articleBMC BioinformaticsNov 22, 2010GOLD OA

Peptide binding predictions for HLA DR, DP and DQ molecules

La Jolla Institute for Immunology · Technical University of Denmark

PubMed
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Abstract

Background

MHC class II binding predictions are widely used to identify epitope candidates in infectious agents, allergens, cancer and autoantigens. The vast majority of prediction algorithms for human MHC class II to date have targeted HLA molecules encoded in the DR locus. This reflects a significant gap in knowledge as HLA DP and DQ molecules are presumably equally important, and have only been studied less because they are more difficult to handle experimentally.

Results

In this study, we aimed to narrow this gap by providing a large scale dataset of over 17,000 HLA-peptide binding affinities for a set of 11 HLA DP and DQ alleles. We also expanded our dataset for HLA DR alleles resulting in a total of 40,000 MHC class II binding affinities covering 26 allelic variants. Utilizing this dataset, we generated prediction tools utilizing several machine learning algorithms and evaluated their performance.

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Authors

7

Topics & keywords

Keywords
  • Human leukocyte antigen
  • Major histocompatibility complex
  • Computational biology
  • Affinities
  • Allele
  • Binding affinities
  • Locus (genetics)
  • Computer science
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Funding