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Article abstracts
Main reference:
NetMHCIIpan-2.0 - Improved pan-specific HLA-DR predictions using a novel concurrent alignment and weight optimization training procedure
Nielsen M1,
Lundegaard C1,
Justesen S2,
Lund O1, and
Buus S2
Immunome Res. 2010 Nov 13;6(1):9. .
1Center for Biological Sequence Analysis,
Technical University of Denmark,
DK-2800 Lyngby, Denmark
2Division of Experimental Immunology,
Institute of Medical Microbiology and Immunology,
University of Copenhagen, Denmark
BACKGROUND: Binding of peptides to Major Histocompatibility class
II (MHC-II) molecules play a central role in governing responses of
the adaptive immune system. MHC-II molecules sample peptides from the
extracellular space allowing the immune system to detect the presence of
foreign microbes from this compartment. Predicting which peptides bind to
an MHC-II molecule is therefore of pivotal importance for understanding
the immune response and its effect on host-pathogen interactions. The
experimental cost associated with characterizing the binding motif of
an MHC-II molecule is significant and large efforts have therefore been
placed in developing accurate computer methods capable of predicting this
binding event. Prediction of peptide binding to MHC-II is complicated
by the open binding cleft of the MHC-II molecule, allowing binding
of peptides extending out of the binding groove. Moreover, the genes
encoding the MHC molecules are immensely diverse leading to a large
set of different MHC molecules each potentially binding a unique set of
peptides. Characterizing each MHC-II molecule using peptide-screening
binding assays is hence not a viable option.
RESULTS: Here, we present an MHC-II binding prediction algorithm aiming at
dealing with these challenges. The method is a pan-specific version of the
earlier published allele-specific NN-align algorithm and does not require
any pre-alignment of the input data. This allows the method to benefit
also from information from alleles covered by limited binding data. The
method is evaluated on a large and diverse set of benchmark data, and is
shown to significantly out-perform state-of-the-art MHC-II prediction
methods. In particular, the method is found to boost the performance
for alleles characterized by limited binding data where conventional
allele-specific methods tend to achieve poor prediction accuracy.
CONCLUSIONS: The method thus shows great potential for efficient
boosting the accuracy of MHC-II binding prediction, as accurate
predictions can be obtained for novel alleles at highly reduced
experimental costs. Pan-specific binding predictions can be obtained
for all alleles with know protein sequence and the method can benefit
by including data in the training from alleles even where only few
binders are known. The method and benchmark data are available at
www.cbs.dtu.dk/services/NetMHCIIpan-2.0.
PMID: 21073747
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CORRESPONDENCE
Morten Nielsen,
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