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PeptideLocator: prediction of bioactive peptides in protein sequences
Editor(s)
Date Issued
2013-05-01
Date Available
2019-04-24T11:07:34Z
Abstract
Motivation: Peptides play important roles in signalling, regulation and immunity within an organism. Many have successfully been used as therapeutic products often mimicking naturally occurring peptides. Here we present PeptideLocator for the automated prediction of functional peptides in a protein sequence.
Results: We have trained a machine learning algorithm to predict bioactive peptides within protein sequences. PeptideLocator performs well on training data achieving an area under the curve of 0.92 when tested in 5-fold cross-validation on a set of 2202 redundancy reduced peptide containing protein sequences. It has predictive power when applied to antimicrobial peptides, cytokines, growth factors, peptide hormones, toxins, venoms and other peptides. It can be applied to refine the choice of experimental investigations in functional studies of proteins.
Results: We have trained a machine learning algorithm to predict bioactive peptides within protein sequences. PeptideLocator performs well on training data achieving an area under the curve of 0.92 when tested in 5-fold cross-validation on a set of 2202 redundancy reduced peptide containing protein sequences. It has predictive power when applied to antimicrobial peptides, cytokines, growth factors, peptide hormones, toxins, venoms and other peptides. It can be applied to refine the choice of experimental investigations in functional studies of proteins.
Sponsorship
Enterprise Ireland
Science Foundation Ireland
Type of Material
Journal Article
Publisher
Oxford University Press
Journal
Bioinformatics
Volume
29
Issue
9
Start Page
1120
End Page
1126
Copyright (Published Version)
2013 the Authors
Language
English
Status of Item
Peer reviewed
ISSN
1367-4803
This item is made available under a Creative Commons License
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Name
Mooney_2012_final.pdf
Size
363.91 KB
Format
Adobe PDF
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