Literature DB >> 17485431

Comparing association network algorithms for reverse engineering of large-scale gene regulatory networks: synthetic versus real data.

Nicola Soranzo1, Ginestra Bianconi, Claudio Altafini.   

Abstract

MOTIVATION: Inferring a gene regulatory network exclusively from microarray expression profiles is a difficult but important task. The aim of this work is to compare the predictive power of some of the most popular algorithms in different conditions (like data taken at equilibrium or time courses) and on both synthetic and real microarray data. We are in particular interested in comparing similarity measures both of linear type (like correlations and partial correlations) and of non-linear type (mutual information and conditional mutual information), and in investigating the underdetermined case (less samples than genes).
RESULTS: In our simulations we see that all network inference algorithms obtain better performances from data produced with 'structural' perturbations, like gene knockouts at steady state, than with any dynamical perturbation. The predictive power of all algorithms is confirmed on a reverse engineering problem from Escherichia coli gene profiling data: the edges of the 'physical' network of transcription factor-binding sites are significantly overrepresented among the highest weighting edges of the graph that we infer directly from the data without any structure supervision. Comparing synthetic and in vivo data on the same network graph allows us to give an indication of how much more complex a real transcriptional regulation program is with respect to an artificial model. AVAILABILITY: Software is freely available at the URL http://people.sissa.it/~altafini/papers/SoBiAl07/. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.

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Year:  2007        PMID: 17485431     DOI: 10.1093/bioinformatics/btm163

Source DB:  PubMed          Journal:  Bioinformatics        ISSN: 1367-4803            Impact factor:   6.937


  38 in total

1.  Statistical inference and reverse engineering of gene regulatory networks from observational expression data.

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2.  Reverse engineering large-scale genetic networks: synthetic versus real data.

Authors:  Luwen Zhang; Mei Xiao; Yong Wang; Wu Zhang
Journal:  J Genet       Date:  2010-04       Impact factor: 1.166

3.  Extensive evaluation of the generalized relevance network approach to inferring gene regulatory networks.

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Journal:  Gigascience       Date:  2018-11-01       Impact factor: 6.524

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Authors:  Lucas B Edelman; James A Eddy; Nathan D Price
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Review 5.  Understanding transcriptional regulatory networks using computational models.

Authors:  Bing He; Kai Tan
Journal:  Curr Opin Genet Dev       Date:  2016-03-04       Impact factor: 5.578

6.  Computational modeling with forward and reverse engineering links signaling network and genomic regulatory responses: NF-kappaB signaling-induced gene expression responses in inflammation.

Authors:  Shih Chi Peng; David Shan Hill Wong; Kai Che Tung; Yan Yu Chen; Chun Cheih Chao; Chien Hua Peng; Yung Jen Chuang; Chuan Yi Tang
Journal:  BMC Bioinformatics       Date:  2010-06-08       Impact factor: 3.169

7.  From knockouts to networks: establishing direct cause-effect relationships through graph analysis.

Authors:  Andrea Pinna; Nicola Soranzo; Alberto de la Fuente
Journal:  PLoS One       Date:  2010-10-11       Impact factor: 3.240

8.  Petri Nets with Fuzzy Logic (PNFL): reverse engineering and parametrization.

Authors:  Robert Küffner; Tobias Petri; Lukas Windhager; Ralf Zimmer
Journal:  PLoS One       Date:  2010-09-20       Impact factor: 3.240

9.  Bayesian network expansion identifies new ROS and biofilm regulators.

Authors:  Andrew P Hodges; Dongjuan Dai; Zuoshuang Xiang; Peter Woolf; Chuanwu Xi; Yongqun He
Journal:  PLoS One       Date:  2010-03-03       Impact factor: 3.240

10.  Metabolic network discovery through reverse engineering of metabolome data.

Authors:  Tunahan Cakır; Margriet M W B Hendriks; Johan A Westerhuis; Age K Smilde
Journal:  Metabolomics       Date:  2009-02-21       Impact factor: 4.290

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