Prediction of promiscuous peptides that bind HLA class I molecules.
about
From functional genomics to functional immunomics: new challenges, old problems, big rewardsMULTIPRED: a computational system for prediction of promiscuous HLA binding peptides.NetMHCpan, a method for quantitative predictions of peptide binding to any HLA-A and -B locus protein of known sequenceTEPITOPEpan: extending TEPITOPE for peptide binding prediction covering over 700 HLA-DR moleculesHLA class I supertypes: a revised and updated classification.A genetic approach for building different alphabets for peptide and protein classificationThe PickPocket method for predicting binding specificities for receptors based on receptor pocket similarities: application to MHC-peptide bindingLimitations of Ab initio predictions of peptide binding to MHC class II moleculesPredicting HLA class I non-permissive amino acid residues substitutions.PRED(TAP): a system for prediction of peptide binding to the human transporter associated with antigen processing.MHC2MIL: a novel multiple instance learning based method for MHC-II peptide binding prediction by considering peptide flanking region and residue positions.Population of the HLA ligand database.MHC2SKpan: a novel kernel based approach for pan-specific MHC class II peptide binding prediction.Tumor antigens and proteomics from the point of view of the major histocompatibility complex peptides.In silico analysis of six known Leishmania major antigens and in vitro evaluation of specific epitopes eliciting HLA-A2 restricted CD8 T cell response.HLA class I allele promiscuity revisited.Computational tools for the study of allergens.A computational method for designing diverse linear epitopes including citrullinated peptides with desired binding affinities to intravenous immunoglobulin.Modeling the structure of bound peptide ligands to major histocompatibility complexComprehensive analysis of cancer-associated somatic mutations in class I HLA genes.T-cell epitope vaccine design by immunoinformatics.HLA class I molecules consistently present internal influenza epitopesToward more accurate pan-specific MHC-peptide binding prediction: a review of current methods and tools.Structural and functional distinctiveness of HLA-A2 allelic variants.The epitopes in wheat proteins for defining toxic units relevant to human health.Towards in silico design of epitope-based vaccines.Personalized cancer immunotherapy using Systems Medicine approaches.Computational Resources for MHC Ligand Identification.Prediction of supertype-specific HLA class I binding peptides using support vector machines.Predictor for the effect of amino acid composition on CD4+ T cell epitopes preprocessing.High-order neural networks and kernel methods for peptide-MHC binding prediction.Strength in numbers: achieving greater accuracy in MHC-I binding prediction by combining the results from multiple prediction toolsDesign of enhanced agonists through the use of a new virtual screening method: application to peptides that bind class I major histocompatibility complex (MHC) molecules.Neural models for predicting viral vaccine targets.Modeling the adaptive immune system: predictions and simulations.Artificial intelligence systems based on texture descriptors for vaccine development.
P2860
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P2860
Prediction of promiscuous peptides that bind HLA class I molecules.
description
2002 nî lūn-bûn
@nan
2002年の論文
@ja
2002年論文
@yue
2002年論文
@zh-hant
2002年論文
@zh-hk
2002年論文
@zh-mo
2002年論文
@zh-tw
2002年论文
@wuu
2002年论文
@zh
2002年论文
@zh-cn
name
Prediction of promiscuous peptides that bind HLA class I molecules.
@en
Prediction of promiscuous peptides that bind HLA class I molecules.
@nl
type
label
Prediction of promiscuous peptides that bind HLA class I molecules.
@en
Prediction of promiscuous peptides that bind HLA class I molecules.
@nl
prefLabel
Prediction of promiscuous peptides that bind HLA class I molecules.
@en
Prediction of promiscuous peptides that bind HLA class I molecules.
@nl
P2860
P50
P1476
Prediction of promiscuous peptides that bind HLA class I molecules.
@en
P2860
P304
P356
10.1046/J.1440-1711.2002.01088.X
P577
2002-06-01T00:00:00Z