Automated generation and evaluation of specific MHC binding predictive tools: ARB matrix applications

被引:0
|
作者
Huynh-Hoa Bui
John Sidney
Bjoern Peters
Muthuraman Sathiamurthy
Asabe Sinichi
Kelly-Anne Purton
Bianca R. Mothé
Francis V. Chisari
David I. Watkins
Alessandro Sette
机构
[1] La Jolla Institute for Allergy and Immunology,Division of Vaccine Discovery
[2] The Scripps Research Institute,Division of Experimental Pathology
[3] University of Wisconsin,Wisconsin Regional Primate Center
来源
Immunogenetics | 2005年 / 57卷
关键词
MHC; Binding prediction; Computer algorithms; Automated tool evaluation; Web server;
D O I
暂无
中图分类号
学科分类号
摘要
Prediction of which peptides can bind major histocompatibility complex (MHC) molecules is commonly used to assist in the identification of T cell epitopes. However, because of the large numbers of different MHC molecules of interest, each associated with different predictive tools, tool generation and evaluation can be a very resource intensive task. A methodology commonly used to predict MHC binding affinity is the matrix or linear coefficients method. Herein, we described Average Relative Binding (ARB) matrix methods that directly predict IC50 values allowing combination of searches involving different peptide sizes and alleles into a single global prediction. A computer program was developed to automate the generation and evaluation of ARB predictive tools. Using an in-house MHC binding database, we generated a total of 85 and 13 MHC class I and class II matrices, respectively. Results from the automated evaluation of tool efficiency are presented. We anticipate that this automation framework will be generally applicable to the generation and evaluation of large numbers of MHC predictive methods and tools, and will be of value to centralize and rationalize the process of evaluation of MHC predictions. MHC binding predictions based on ARB matrices were made available at http://epitope.liai.org:8080/matrix web server.
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页码:304 / 314
页数:10
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