Boolean factor graph model for biological systems: the yeast cell-cycle network

Abstract Background The desire to understand genomic functions and the behavior of complex gene regulatory networks has recently been a major research focus in systems biology. As a result, a plethora of computational and modeling tools have been proposed to identify and infer interactions among bio...

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Main Authors: Stephen Kotiang, Ali Eslami
Format: Article
Language:English
Published: BMC 2021-09-01
Series:BMC Bioinformatics
Subjects:
Online Access:https://doi.org/10.1186/s12859-021-04361-8
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spelling doaj-5faeb3b7cf414cd986bb162b4633400e2021-09-19T11:16:28ZengBMCBMC Bioinformatics1471-21052021-09-0122112710.1186/s12859-021-04361-8Boolean factor graph model for biological systems: the yeast cell-cycle networkStephen Kotiang0Ali Eslami1Department of Electrical Engineering and Computer Science, Wichita State UniversityDepartment of Electrical Engineering and Computer Science, Wichita State UniversityAbstract Background The desire to understand genomic functions and the behavior of complex gene regulatory networks has recently been a major research focus in systems biology. As a result, a plethora of computational and modeling tools have been proposed to identify and infer interactions among biological entities. Here, we consider the general question of the effect of perturbation on the global dynamical network behavior as well as error propagation in biological networks to incite research pertaining to intervention strategies. Results This paper introduces a computational framework that combines the formulation of Boolean networks and factor graphs to explore the global dynamical features of biological systems. A message-passing algorithm is proposed for this formalism to evolve network states as messages in the graph. In addition, the mathematical formulation allows us to describe the dynamics and behavior of error propagation in gene regulatory networks by conducting a density evolution (DE) analysis. The model is applied to assess the network state progression and the impact of gene deletion in the budding yeast cell cycle. Simulation results show that our model predictions match published experimental data. Also, our findings reveal that the sample yeast cell-cycle network is not only robust but also consistent with real high-throughput expression data. Finally, our DE analysis serves as a tool to find the optimal values of network parameters for resilience against perturbations, especially in the inference of genetic graphs. Conclusion Our computational framework provides a useful graphical model and analytical tools to study biological networks. It can be a powerful tool to predict the consequences of gene deletions before conducting wet bench experiments because it proves to be a quick route to predicting biologically relevant dynamic properties without tunable kinetic parameters.https://doi.org/10.1186/s12859-021-04361-8Boolean networksFactor graphNetwork perturbationSystems biology
collection DOAJ
language English
format Article
sources DOAJ
author Stephen Kotiang
Ali Eslami
spellingShingle Stephen Kotiang
Ali Eslami
Boolean factor graph model for biological systems: the yeast cell-cycle network
BMC Bioinformatics
Boolean networks
Factor graph
Network perturbation
Systems biology
author_facet Stephen Kotiang
Ali Eslami
author_sort Stephen Kotiang
title Boolean factor graph model for biological systems: the yeast cell-cycle network
title_short Boolean factor graph model for biological systems: the yeast cell-cycle network
title_full Boolean factor graph model for biological systems: the yeast cell-cycle network
title_fullStr Boolean factor graph model for biological systems: the yeast cell-cycle network
title_full_unstemmed Boolean factor graph model for biological systems: the yeast cell-cycle network
title_sort boolean factor graph model for biological systems: the yeast cell-cycle network
publisher BMC
series BMC Bioinformatics
issn 1471-2105
publishDate 2021-09-01
description Abstract Background The desire to understand genomic functions and the behavior of complex gene regulatory networks has recently been a major research focus in systems biology. As a result, a plethora of computational and modeling tools have been proposed to identify and infer interactions among biological entities. Here, we consider the general question of the effect of perturbation on the global dynamical network behavior as well as error propagation in biological networks to incite research pertaining to intervention strategies. Results This paper introduces a computational framework that combines the formulation of Boolean networks and factor graphs to explore the global dynamical features of biological systems. A message-passing algorithm is proposed for this formalism to evolve network states as messages in the graph. In addition, the mathematical formulation allows us to describe the dynamics and behavior of error propagation in gene regulatory networks by conducting a density evolution (DE) analysis. The model is applied to assess the network state progression and the impact of gene deletion in the budding yeast cell cycle. Simulation results show that our model predictions match published experimental data. Also, our findings reveal that the sample yeast cell-cycle network is not only robust but also consistent with real high-throughput expression data. Finally, our DE analysis serves as a tool to find the optimal values of network parameters for resilience against perturbations, especially in the inference of genetic graphs. Conclusion Our computational framework provides a useful graphical model and analytical tools to study biological networks. It can be a powerful tool to predict the consequences of gene deletions before conducting wet bench experiments because it proves to be a quick route to predicting biologically relevant dynamic properties without tunable kinetic parameters.
topic Boolean networks
Factor graph
Network perturbation
Systems biology
url https://doi.org/10.1186/s12859-021-04361-8
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