| Literature DB >> 30349087 |
Daniel B Graham1,2,3,4, Chengwei Luo5,6,7, Daniel J O'Connell5, Ariel Lefkovith5, Eric M Brown5, Moran Yassour5, Mukund Varma5, Jennifer G Abelin5, Kara L Conway6,7, Guadalupe J Jasso5,8, Caline G Matar5, Steven A Carr5, Ramnik J Xavier9,10,11,12,13.
Abstract
Identifying immunodominant T cell epitopes remains a significant challenge in the context of infectious disease, autoimmunity, and immuno-oncology. To address the challenge of antigen discovery, we developed a quantitative proteomic approach that enabled unbiased identification of major histocompatibility complex class II (MHCII)-associated peptide epitopes and biochemical features of antigenicity. On the basis of these data, we trained a deep neural network model for genome-scale predictions of immunodominant MHCII-restricted epitopes. We named this model bacteria originated T cell antigen (BOTA) predictor. In validation studies, BOTA accurately predicted novel CD4 T cell epitopes derived from the model pathogen Listeria monocytogenes and the commensal microorganism Muribaculum intestinale. To conclusively define immunodominant T cell epitopes predicted by BOTA, we developed a high-throughput approach to screen DNA-encoded peptide-MHCII libraries for functional recognition by T cell receptors identified from single-cell RNA sequencing. Collectively, these studies provide a framework for defining the immunodominance landscape across a broad range of immune pathologies.Entities:
Mesh:
Substances:
Year: 2018 PMID: 30349087 PMCID: PMC6312190 DOI: 10.1038/s41591-018-0203-7
Source DB: PubMed Journal: Nat Med ISSN: 1078-8956 Impact factor: 53.440