Genome Informatics
Online ISSN : 2185-842X
Print ISSN : 0919-9454
ISSN-L : 0919-9454
Peptide Binding at Class I Major Histocompatibility Complex Scored with Linear Functions and Support Vector Machines
Henning RiedeselBjörn KolbeckOliver SchmetzerErnst-Walter Knapp
Author information
JOURNAL FREE ACCESS

2004 Volume 15 Issue 1 Pages 198-212

Details
Abstract

We explore two different methods to predict the binding ability of nonapeptides at the class I major histocompatibility complex using a general linear scoring function that defines a separating hyperplane in the feature space of sequences. In absence of suitable data on non-binding nonapeptides we generated sequences randomly from a selected set of proteins from the protein data bank. The parameters of the scoring function were determined by a generalized least square optimization (LSM) and alternatively by the support vector machine (SVM). With the generalized LSM impaired data for learning with a small set of binding peptides and a large set of non-binding peptides can be treated in a balanced way rendering LSM more successful than SVM, while for symmetric data sets SVM has a slight advantage compared to LSM.

Content from these authors
© Japanese Society for Bioinformatics
Previous article Next article
feedback
Top