Ambiguity in logic-based models of gene regulatory networks: An integrative multi-perturbation analysis.

Most studies of gene regulatory network (GRN) inference have focused extensively on identifying the interaction map of the GRNs. However, in order to predict the cellular behavior, modeling the GRN in terms of logic circuits, i.e., Boolean networks, is necessary. The perturbation techniques, e.g., k...

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Main Authors: Amir Reza Alizad-Rahvar, Mehdi Sadeghi
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC6245684?pdf=render
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spelling doaj-9ee17ef2e45f46448cb74f0b8c95da012020-11-24T21:39:33ZengPublic Library of Science (PLoS)PLoS ONE1932-62032018-01-011311e020697610.1371/journal.pone.0206976Ambiguity in logic-based models of gene regulatory networks: An integrative multi-perturbation analysis.Amir Reza Alizad-RahvarMehdi SadeghiMost studies of gene regulatory network (GRN) inference have focused extensively on identifying the interaction map of the GRNs. However, in order to predict the cellular behavior, modeling the GRN in terms of logic circuits, i.e., Boolean networks, is necessary. The perturbation techniques, e.g., knock-down and over-expression, should be utilized for identifying the underlying logic behind the interactions. However, we will show that by using only transcriptomic data obtained by single-perturbation experiments, we cannot observe all regulatory interactions, and this invisibility causes ambiguity in our model. Consequently, we need to employ the data of multiple omics layers (genome, transcriptome, and proteome) as well as multiple perturbation experiments to reduce or eliminate ambiguity in our modeling. In this paper, we introduce a multi-step perturbation experiment to deal with ambiguity. Moreover, we perform a thorough analysis to investigate which types of perturbations and omics layers play the most important role in the unambiguous modeling of the GRNs and how much ambiguity will be eliminated by considering more perturbations and more omics layers. Our analysis shows that performing both knock-down and over-expression is necessary in order to achieve the least ambiguous model. Moreover, the more steps of the perturbation are taken, the more ambiguity is eliminated. In addition, we can even achieve an unambiguous model of the GRN by using multi-step perturbation and integrating transcriptomic, protein-protein interaction, and cis-element data. Finally, we demonstrate the effect of utilizing different types of perturbation experiment and integrating multi-omics data on identifying the logic behind the regulatory interactions in a synthetic GRN. In conclusion, relying on the results of only knock-down experiments and not including as many omics layers as possible in the GRN inference, makes the results ambiguous, unreliable, and less accurate.http://europepmc.org/articles/PMC6245684?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Amir Reza Alizad-Rahvar
Mehdi Sadeghi
spellingShingle Amir Reza Alizad-Rahvar
Mehdi Sadeghi
Ambiguity in logic-based models of gene regulatory networks: An integrative multi-perturbation analysis.
PLoS ONE
author_facet Amir Reza Alizad-Rahvar
Mehdi Sadeghi
author_sort Amir Reza Alizad-Rahvar
title Ambiguity in logic-based models of gene regulatory networks: An integrative multi-perturbation analysis.
title_short Ambiguity in logic-based models of gene regulatory networks: An integrative multi-perturbation analysis.
title_full Ambiguity in logic-based models of gene regulatory networks: An integrative multi-perturbation analysis.
title_fullStr Ambiguity in logic-based models of gene regulatory networks: An integrative multi-perturbation analysis.
title_full_unstemmed Ambiguity in logic-based models of gene regulatory networks: An integrative multi-perturbation analysis.
title_sort ambiguity in logic-based models of gene regulatory networks: an integrative multi-perturbation analysis.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2018-01-01
description Most studies of gene regulatory network (GRN) inference have focused extensively on identifying the interaction map of the GRNs. However, in order to predict the cellular behavior, modeling the GRN in terms of logic circuits, i.e., Boolean networks, is necessary. The perturbation techniques, e.g., knock-down and over-expression, should be utilized for identifying the underlying logic behind the interactions. However, we will show that by using only transcriptomic data obtained by single-perturbation experiments, we cannot observe all regulatory interactions, and this invisibility causes ambiguity in our model. Consequently, we need to employ the data of multiple omics layers (genome, transcriptome, and proteome) as well as multiple perturbation experiments to reduce or eliminate ambiguity in our modeling. In this paper, we introduce a multi-step perturbation experiment to deal with ambiguity. Moreover, we perform a thorough analysis to investigate which types of perturbations and omics layers play the most important role in the unambiguous modeling of the GRNs and how much ambiguity will be eliminated by considering more perturbations and more omics layers. Our analysis shows that performing both knock-down and over-expression is necessary in order to achieve the least ambiguous model. Moreover, the more steps of the perturbation are taken, the more ambiguity is eliminated. In addition, we can even achieve an unambiguous model of the GRN by using multi-step perturbation and integrating transcriptomic, protein-protein interaction, and cis-element data. Finally, we demonstrate the effect of utilizing different types of perturbation experiment and integrating multi-omics data on identifying the logic behind the regulatory interactions in a synthetic GRN. In conclusion, relying on the results of only knock-down experiments and not including as many omics layers as possible in the GRN inference, makes the results ambiguous, unreliable, and less accurate.
url http://europepmc.org/articles/PMC6245684?pdf=render
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