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Published in: Natural Computing 2/2020

09-05-2020

Attractor landscapes in Boolean networks with firing memory: a theoretical study applied to genetic networks

Authors: Eric Goles, Fabiola Lobos, Gonzalo A. Ruz, Sylvain Sené

Published in: Natural Computing | Issue 2/2020

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Abstract

In this paper we study the dynamical behavior of Boolean networks with firing memory, namely Boolean networks whose vertices are updated synchronously depending on their proper Boolean local transition functions so that each vertex remains at its firing state a finite number of steps. We prove in particular that these networks have the same computational power than the classical ones, i.e. any Boolean network with firing memory composed of m vertices can be simulated by a Boolean network by adding vertices. We also prove general results on specific classes of networks. For instance, we show that the existence of at least one delay greater than 1 in disjunctive networks makes such networks have only fixed points as attractors. Moreover, for arbitrary networks composed of two vertices, we characterize the delay phase space, i.e. the delay values such that networks admits limit cycles or fixed points. Finally, we analyze two classical biological models by introducing delays: the model of the immune control of the \(\lambda \)-phage and that of the genetic control of the floral morphogenesis of the plant Arabidopsis thaliana.

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Literature
go back to reference Ahmad J, Roux OF, Bernot G, Comet J-P, Richard A (2008) Analysing formal models of genetic regulatory networks with delays. Int J Bioinf Res Appl 4:240–262 Ahmad J, Roux OF, Bernot G, Comet J-P, Richard A (2008) Analysing formal models of genetic regulatory networks with delays. Int J Bioinf Res Appl 4:240–262
go back to reference Albert R, Othmer HG (2003) The topology of the regulatory interactions predicts the expression pattern of the segment polarity genes in Drosophila melanogaster. J Theor Biol 223:1–18MathSciNetMATH Albert R, Othmer HG (2003) The topology of the regulatory interactions predicts the expression pattern of the segment polarity genes in Drosophila melanogaster. J Theor Biol 223:1–18MathSciNetMATH
go back to reference Aracena J, Goles E, Moreira A, Salinas L (2009) On the robustness of update schedules in Boolean networks. Biosystems 97:1–8 Aracena J, Goles E, Moreira A, Salinas L (2009) On the robustness of update schedules in Boolean networks. Biosystems 97:1–8
go back to reference Aracena J, Fanchon É, Montalva M, Noual M (2011) Combinatorics on update digraphs in Boolean networks. Discrete Appl Math 159:401–409MathSciNetMATH Aracena J, Fanchon É, Montalva M, Noual M (2011) Combinatorics on update digraphs in Boolean networks. Discrete Appl Math 159:401–409MathSciNetMATH
go back to reference Bernot G, Comet J-P, Richard A, Guespin J (2004) Application of formal methods to biological regulatory networks: extending Thomas’ asynchronous logical approach with temporal logic. J Theor Biol 229:339–347MathSciNet Bernot G, Comet J-P, Richard A, Guespin J (2004) Application of formal methods to biological regulatory networks: extending Thomas’ asynchronous logical approach with temporal logic. J Theor Biol 229:339–347MathSciNet
go back to reference Brualdi RA, Ryser HJ (1991) Combinatorial matrix theory. Cambridge University Press, CambridgeMATH Brualdi RA, Ryser HJ (1991) Combinatorial matrix theory. Cambridge University Press, CambridgeMATH
go back to reference Choi M, Shi J, Jung SH, Chen X, Cho K-H (2012) Attractor landscape analysis reveals feedback loops in the p53 network that control the cellular response to DNA damage. Sci Signal 5:ra83 Choi M, Shi J, Jung SH, Chen X, Cho K-H (2012) Attractor landscape analysis reveals feedback loops in the p53 network that control the cellular response to DNA damage. Sci Signal 5:ra83
go back to reference Coen ES, Meyerowitz EM (1991) The war of the whorls: genetic interactions controlling flower development. Nature 353:31–37 Coen ES, Meyerowitz EM (1991) The war of the whorls: genetic interactions controlling flower development. Nature 353:31–37
