Quantitative prediction of mouse class I MHC peptide binding affinity using support vector machine regression (SVR) models |
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Authors: | Wen Liu Xiangshan Meng Qiqi Xu Darren R Flower Tongbin Li |
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Affiliation: | (1) Department of Neuroscience, University of Minnesota, Minneapolis, MN 55455, USA;(2) The Jenner Institute, University of Oxford, Compton, Berkshire, RG20 7NN, UK |
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Abstract: |
Background The binding between peptide epitopes and major histocompatibility complex proteins (MHCs) is an important event in the cellular immune response. Accurate prediction of the binding between short peptides and the MHC molecules has long been a principal challenge for immunoinformatics. Recently, the modeling of MHC-peptide binding has come to emphasize quantitative predictions: instead of categorizing peptides as "binders" or "non-binders" or as "strong binders" and "weak binders", recent methods seek to make predictions about precise binding affinities. |
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