Identifying essential pairwise interactions in elastic network model using the alpha shape theory

Elastic network models (ENM) are based on the idea that the geometry of a protein structure provides enough information for computing its fluctuations around its equilibrium conformation. This geometry is represented as an elastic network (EN) that is, a network of links between residues. A spring i...

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Main Authors: XIA, Fei, TONG, Dudu, YANG, Lifeng, WANG, Dayong, HOI, Steven C. H., KOEHL, Patrice, LU, Lanyuan
Format: text
Language:English
Published: Institutional Knowledge at Singapore Management University 2014
Subjects:
ANM
ENM
Online Access:https://ink.library.smu.edu.sg/sis_research/4038
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spelling sg-smu-ink.sis_research-50402018-05-25T07:00:22Z Identifying essential pairwise interactions in elastic network model using the alpha shape theory XIA, Fei TONG, Dudu YANG, Lifeng WANG, Dayong HOI, Steven C. H. KOEHL, Patrice LU, Lanyuan Elastic network models (ENM) are based on the idea that the geometry of a protein structure provides enough information for computing its fluctuations around its equilibrium conformation. This geometry is represented as an elastic network (EN) that is, a network of links between residues. A spring is associated with each of these links. The normal modes of the protein are then identified with the normal modes of the corresponding network of springs. Standard approaches for generating ENs rely on a cutoff distance. There is no consensus on how to choose this cutoff. In this work, we propose instead to filter the set of all residue pairs in a protein using the concept of alpha shapes. The main alpha shape we considered is based on the Delaunay triangulation of the Cα positions; we referred to the corresponding EN as EN(∞). We have shown that heterogeneous anisotropic network models, called αHANMs, that are based on EN(∞) reproduce experimental B-factors very well, with correlation coefficients above 0.99 and root-mean-square deviations below 0.1 Å2 for a large set of high resolution protein structures. The construction of EN(∞) is simple to implement and may be used automatically for generating ENs for all types of ENMs. 2014-06-01T07:00:00Z text https://ink.library.smu.edu.sg/sis_research/4038 info:doi/10.1002/jcc.23587 Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University ANM elastic network model alpha shape theory ENM Databases and Information Systems
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic ANM
elastic network model
alpha shape theory
ENM
Databases and Information Systems
spellingShingle ANM
elastic network model
alpha shape theory
ENM
Databases and Information Systems
XIA, Fei
TONG, Dudu
YANG, Lifeng
WANG, Dayong
HOI, Steven C. H.
KOEHL, Patrice
LU, Lanyuan
Identifying essential pairwise interactions in elastic network model using the alpha shape theory
description Elastic network models (ENM) are based on the idea that the geometry of a protein structure provides enough information for computing its fluctuations around its equilibrium conformation. This geometry is represented as an elastic network (EN) that is, a network of links between residues. A spring is associated with each of these links. The normal modes of the protein are then identified with the normal modes of the corresponding network of springs. Standard approaches for generating ENs rely on a cutoff distance. There is no consensus on how to choose this cutoff. In this work, we propose instead to filter the set of all residue pairs in a protein using the concept of alpha shapes. The main alpha shape we considered is based on the Delaunay triangulation of the Cα positions; we referred to the corresponding EN as EN(∞). We have shown that heterogeneous anisotropic network models, called αHANMs, that are based on EN(∞) reproduce experimental B-factors very well, with correlation coefficients above 0.99 and root-mean-square deviations below 0.1 Å2 for a large set of high resolution protein structures. The construction of EN(∞) is simple to implement and may be used automatically for generating ENs for all types of ENMs.
format text
author XIA, Fei
TONG, Dudu
YANG, Lifeng
WANG, Dayong
HOI, Steven C. H.
KOEHL, Patrice
LU, Lanyuan
author_facet XIA, Fei
TONG, Dudu
YANG, Lifeng
WANG, Dayong
HOI, Steven C. H.
KOEHL, Patrice
LU, Lanyuan
author_sort XIA, Fei
title Identifying essential pairwise interactions in elastic network model using the alpha shape theory
title_short Identifying essential pairwise interactions in elastic network model using the alpha shape theory
title_full Identifying essential pairwise interactions in elastic network model using the alpha shape theory
title_fullStr Identifying essential pairwise interactions in elastic network model using the alpha shape theory
title_full_unstemmed Identifying essential pairwise interactions in elastic network model using the alpha shape theory
title_sort identifying essential pairwise interactions in elastic network model using the alpha shape theory
publisher Institutional Knowledge at Singapore Management University
publishDate 2014
url https://ink.library.smu.edu.sg/sis_research/4038
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