Applying dynamic Bayesian networks to perturbed gene expression data

<p>Abstract</p> <p>Background</p> <p>A central goal of molecular biology is to understand the regulatory mechanisms of gene transcription and protein synthesis. Because of their solid basis in statistics, allowing to deal with the stochastic aspects of gene expressions...

Full description

Bibliographic Details
Main Authors: Wilczyński Bartek, Mizera Andrzej, Gambin Anna, Dojer Norbert, Tiuryn Jerzy
Format: Article
Language:English
Published: BMC 2006-05-01
Series:BMC Bioinformatics
Online Access:http://www.biomedcentral.com/1471-2105/7/249
id doaj-a02eacd1b789420fac59e93fe696baea
record_format Article
spelling doaj-a02eacd1b789420fac59e93fe696baea2020-11-24T21:40:09ZengBMCBMC Bioinformatics1471-21052006-05-017124910.1186/1471-2105-7-249Applying dynamic Bayesian networks to perturbed gene expression dataWilczyński BartekMizera AndrzejGambin AnnaDojer NorbertTiuryn Jerzy<p>Abstract</p> <p>Background</p> <p>A central goal of molecular biology is to understand the regulatory mechanisms of gene transcription and protein synthesis. Because of their solid basis in statistics, allowing to deal with the stochastic aspects of gene expressions and noisy measurements in a natural way, Bayesian networks appear attractive in the field of inferring gene interactions structure from microarray experiments data. However, the basic formalism has some disadvantages, e.g. it is sometimes hard to distinguish between the origin and the target of an interaction. Two kinds of microarray experiments yield data particularly rich in information regarding the direction of interactions: time series and perturbation experiments. In order to correctly handle them, the basic formalism must be modified. For example, dynamic Bayesian networks (DBN) apply to time series microarray data. To our knowledge the DBN technique has not been applied in the context of perturbation experiments.</p> <p>Results</p> <p>We extend the framework of dynamic Bayesian networks in order to incorporate perturbations. Moreover, an exact algorithm for inferring an optimal network is proposed and a discretization method specialized for time series data from perturbation experiments is introduced. We apply our procedure to realistic simulations data. The results are compared with those obtained by standard DBN learning techniques. Moreover, the advantages of using exact learning algorithm instead of heuristic methods are analyzed.</p> <p>Conclusion</p> <p>We show that the quality of inferred networks dramatically improves when using data from perturbation experiments. We also conclude that the exact algorithm should be used when it is possible, i.e. when considered set of genes is small enough.</p> http://www.biomedcentral.com/1471-2105/7/249
collection DOAJ
language English
format Article
sources DOAJ
author Wilczyński Bartek
Mizera Andrzej
Gambin Anna
Dojer Norbert
Tiuryn Jerzy
spellingShingle Wilczyński Bartek
Mizera Andrzej
Gambin Anna
Dojer Norbert
Tiuryn Jerzy
Applying dynamic Bayesian networks to perturbed gene expression data
BMC Bioinformatics
author_facet Wilczyński Bartek
Mizera Andrzej
Gambin Anna
Dojer Norbert
Tiuryn Jerzy
author_sort Wilczyński Bartek
title Applying dynamic Bayesian networks to perturbed gene expression data
title_short Applying dynamic Bayesian networks to perturbed gene expression data
title_full Applying dynamic Bayesian networks to perturbed gene expression data
title_fullStr Applying dynamic Bayesian networks to perturbed gene expression data
title_full_unstemmed Applying dynamic Bayesian networks to perturbed gene expression data
title_sort applying dynamic bayesian networks to perturbed gene expression data
publisher BMC
series BMC Bioinformatics
issn 1471-2105
publishDate 2006-05-01
description <p>Abstract</p> <p>Background</p> <p>A central goal of molecular biology is to understand the regulatory mechanisms of gene transcription and protein synthesis. Because of their solid basis in statistics, allowing to deal with the stochastic aspects of gene expressions and noisy measurements in a natural way, Bayesian networks appear attractive in the field of inferring gene interactions structure from microarray experiments data. However, the basic formalism has some disadvantages, e.g. it is sometimes hard to distinguish between the origin and the target of an interaction. Two kinds of microarray experiments yield data particularly rich in information regarding the direction of interactions: time series and perturbation experiments. In order to correctly handle them, the basic formalism must be modified. For example, dynamic Bayesian networks (DBN) apply to time series microarray data. To our knowledge the DBN technique has not been applied in the context of perturbation experiments.</p> <p>Results</p> <p>We extend the framework of dynamic Bayesian networks in order to incorporate perturbations. Moreover, an exact algorithm for inferring an optimal network is proposed and a discretization method specialized for time series data from perturbation experiments is introduced. We apply our procedure to realistic simulations data. The results are compared with those obtained by standard DBN learning techniques. Moreover, the advantages of using exact learning algorithm instead of heuristic methods are analyzed.</p> <p>Conclusion</p> <p>We show that the quality of inferred networks dramatically improves when using data from perturbation experiments. We also conclude that the exact algorithm should be used when it is possible, i.e. when considered set of genes is small enough.</p>
url http://www.biomedcentral.com/1471-2105/7/249
work_keys_str_mv AT wilczynskibartek applyingdynamicbayesiannetworkstoperturbedgeneexpressiondata
AT mizeraandrzej applyingdynamicbayesiannetworkstoperturbedgeneexpressiondata
AT gambinanna applyingdynamicbayesiannetworkstoperturbedgeneexpressiondata
AT dojernorbert applyingdynamicbayesiannetworkstoperturbedgeneexpressiondata
AT tiurynjerzy applyingdynamicbayesiannetworkstoperturbedgeneexpressiondata
_version_ 1725927827917766656