| Literature DB >> 33454737 |
Shutao Mei1, Fuyi Li2, Dongxu Xiang1, Rochelle Ayala1, Pouya Faridi1, Geoffrey I Webb3, Patricia T Illing1, Jamie Rossjohn1, Tatsuya Akutsu4, Nathan P Croft1, Anthony W Purcell5, Jiangning Song6.
Abstract
Neopeptide-based immunotherapy has been recognised as a promising approach for the treatment of cancers. For neopeptides to be recognised by CD8+ T cells and induce an immune response, their binding to human leukocyte antigen class I (HLA-I) molecules is a necessary first step. Most epitope prediction tools thus rely on the prediction of such binding. With the use of mass spectrometry, the scale of naturally presented HLA ligands that could be used to develop such predictors has been expanded. However, there are rarely efforts that focus on the integration of these experimental data with computational algorithms to efficiently develop up-to-date predictors. Here, we present Anthem for accurate HLA-I binding prediction. In particular, we have developed a user-friendly framework to support the development of customisable HLA-I binding prediction models to meet challenges associated with the rapidly increasing availability of large amounts of immunopeptidomic data. Our extensive evaluation, using both independent and experimental datasets shows that Anthem achieves an overall similar or higher area under curve value compared with other contemporary tools. It is anticipated that Anthem will provide a unique opportunity for the non-expert user to analyse and interpret their own in-house or publicly deposited datasets.Entities:
Keywords: HLA-I peptide binding prediction; machine learning; model customisation; scoring function; web server
Year: 2021 PMID: 33454737 DOI: 10.1093/bib/bbaa415
Source DB: PubMed Journal: Brief Bioinform ISSN: 1467-5463 Impact factor: 11.622