| Literature DB >> 33852352 |
Margarita Pertseva1,2, Beichen Gao1, Daniel Neumeier1, Alexander Yermanos1,3,4, Sai T Reddy1.
Abstract
Adaptive immunity is mediated by lymphocyte B and T cells, which respectively express a vast and diverse repertoire of B cell and T cell receptors and, in conjunction with peptide antigen presentation through major histocompatibility complexes (MHCs), can recognize and respond to pathogens and diseased cells. In recent years, advances in deep sequencing have led to a massive increase in the amount of adaptive immune receptor repertoire data; additionally, proteomics techniques have led to a wealth of data on peptide-MHC presentation. These large-scale data sets are now making it possible to train machine and deep learning models, which can be used to identify complex and high-dimensional patterns in immune repertoires. This article introduces adaptive immune repertoires and machine and deep learning related to biological sequence data and then summarizes the many applications in this field, which span from predicting the immunological status of a host to the antigen specificity of individual receptors and the engineering of immunotherapeutics.Keywords: B cell receptor; BCR; MHC; T cell receptor; TCR; deep learning; immune repertoire; machine learning; major histocompatibility complex; neural networks
Year: 2021 PMID: 33852352 DOI: 10.1146/annurev-chembioeng-101420-125021
Source DB: PubMed Journal: Annu Rev Chem Biomol Eng ISSN: 1947-5438 Impact factor: 11.059