Prediction of promiscuous peptides that bind HLA class I molecules


Autoria(s): Brusic, V; Petrovsky, N; Zhang, GL; Bajic, VB
Data(s)

01/01/2002

Resumo

Promiscuous T-cell epitopes make ideal targets for vaccine development. We report here a computational system, multipred, for the prediction of peptide binding to the HLA-A2 supertype. It combines a novel representation of peptide/MHC interactions with a hidden Markov model as the prediction algorithm. multipred is both sensitive and specific, and demonstrates high accuracy of peptide-binding predictions for HLA-A*0201, *0204, and *0205 alleles, good accuracy for *0206 allele, and marginal accuracy for *0203 allele. multipred replaces earlier requirements for individual prediction models for each HLA allelic variant and simplifies computational aspects of peptide-binding prediction. Preliminary testing indicates that multipred can predict peptide binding to HLA-A2 supertype molecules with high accuracy, including those allelic variants for which no experimental binding data are currently available.

Identificador

http://espace.library.uq.edu.au/view/UQ:38307

Idioma(s)

eng

Palavras-Chave #Cell Biology #Immunology #Hidden Markov Models #Hla Allele #Immunoinformatics #Peptide Binding #Predictive Modelling #Hidden Markov-models #Identification #Antigen #Vaccination #Repertoires #Definition #Database #Epitopes #Vaccines #Matrices
Tipo

Journal Article