymphocytes, Cytotoxic pathology
Vaccines, Synthetic genetics
Vaccines, Synthetic immunology
Vaccines, Synthetic metabolism
Vaccines, Synthetic therapeutic use
Antigens, Neoplasm metabolism
Cancer Vaccines immunology
Expert Systems
HLA-A2 Antigen metabolism
Melanoma immunology
Membrane Proteins metabolism
Models, Immunological
T-Lymphocytes, Cytotoxic immunology
Subjects
Details
- Language :
- English
- ISSN :
- 1083-351X
- Volume :
- 292
- Issue :
- 28
- Database :
- MEDLINE
- Journal :
- The Journal of biological chemistry
- Publication Type :
- Academic Journal
- Accession number :
- 28536262
- Full Text :
- https://doi.org/10.1074/jbc.M117.789511