Machine Learning Methods for Predicting HLA-Peptide Binding Activity
Author(s) -
Heng Luo,
Hao Ye,
Hui Wen Ng,
Lemming Shi,
Weida Tong,
Donna L. Mendrick,
Huixiao Hong
Publication year - 2015
Publication title -
bioinformatics and biology insights
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.556
H-Index - 23
ISSN - 1177-9322
DOI - 10.4137/bbi.s29466
Subject(s) - human leukocyte antigen , peptide , computational biology , major histocompatibility complex , epitope , immune system , receptor , antigen , immunology , biology , bioinformatics , genetics , biochemistry
As major histocompatibility complexes in humans, the human leukocyte antigens (HLAs) have important functions to present antigen peptides onto T-cell receptors for immunological recognition and responses. Interpreting and predicting HLA-peptide binding are important to study T-cell epitopes, immune reactions, and the mechanisms of adverse drug reactions. We review different types of machine learning methods and tools that have been used for HLA-peptide binding prediction. We also summarize the descriptors based on which the HLA-peptide binding prediction models have been constructed and discuss the limitation and challenges of the current methods. Lastly, we give a future perspective on the HLA-peptide binding prediction method based on network analysis.
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