Prediction of MHC class II-binding peptides using an evolutionary algorithm and artificial neural network


Autoria(s): Brusic, V; Rudy, G; Honeyman, M; Hammer, J; Harrison, L
Data(s)

01/01/1998

Resumo

Motivation: Prediction methods for identifying binding peptides could minimize the number of peptides required to be synthesized and assayed, and thereby facilitate the identification of potential T-cell epitopes. We developed a bioinformatic method for the prediction of peptide binding to MHC class II molecules. Results: Experimental binding data and expert knowledge of anchor positions and binding motifs were combined with an evolutionary algorithm (EA) and an artificial neural network (ANN): binding data extraction --> peptide alignment --> ANN training and classification. This method, termed PERUN, was implemented for the prediction of peptides that bind to HLA-DR4(B1*0401). The respective positive predictive values of PERUN predictions of high-, moderate-, low- and zero-affinity binder-a were assessed as 0.8, 0.7, 0.5 and 0.8 by cross-validation, and 1.0, 0.8, 0.3 and 0.7 by experimental binding. This illustrates the synergy between experimentation and computer modeling, and its application to the identification of potential immunotheraaeutic peptides.

Identificador

http://espace.library.uq.edu.au/view/UQ:34951

Idioma(s)

eng

Palavras-Chave #Mathematics, Interdisciplinary Applications #Biochemical Research Methods #Biotechnology & Applied Microbiology #Computer Science, Interdisciplinary Applications #Statistics & Probability #Molecules #Residues
Tipo

Journal Article