go back to reference Davidich MI, Bornholdt S (2008) Boolean network model predicts cell cycle sequence of fission yeast. PLoS ONE 3:e1672 Davidich MI, Bornholdt S (2008) Boolean network model predicts cell cycle sequence of fission yeast. PLoS ONE 3:e1672
go back to reference Demongeot J, Elena A, Sené S (2008) Robustness in regulatory networks: a multi-disciplinary approach. Acta Biotheor 56:27–49 Demongeot J, Elena A, Sené S (2008) Robustness in regulatory networks: a multi-disciplinary approach. Acta Biotheor 56:27–49
go back to reference Demongeot J, Goles E, Morvan M, Noual M, Sené S (2010) Attraction basins as gauges of robustness against boundary conditions in biological complex systems. PLoS ONE 5:e11793 Demongeot J, Goles E, Morvan M, Noual M, Sené S (2010) Attraction basins as gauges of robustness against boundary conditions in biological complex systems. PLoS ONE 5:e11793
go back to reference Dennunzio A, Formenti E, Manzoni L, Mauri G (2013) \(m\)-Asynchronous cellular automata: from fairness to quasi-fairness. Nat Comput 12:561–572MathSciNetMATH Dennunzio A, Formenti E, Manzoni L, Mauri G (2013) \(m\)-Asynchronous cellular automata: from fairness to quasi-fairness. Nat Comput 12:561–572MathSciNetMATH
go back to reference Fatès N, Morvan M (2005) An experimental study of robustness to asynchronism for elementary cellular automata. Complex Syst 16:1–27MathSciNetMATH Fatès N, Morvan M (2005) An experimental study of robustness to asynchronism for elementary cellular automata. Complex Syst 16:1–27MathSciNetMATH
go back to reference Fauré A, Naldi A, Chaouiya C, Thieffry D (2006) Dynamical analysis of a generic Boolean model for the control of the mammalian cell cycle. Bioinformatics 22:e124–e131 Fauré A, Naldi A, Chaouiya C, Thieffry D (2006) Dynamical analysis of a generic Boolean model for the control of the mammalian cell cycle. Bioinformatics 22:e124–e131
go back to reference Fromentin J, Éveillard D, Roux O (2010) Hybrid modeling of biological networks: mixing temporal and qualitative biological properties. BMC Syst Biol 4:79 Fromentin J, Éveillard D, Roux O (2010) Hybrid modeling of biological networks: mixing temporal and qualitative biological properties. BMC Syst Biol 4:79
go back to reference Goles E (1980) Comportement oscillatoire d’une famille d’automates cellulaires non uniformes, Ph.D. thesis. Université Joseph Fourier et Institut national polytechnique de Grenoble Goles E (1980) Comportement oscillatoire d’une famille d’automates cellulaires non uniformes, Ph.D. thesis. Université Joseph Fourier et Institut national polytechnique de Grenoble
go back to reference Goles E, Noual M (2010) Block-sequential update schedules and Boolean automata circuits. In: Proceedings of AUTOMATA’10, DMTCS, pp 41–50 Goles E, Noual M (2010) Block-sequential update schedules and Boolean automata circuits. In: Proceedings of AUTOMATA’10, DMTCS, pp 41–50
go back to reference Goles E, Salinas L (2008) Comparison between parallel and serial dynamics of Boolean networks. Theor Comput Sci 396:247–253MathSciNetMATH Goles E, Salinas L (2008) Comparison between parallel and serial dynamics of Boolean networks. Theor Comput Sci 396:247–253MathSciNetMATH
go back to reference Goles E, Montalva M, Ruz GA (2013) Deconstruction and dynamical robustness of regulatory networks: application to the yeast cell cycle networks. Bull Math Biol 2:939–966MathSciNetMATH Goles E, Montalva M, Ruz GA (2013) Deconstruction and dynamical robustness of regulatory networks: application to the yeast cell cycle networks. Bull Math Biol 2:939–966MathSciNetMATH
go back to reference Graudenzi A, Serra R (2010) A new model of genetic networks: the gene protein Boolean network. In: Proceedings of WIVACE’08, pp 283–292 Graudenzi A, Serra R (2010) A new model of genetic networks: the gene protein Boolean network. In: Proceedings of WIVACE’08, pp 283–292
go back to reference Graudenzi A, Serra R, Villani M, Colacci A, Kauffman SA (2011) Robustness analysis of a Boolean model of gene regulatory network with memory. J Comput Biol 18:559–577MathSciNet Graudenzi A, Serra R, Villani M, Colacci A, Kauffman SA (2011) Robustness analysis of a Boolean model of gene regulatory network with memory. J Comput Biol 18:559–577MathSciNet
go back to reference Graudenzi A, Serra R, Villani M, Damiani C, Colacci A, Kauffman SA (2011) Dynamical properties of a Boolean model of gene regulatory network with memory. J Comput Biol 18:1291–1303MathSciNet Graudenzi A, Serra R, Villani M, Damiani C, Colacci A, Kauffman SA (2011) Dynamical properties of a Boolean model of gene regulatory network with memory. J Comput Biol 18:1291–1303MathSciNet
