Inferring gene regulatory networks by singular value decomposition and gravitation field algorithm.

Reconstruction of gene regulatory networks (GRNs) is of utmost interest and has become a challenge computational problem in system biology. However, every existing inference algorithm from gene expression profiles has its own advantages and disadvantages. In particular, the effectiveness and efficie...

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Main Authors: Ming Zheng, Jia-nan Wu, Yan-xin Huang, Gui-xia Liu, You Zhou, Chun-guang Zhou
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2012-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3514269?pdf=render
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spelling doaj-95f982c8d3634fb1b4e864d30e9b46cd2020-11-25T02:20:41ZengPublic Library of Science (PLoS)PLoS ONE1932-62032012-01-01712e5114110.1371/journal.pone.0051141Inferring gene regulatory networks by singular value decomposition and gravitation field algorithm.Ming ZhengJia-nan WuYan-xin HuangGui-xia LiuYou ZhouChun-guang ZhouReconstruction of gene regulatory networks (GRNs) is of utmost interest and has become a challenge computational problem in system biology. However, every existing inference algorithm from gene expression profiles has its own advantages and disadvantages. In particular, the effectiveness and efficiency of every previous algorithm is not high enough. In this work, we proposed a novel inference algorithm from gene expression data based on differential equation model. In this algorithm, two methods were included for inferring GRNs. Before reconstructing GRNs, singular value decomposition method was used to decompose gene expression data, determine the algorithm solution space, and get all candidate solutions of GRNs. In these generated family of candidate solutions, gravitation field algorithm was modified to infer GRNs, used to optimize the criteria of differential equation model, and search the best network structure result. The proposed algorithm is validated on both the simulated scale-free network and real benchmark gene regulatory network in networks database. Both the Bayesian method and the traditional differential equation model were also used to infer GRNs, and the results were used to compare with the proposed algorithm in our work. And genetic algorithm and simulated annealing were also used to evaluate gravitation field algorithm. The cross-validation results confirmed the effectiveness of our algorithm, which outperforms significantly other previous algorithms.http://europepmc.org/articles/PMC3514269?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Ming Zheng
Jia-nan Wu
Yan-xin Huang
Gui-xia Liu
You Zhou
Chun-guang Zhou
spellingShingle Ming Zheng
Jia-nan Wu
Yan-xin Huang
Gui-xia Liu
You Zhou
Chun-guang Zhou
Inferring gene regulatory networks by singular value decomposition and gravitation field algorithm.
PLoS ONE
author_facet Ming Zheng
Jia-nan Wu
Yan-xin Huang
Gui-xia Liu
You Zhou
Chun-guang Zhou
author_sort Ming Zheng
title Inferring gene regulatory networks by singular value decomposition and gravitation field algorithm.
title_short Inferring gene regulatory networks by singular value decomposition and gravitation field algorithm.
title_full Inferring gene regulatory networks by singular value decomposition and gravitation field algorithm.
title_fullStr Inferring gene regulatory networks by singular value decomposition and gravitation field algorithm.
title_full_unstemmed Inferring gene regulatory networks by singular value decomposition and gravitation field algorithm.
title_sort inferring gene regulatory networks by singular value decomposition and gravitation field algorithm.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2012-01-01
description Reconstruction of gene regulatory networks (GRNs) is of utmost interest and has become a challenge computational problem in system biology. However, every existing inference algorithm from gene expression profiles has its own advantages and disadvantages. In particular, the effectiveness and efficiency of every previous algorithm is not high enough. In this work, we proposed a novel inference algorithm from gene expression data based on differential equation model. In this algorithm, two methods were included for inferring GRNs. Before reconstructing GRNs, singular value decomposition method was used to decompose gene expression data, determine the algorithm solution space, and get all candidate solutions of GRNs. In these generated family of candidate solutions, gravitation field algorithm was modified to infer GRNs, used to optimize the criteria of differential equation model, and search the best network structure result. The proposed algorithm is validated on both the simulated scale-free network and real benchmark gene regulatory network in networks database. Both the Bayesian method and the traditional differential equation model were also used to infer GRNs, and the results were used to compare with the proposed algorithm in our work. And genetic algorithm and simulated annealing were also used to evaluate gravitation field algorithm. The cross-validation results confirmed the effectiveness of our algorithm, which outperforms significantly other previous algorithms.
url http://europepmc.org/articles/PMC3514269?pdf=render
work_keys_str_mv AT mingzheng inferringgeneregulatorynetworksbysingularvaluedecompositionandgravitationfieldalgorithm
AT jiananwu inferringgeneregulatorynetworksbysingularvaluedecompositionandgravitationfieldalgorithm
AT yanxinhuang inferringgeneregulatorynetworksbysingularvaluedecompositionandgravitationfieldalgorithm
AT guixialiu inferringgeneregulatorynetworksbysingularvaluedecompositionandgravitationfieldalgorithm
AT youzhou inferringgeneregulatorynetworksbysingularvaluedecompositionandgravitationfieldalgorithm
AT chunguangzhou inferringgeneregulatorynetworksbysingularvaluedecompositionandgravitationfieldalgorithm
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