Gaussian network model can be enhanced by combining solvent accessibility in proteins

Abstract Gaussian network model (GNM), regarded as the simplest and most representative coarse-grained model, has been widely adopted to analyze and reveal protein dynamics and functions. Designing a variation of the classical GNM, by defining a new Kirchhoff matrix, is the way to improve the residu...

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Main Authors: Hua Zhang, Tao Jiang, Guogen Shan, Shiqi Xu, Yujie Song
Format: Article
Language:English
Published: Nature Publishing Group 2017-08-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-017-07677-9
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spelling doaj-b86819f7500a46898897d81db8eff9fa2020-12-08T02:28:27ZengNature Publishing GroupScientific Reports2045-23222017-08-017111310.1038/s41598-017-07677-9Gaussian network model can be enhanced by combining solvent accessibility in proteinsHua Zhang0Tao Jiang1Guogen Shan2Shiqi Xu3Yujie Song4School of Computer and Information Engineering, Zhejiang Gongshang UniversitySchool of Statistics and Mathematics, Zhejiang Gongshang UniversitySchool of Community Health Sciences, University of Nevada Las VegasSchool of Computer and Information Engineering, Zhejiang Gongshang UniversitySchool of Computer and Information Engineering, Zhejiang Gongshang UniversityAbstract Gaussian network model (GNM), regarded as the simplest and most representative coarse-grained model, has been widely adopted to analyze and reveal protein dynamics and functions. Designing a variation of the classical GNM, by defining a new Kirchhoff matrix, is the way to improve the residue flexibility modeling. We combined information arising from local relative solvent accessibility (RSA) between two residues into the Kirchhoff matrix of the parameter-free GNM. The undetermined parameters in the new Kirchhoff matrix were estimated by using particle swarm optimization. The usage of RSA was motivated by the fact that our previous work using RSA based linear regression model resulted out higher prediction quality of the residue flexibility when compared with the classical GNM and the parameter free GNM. Computational experiments, conducted based on one training dataset, two independent datasets and one additional small set derived by molecular dynamics simulations, demonstrated that the average correlation coefficients of the proposed RSA based parameter-free GNM, called RpfGNM, were significantly increased when compared with the parameter-free GNM. Our empirical results indicated that a variation of the classical GNMs by combining other protein structural properties is an attractive way to improve the quality of flexibility modeling.https://doi.org/10.1038/s41598-017-07677-9
collection DOAJ
language English
format Article
sources DOAJ
author Hua Zhang
Tao Jiang
Guogen Shan
Shiqi Xu
Yujie Song
spellingShingle Hua Zhang
Tao Jiang
Guogen Shan
Shiqi Xu
Yujie Song
Gaussian network model can be enhanced by combining solvent accessibility in proteins
Scientific Reports
author_facet Hua Zhang
Tao Jiang
Guogen Shan
Shiqi Xu
Yujie Song
author_sort Hua Zhang
title Gaussian network model can be enhanced by combining solvent accessibility in proteins
title_short Gaussian network model can be enhanced by combining solvent accessibility in proteins
title_full Gaussian network model can be enhanced by combining solvent accessibility in proteins
title_fullStr Gaussian network model can be enhanced by combining solvent accessibility in proteins
title_full_unstemmed Gaussian network model can be enhanced by combining solvent accessibility in proteins
title_sort gaussian network model can be enhanced by combining solvent accessibility in proteins
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2017-08-01
description Abstract Gaussian network model (GNM), regarded as the simplest and most representative coarse-grained model, has been widely adopted to analyze and reveal protein dynamics and functions. Designing a variation of the classical GNM, by defining a new Kirchhoff matrix, is the way to improve the residue flexibility modeling. We combined information arising from local relative solvent accessibility (RSA) between two residues into the Kirchhoff matrix of the parameter-free GNM. The undetermined parameters in the new Kirchhoff matrix were estimated by using particle swarm optimization. The usage of RSA was motivated by the fact that our previous work using RSA based linear regression model resulted out higher prediction quality of the residue flexibility when compared with the classical GNM and the parameter free GNM. Computational experiments, conducted based on one training dataset, two independent datasets and one additional small set derived by molecular dynamics simulations, demonstrated that the average correlation coefficients of the proposed RSA based parameter-free GNM, called RpfGNM, were significantly increased when compared with the parameter-free GNM. Our empirical results indicated that a variation of the classical GNMs by combining other protein structural properties is an attractive way to improve the quality of flexibility modeling.
url https://doi.org/10.1038/s41598-017-07677-9
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AT yujiesong gaussiannetworkmodelcanbeenhancedbycombiningsolventaccessibilityinproteins
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