Novel feature for catalytic protein residues reflecting interactions with other residues.

Owing to their potential for systematic analysis, complex networks have been widely used in proteomics. Representing a protein structure as a topology network provides novel insight into understanding protein folding mechanisms, stability and function. Here, we develop a new feature to reveal correl...

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Main Authors: Yizhou Li, Gongbing Li, Zhining Wen, Hui Yin, Mei Hu, Jiamin Xiao, Menglong Li
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3066176?pdf=render
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spelling doaj-1afdd62695c24f308f06ec694d7d3d512020-11-25T01:14:59ZengPublic Library of Science (PLoS)PLoS ONE1932-62032011-01-0163e1693210.1371/journal.pone.0016932Novel feature for catalytic protein residues reflecting interactions with other residues.Yizhou LiGongbing LiZhining WenHui YinMei HuJiamin XiaoMenglong LiOwing to their potential for systematic analysis, complex networks have been widely used in proteomics. Representing a protein structure as a topology network provides novel insight into understanding protein folding mechanisms, stability and function. Here, we develop a new feature to reveal correlations between residues using a protein structure network. In an original attempt to quantify the effects of several key residues on catalytic residues, a power function was used to model interactions between residues. The results indicate that focusing on a few residues is a feasible approach to identifying catalytic residues. The spatial environment surrounding a catalytic residue was analyzed in a layered manner. We present evidence that correlation between residues is related to their distance apart most environmental parameters of the outer layer make a smaller contribution to prediction and ii catalytic residues tend to be located near key positions in enzyme folds. Feature analysis revealed satisfactory performance for our features, which were combined with several conventional features in a prediction model for catalytic residues using a comprehensive data set from the Catalytic Site Atlas. Values of 88.6 for sensitivity and 88.4 for specificity were obtained by 10-fold cross-validation. These results suggest that these features reveal the mutual dependence of residues and are promising for further study of structure-function relationship.http://europepmc.org/articles/PMC3066176?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Yizhou Li
Gongbing Li
Zhining Wen
Hui Yin
Mei Hu
Jiamin Xiao
Menglong Li
spellingShingle Yizhou Li
Gongbing Li
Zhining Wen
Hui Yin
Mei Hu
Jiamin Xiao
Menglong Li
Novel feature for catalytic protein residues reflecting interactions with other residues.
PLoS ONE
author_facet Yizhou Li
Gongbing Li
Zhining Wen
Hui Yin
Mei Hu
Jiamin Xiao
Menglong Li
author_sort Yizhou Li
title Novel feature for catalytic protein residues reflecting interactions with other residues.
title_short Novel feature for catalytic protein residues reflecting interactions with other residues.
title_full Novel feature for catalytic protein residues reflecting interactions with other residues.
title_fullStr Novel feature for catalytic protein residues reflecting interactions with other residues.
title_full_unstemmed Novel feature for catalytic protein residues reflecting interactions with other residues.
title_sort novel feature for catalytic protein residues reflecting interactions with other residues.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2011-01-01
description Owing to their potential for systematic analysis, complex networks have been widely used in proteomics. Representing a protein structure as a topology network provides novel insight into understanding protein folding mechanisms, stability and function. Here, we develop a new feature to reveal correlations between residues using a protein structure network. In an original attempt to quantify the effects of several key residues on catalytic residues, a power function was used to model interactions between residues. The results indicate that focusing on a few residues is a feasible approach to identifying catalytic residues. The spatial environment surrounding a catalytic residue was analyzed in a layered manner. We present evidence that correlation between residues is related to their distance apart most environmental parameters of the outer layer make a smaller contribution to prediction and ii catalytic residues tend to be located near key positions in enzyme folds. Feature analysis revealed satisfactory performance for our features, which were combined with several conventional features in a prediction model for catalytic residues using a comprehensive data set from the Catalytic Site Atlas. Values of 88.6 for sensitivity and 88.4 for specificity were obtained by 10-fold cross-validation. These results suggest that these features reveal the mutual dependence of residues and are promising for further study of structure-function relationship.
url http://europepmc.org/articles/PMC3066176?pdf=render
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