| Literature DB >> 36003885 |
Tianshi Lu1, Ze Zhang1, James Zhu1, Yunguan Wang1, Peixin Jiang2, Xue Xiao1, Chantale Bernatchez3, John V Heymach2, Don L Gibbons2, Jun Wang4, Lin Xu1, Alexandre Reuben2, Tao Wang1,5.
Abstract
Neoantigens play a key role in the recognition of tumor cells by T cells. However, only a small proportion of neoantigens truly elicit T cell responses, and fewer clues exist as to which neoantigens are recognized by which T cell receptors (TCRs). We built a transfer learning-based model, named pMHC-TCR binding prediction network (pMTnet), to predict TCR-binding specificities of neoantigens, and T cell antigens in general, presented by class I major histocompatibility complexes (pMHCs). pMTnet was comprehensively validated by a series of analyses, and showed advance over previous work by a large margin. By applying pMTnet in human tumor genomics data, we discovered that neoantigens were generally more immunogenic than self-antigens, but HERV-E, a special type of self-antigen that is re-activated in kidney cancer, is more immunogenic than neoantigens. We further discovered that patients with more clonally expanded T cells exhibiting better affinity against truncal, rather than subclonal, neoantigens, had more favorable prognosis and treatment response to immunotherapy, in melanoma and lung cancer but not in kidney cancer. Predicting TCR-neoantigen/antigen pairs is one of the most daunting challenges in modern immunology. However, we achieved an accurate prediction of the pairing only using the TCR sequence (CDR3β), antigen sequence, and class I MHC allele, and our work revealed unique insights into the interactions of TCRs and pMHCs in human tumors using pMTnet as a discovery tool.Entities:
Keywords: TCR; binding; neoantigen; pMHC; prediction
Year: 2021 PMID: 36003885 PMCID: PMC9396750 DOI: 10.1038/s42256-021-00383-2
Source DB: PubMed Journal: Nat Mach Intell ISSN: 2522-5839