| Literature DB >> 34123866 |
Pablo Juanes-Velasco1, Alicia Landeira-Viñuela1, Vanessa Acebes-Fernandez1, Ángela-Patricia Hernández1, Marina L Garcia-Vaquero1, Carlota Arias-Hidalgo1, Halin Bareke1, Enrique Montalvillo1, Rafael Gongora1, Manuel Fuentes1,2.
Abstract
Genetic variability across the three major histocompatibility complex (MHC) class I genes (human leukocyte antigen [HLA] A, B, and C) may affect susceptibility to many diseases such as cancer, auto-immune or infectious diseases. Individual genetic variation may help to explain different immune responses to microorganisms across a population. HLA typing can be fast and inexpensive; however, deciphering peptides loaded on MHC-I and II which are presented to T cells, require the design and development of high-sensitivity methodological approaches and subsequently databases. Hence, these novel strategies and databases could help in the generation of vaccines using these potential immunogenic peptides and in identifying high-risk HLA types to be prioritized for vaccination programs. Herein, the recent developments and approaches, in this field, focusing on the identification of immunogenic peptides have been reviewed and the next steps to promote their translation into biomedical and clinical practice are discussed.Entities:
Keywords: human leukocyte antigen; immunochromatography; immunopeptidomics; proteomics; vaccines
Mesh:
Substances:
Year: 2021 PMID: 34123866 PMCID: PMC8195621 DOI: 10.3389/fcimb.2021.642583
Source DB: PubMed Journal: Front Cell Infect Microbiol ISSN: 2235-2988 Impact factor: 5.293
Figure 1Schematic summary of MHC characteristics. Structure, antigen processing, peptides length, T-cell recognition.
Figure 2Global overview of the workflow for specific isolation of peptides from HLA molecules by immunochromatography and their further systematic characterization by LC-MS/MS.
Figure 3Essential steps in deciphering immunopeptides that elicit a T-cell response and therefore serve to design personalized peptide vaccines.
Main features related to current available databases focused on immunopeptidome characterization.
| Database | Source Data | Info |
|---|---|---|
| TRON Cell Line Portal ( | RNA-Seq datasets | Sample-details; Mutation-Data; Neo-Epitope-Data; Expression Data; |
| HLAthena ( | Monoallelic human cell lines datasets | Explore alleles; Select peptide length; Similarity based on allele motifs; Prediction peptides |
| NetMHC 4.1 ( | Gap sequence alignment datasets | Alignment-based prediction algorithm; Peptide-MHC binding pattern; Length distribution of different HLA molecules |
| SYFPEITHI ( | MHC class I and class II ligands and peptides motifs datasets | Ligand prediction; Correlates the prediction of T cell epitopes and HLA-loaded peptides |
| IPD-IMGT/HLA ( | Allelic sequences datasets | Sequence alignment; Allele query; Sequence search tool; Cell query |
| The Immune Epitope Database ( | Antibody and T cell epitopes datasets | Prediction epitopes algorithm; Analysis epitopes tool |