Repertoire-scale determination of class II MHC peptide binding via yeast display improves antigen prediction.
C Garrett RappazzoBrooke D HuismanMichael E BirnbaumPublished in: Nature communications (2020)
CD4+ helper T cells contribute important functions to the immune response during pathogen infection and tumor formation by recognizing antigenic peptides presented by class II major histocompatibility complexes (MHC-II). While many computational algorithms for predicting peptide binding to MHC-II proteins have been reported, their performance varies greatly. Here we present a yeast-display-based platform that allows the identification of over an order of magnitude more unique MHC-II binders than comparable approaches. These peptides contain previously identified motifs, but also reveal new motifs that are validated by in vitro binding assays. Training of prediction algorithms with yeast-display library data improves the prediction of peptide-binding affinity and the identification of pathogen-associated and tumor-associated peptides. In summary, our yeast-display-based platform yields high-quality MHC-II-binding peptide datasets that can be used to improve the accuracy of MHC-II binding prediction algorithms, and potentially enhance our understanding of CD4+ T cell recognition.
Keyphrases
- machine learning
- immune response
- deep learning
- high throughput
- dna binding
- saccharomyces cerevisiae
- binding protein
- dendritic cells
- gene expression
- cell wall
- single cell
- dna methylation
- electronic health record
- genome wide
- regulatory t cells
- toll like receptor
- inflammatory response
- rna seq
- nk cells
- high throughput sequencing