go back to reference Kauffman SA (1969) Metabolic stability and epigenesis in randomly constructed genetic nets. J Theor Biol 22:437–467MathSciNet Kauffman SA (1969) Metabolic stability and epigenesis in randomly constructed genetic nets. J Theor Biol 22:437–467MathSciNet
go back to reference Leifeld T, Zhang Z, Zhang P (2018) Identification of Boolean network models from time series data incorporating prior knowledge. Front Physiol 9:695 Leifeld T, Zhang Z, Zhang P (2018) Identification of Boolean network models from time series data incorporating prior knowledge. Front Physiol 9:695
go back to reference Li F, Long L, Lu Y, Ouyang Q, Tang C (2004) The yeast cell-cycle network is robustly designed. Proc Natl Acad Sci USA 101:4781–4786 Li F, Long L, Lu Y, Ouyang Q, Tang C (2004) The yeast cell-cycle network is robustly designed. Proc Natl Acad Sci USA 101:4781–4786
go back to reference Mangan S, Alon U (2003) Structure and function of the feed-forward loop network motif. Proc Natl Acad Sci USA 100:11980–11985 Mangan S, Alon U (2003) Structure and function of the feed-forward loop network motif. Proc Natl Acad Sci USA 100:11980–11985
go back to reference McCulloch WS, Pitts W (1943) A logical calculus of the ideas immanent in nervous activity. J Math Biophys 5:115–133MathSciNetMATH McCulloch WS, Pitts W (1943) A logical calculus of the ideas immanent in nervous activity. J Math Biophys 5:115–133MathSciNetMATH
go back to reference Mendoza L, Alvarez-Buylla ER (1998) Dynamics of the genetic regulatory network for Arabidopsis thaliana flower morphogenesis. J Theor Biol 193:307–319 Mendoza L, Alvarez-Buylla ER (1998) Dynamics of the genetic regulatory network for Arabidopsis thaliana flower morphogenesis. J Theor Biol 193:307–319
go back to reference Méndez A, Mendoza L (2016) A network model to describe the terminal differentiation of B cells. PLoS Comput Biol 12:e1004696 Méndez A, Mendoza L (2016) A network model to describe the terminal differentiation of B cells. PLoS Comput Biol 12:e1004696
go back to reference Mendoza L, Thieffry D, Alvarez-Buylla ER (1999) Genetic control of flower morphogenesis in Arabidopsis thaliana: a logical analysis. Bioinformatics 15:593–606 Mendoza L, Thieffry D, Alvarez-Buylla ER (1999) Genetic control of flower morphogenesis in Arabidopsis thaliana: a logical analysis. Bioinformatics 15:593–606
go back to reference Meyerowitz EM (1994) The genetics of flower development. Sci Am 271:56–65 Meyerowitz EM (1994) The genetics of flower development. Sci Am 271:56–65
go back to reference Milo R, Shen-Orr S, Itzkovitz S, Kashtan N, Chklovskii S, Alon U (2002) Network motifs: simple building blocks of complex networks. Science 298:824–827 Milo R, Shen-Orr S, Itzkovitz S, Kashtan N, Chklovskii S, Alon U (2002) Network motifs: simple building blocks of complex networks. Science 298:824–827
go back to reference Noual M, Sené S (2018) Synchronism vs asynchronism in monotonic Boolean automata networks. Nat Comput 17:393–402MathSciNet Noual M, Sené S (2018) Synchronism vs asynchronism in monotonic Boolean automata networks. Nat Comput 17:393–402MathSciNet
go back to reference Regnault D, Schabanel N, Thierry E (2009) Progresses in the analysis of stochastic 2D cellular automata: a study of asynchronous 2D minority. Theor Comput Sci 410:4844–4855MathSciNetMATH Regnault D, Schabanel N, Thierry E (2009) Progresses in the analysis of stochastic 2D cellular automata: a study of asynchronous 2D minority. Theor Comput Sci 410:4844–4855MathSciNetMATH
go back to reference Remy Mossé É, Chaouiya C, Thieffry D (2003) A description of dynamical graphs associated to elementary regulatory circuits. Bioinformatics 19:172–178MATH Remy Mossé É, Chaouiya C, Thieffry D (2003) A description of dynamical graphs associated to elementary regulatory circuits. Bioinformatics 19:172–178MATH
go back to reference Ren F, Cao J (2008) Asymptotic and robust stability of genetic regulatory networks with time-varying delays. Neurocomputing 71:834–842 Ren F, Cao J (2008) Asymptotic and robust stability of genetic regulatory networks with time-varying delays. Neurocomputing 71:834–842
