Reverse engineering Boolean networks: from Bernoulli mixture models to rule based systems.

A Boolean network is a graphical model for representing and analyzing the behavior of gene regulatory networks (GRN). In this context, the accurate and efficient reconstruction of a Boolean network is essential for understanding the gene regulation mechanism and the complex relations that exist ther...

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Main Authors: Mehreen Saeed, Maliha Ijaz, Kashif Javed, Haroon Atique Babri
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2012-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3524183?pdf=render
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spelling doaj-bf211bb7d54f4243958c5ca42888a92d2020-11-24T21:34:36ZengPublic Library of Science (PLoS)PLoS ONE1932-62032012-01-01712e5100610.1371/journal.pone.0051006Reverse engineering Boolean networks: from Bernoulli mixture models to rule based systems.Mehreen SaeedMaliha IjazKashif JavedHaroon Atique BabriA Boolean network is a graphical model for representing and analyzing the behavior of gene regulatory networks (GRN). In this context, the accurate and efficient reconstruction of a Boolean network is essential for understanding the gene regulation mechanism and the complex relations that exist therein. In this paper we introduce an elegant and efficient algorithm for the reverse engineering of Boolean networks from a time series of multivariate binary data corresponding to gene expression data. We call our method ReBMM, i.e., reverse engineering based on Bernoulli mixture models. The time complexity of most of the existing reverse engineering techniques is quite high and depends upon the indegree of a node in the network. Due to the high complexity of these methods, they can only be applied to sparsely connected networks of small sizes. ReBMM has a time complexity factor, which is independent of the indegree of a node and is quadratic in the number of nodes in the network, a big improvement over other techniques and yet there is little or no compromise in accuracy. We have tested ReBMM on a number of artificial datasets along with simulated data derived from a plant signaling network. We also used this method to reconstruct a network from real experimental observations of microarray data of the yeast cell cycle. Our method provides a natural framework for generating rules from a probabilistic model. It is simple, intuitive and illustrates excellent empirical results.http://europepmc.org/articles/PMC3524183?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Mehreen Saeed
Maliha Ijaz
Kashif Javed
Haroon Atique Babri
spellingShingle Mehreen Saeed
Maliha Ijaz
Kashif Javed
Haroon Atique Babri
Reverse engineering Boolean networks: from Bernoulli mixture models to rule based systems.
PLoS ONE
author_facet Mehreen Saeed
Maliha Ijaz
Kashif Javed
Haroon Atique Babri
author_sort Mehreen Saeed
title Reverse engineering Boolean networks: from Bernoulli mixture models to rule based systems.
title_short Reverse engineering Boolean networks: from Bernoulli mixture models to rule based systems.
title_full Reverse engineering Boolean networks: from Bernoulli mixture models to rule based systems.
title_fullStr Reverse engineering Boolean networks: from Bernoulli mixture models to rule based systems.
title_full_unstemmed Reverse engineering Boolean networks: from Bernoulli mixture models to rule based systems.
title_sort reverse engineering boolean networks: from bernoulli mixture models to rule based systems.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2012-01-01
description A Boolean network is a graphical model for representing and analyzing the behavior of gene regulatory networks (GRN). In this context, the accurate and efficient reconstruction of a Boolean network is essential for understanding the gene regulation mechanism and the complex relations that exist therein. In this paper we introduce an elegant and efficient algorithm for the reverse engineering of Boolean networks from a time series of multivariate binary data corresponding to gene expression data. We call our method ReBMM, i.e., reverse engineering based on Bernoulli mixture models. The time complexity of most of the existing reverse engineering techniques is quite high and depends upon the indegree of a node in the network. Due to the high complexity of these methods, they can only be applied to sparsely connected networks of small sizes. ReBMM has a time complexity factor, which is independent of the indegree of a node and is quadratic in the number of nodes in the network, a big improvement over other techniques and yet there is little or no compromise in accuracy. We have tested ReBMM on a number of artificial datasets along with simulated data derived from a plant signaling network. We also used this method to reconstruct a network from real experimental observations of microarray data of the yeast cell cycle. Our method provides a natural framework for generating rules from a probabilistic model. It is simple, intuitive and illustrates excellent empirical results.
url http://europepmc.org/articles/PMC3524183?pdf=render
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AT malihaijaz reverseengineeringbooleannetworksfrombernoullimixturemodelstorulebasedsystems
AT kashifjaved reverseengineeringbooleannetworksfrombernoullimixturemodelstorulebasedsystems
AT haroonatiquebabri reverseengineeringbooleannetworksfrombernoullimixturemodelstorulebasedsystems
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