Predicting proteins interactions from protein sequence features using support vector machines

Computational methods to predict protein-protein interactions are becoming increasingly important. This is due to the fact that most of the interactions data have been identified by high-throughput technologies like the yeast two-hybrid system which are known to yield many false positives. In this p...

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Main Authors: Alashwal, Hany Taher Ahmed, Deris, Safaai, Othman, Muhamad Razib
Format: Monograph
Language:English
Published: Penerbit UTM 2017
Online Access:http://eprints.utm.my/8731/
http://eprints.utm.my/8731/1/BIOCOMP-2006.pdf
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author Alashwal, Hany Taher Ahmed
Deris, Safaai
Othman, Muhamad Razib
author_facet Alashwal, Hany Taher Ahmed
Deris, Safaai
Othman, Muhamad Razib
author_sort Alashwal, Hany Taher Ahmed
building UTeM Institutional Repository
collection Online Access
description Computational methods to predict protein-protein interactions are becoming increasingly important. This is due to the fact that most of the interactions data have been identified by high-throughput technologies like the yeast two-hybrid system which are known to yield many false positives. In this paper we investigate the use of two protein sequence features, namely, domain structure and hydrophobicity properties. The support vector machines (SVM) has been used as a learning system to predict protein interactions based only on protein sequence features. Protein domain structure and hydrophobicity properties are used separately as the sequence feature. Both features achieved accuracy of about 80%. But domains structure had receiver operating characteristic (ROC) score of 0.8480, while hydrophobicity had ROC score of 0.8159. These results indicate that protein-protein interaction can be predicted from domain structure with relatively better accuracy than hydrophobicity.
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institution Universiti Teknologi Malaysia
institution_category Local University
language English
last_indexed 2025-11-15T21:02:59Z
publishDate 2017
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spelling utm-87312017-09-07T04:06:07Z http://eprints.utm.my/8731/ Predicting proteins interactions from protein sequence features using support vector machines Alashwal, Hany Taher Ahmed Deris, Safaai Othman, Muhamad Razib Computational methods to predict protein-protein interactions are becoming increasingly important. This is due to the fact that most of the interactions data have been identified by high-throughput technologies like the yeast two-hybrid system which are known to yield many false positives. In this paper we investigate the use of two protein sequence features, namely, domain structure and hydrophobicity properties. The support vector machines (SVM) has been used as a learning system to predict protein interactions based only on protein sequence features. Protein domain structure and hydrophobicity properties are used separately as the sequence feature. Both features achieved accuracy of about 80%. But domains structure had receiver operating characteristic (ROC) score of 0.8480, while hydrophobicity had ROC score of 0.8159. These results indicate that protein-protein interaction can be predicted from domain structure with relatively better accuracy than hydrophobicity. Penerbit UTM 2017 Monograph PeerReviewed application/pdf en http://eprints.utm.my/8731/1/BIOCOMP-2006.pdf Alashwal, Hany Taher Ahmed and Deris, Safaai and Othman, Muhamad Razib (2017) Predicting proteins interactions from protein sequence features using support vector machines. Other. Penerbit UTM. http://penerbit.utm.my/
spellingShingle Alashwal, Hany Taher Ahmed
Deris, Safaai
Othman, Muhamad Razib
Predicting proteins interactions from protein sequence features using support vector machines
title Predicting proteins interactions from protein sequence features using support vector machines
title_full Predicting proteins interactions from protein sequence features using support vector machines
title_fullStr Predicting proteins interactions from protein sequence features using support vector machines
title_full_unstemmed Predicting proteins interactions from protein sequence features using support vector machines
title_short Predicting proteins interactions from protein sequence features using support vector machines
title_sort predicting proteins interactions from protein sequence features using support vector machines
url http://eprints.utm.my/8731/
http://eprints.utm.my/8731/
http://eprints.utm.my/8731/1/BIOCOMP-2006.pdf