go back to reference Ribeiro T, Magnin M, Inoue K, Sakama C (2014) Learning delayed influences of biological systems. Front Bioeng Biotechnol 2:81 Ribeiro T, Magnin M, Inoue K, Sakama C (2014) Learning delayed influences of biological systems. Front Bioeng Biotechnol 2:81
go back to reference Richard A, Comet J-P (2007) Necessary conditions for multistationarity in discrete dynamical systems. Discrete Appl Math 155:2403–2413MathSciNetMATH Richard A, Comet J-P (2007) Necessary conditions for multistationarity in discrete dynamical systems. Discrete Appl Math 155:2403–2413MathSciNetMATH
go back to reference Robert F (1986) Discrete iterations: a metric study, volume 6 of Springer Series in Computational Mathematics. Springer, Berlin Robert F (1986) Discrete iterations: a metric study, volume 6 of Springer Series in Computational Mathematics. Springer, Berlin
go back to reference Ruz GA, Goles E (2010) Learning gene regulatory networks with predefined attractors for sequential updating schemes using simulated annealing. In: Proceedings of ICMLA’10, pp 889–894 Ruz GA, Goles E (2010) Learning gene regulatory networks with predefined attractors for sequential updating schemes using simulated annealing. In: Proceedings of ICMLA’10, pp 889–894
go back to reference Ruz GA, Goles E, Montalva M, Fogel GB (2014) Dynamical and topological robustness of the mammalian cell cycle network: a reverse engineering approach. Biosystems 115:23–32 Ruz GA, Goles E, Montalva M, Fogel GB (2014) Dynamical and topological robustness of the mammalian cell cycle network: a reverse engineering approach. Biosystems 115:23–32
go back to reference Ruz GA, Timmermann T, Goles E (2015) Reconstruction of a GRN model of salt stress response in Arabidopsis using genetic algorithms. In: Proceedings of CIBCB’15, pp 1–8 Ruz GA, Timmermann T, Goles E (2015) Reconstruction of a GRN model of salt stress response in Arabidopsis using genetic algorithms. In: Proceedings of CIBCB’15, pp 1–8
go back to reference Thieffry D, Thomas R (1995) Dynamical behaviour of biological regulatory networks—II. Immunity control in bacteriophage Lambda. Bull Math Biol 57:277–297MATH Thieffry D, Thomas R (1995) Dynamical behaviour of biological regulatory networks—II. Immunity control in bacteriophage Lambda. Bull Math Biol 57:277–297MATH
go back to reference Thomas R (1973) Boolean formalization of genetic control circuits. J Theor Biol 42:563–585 Thomas R (1973) Boolean formalization of genetic control circuits. J Theor Biol 42:563–585
go back to reference Thomas R (1991) Regulatory networks seen as asynchronous automata: a logical description. J Theor Biol 153:1–23 Thomas R (1991) Regulatory networks seen as asynchronous automata: a logical description. J Theor Biol 153:1–23
go back to reference Thomas R, Richelle J (1988) Positive feedback loops and multstationarity. Discrete Appl Math 19:381–396MathSciNetMATH Thomas R, Richelle J (1988) Positive feedback loops and multstationarity. Discrete Appl Math 19:381–396MathSciNetMATH
go back to reference Thomas R, Thieffry D, Kaufman M (1995) Dynamical behaviour of biological regulatory networks—I. Biological role of feedback loops and practical use of the concept of the loop-characteristic state. Bull Math Biol 57:247–276MATH Thomas R, Thieffry D, Kaufman M (1995) Dynamical behaviour of biological regulatory networks—I. Biological role of feedback loops and practical use of the concept of the loop-characteristic state. Bull Math Biol 57:247–276MATH
go back to reference Veliz-Cuba A, Stigler B (2011) Boolean models can explain bistability in the lac Operon. J Comput Biol 18:783–794MathSciNet Veliz-Cuba A, Stigler B (2011) Boolean models can explain bistability in the lac Operon. J Comput Biol 18:783–794MathSciNet
go back to reference Yeger-Lotem E, Sattath S, Kashtan N, Itzkovitz S, Milo R, Pinter RY, Alon U, Margalit H (2004) Network motifs in integrated cellular networks of transcription–regulation and protein–protein interaction. Proc Natl Acad Sci USA 101:5934–5939 Yeger-Lotem E, Sattath S, Kashtan N, Itzkovitz S, Milo R, Pinter RY, Alon U, Margalit H (2004) Network motifs in integrated cellular networks of transcription–regulation and protein–protein interaction. Proc Natl Acad Sci USA 101:5934–5939
go back to reference Zhang R, Shah MV, Yang J, Nyland SB, Liu X, Yun JK, Albert R, Loughran TP (2008) Network model of survival signaling in large granular lymphocyte leukemia. Proc Natl Acad Sci USA 105:16308–16313 Zhang R, Shah MV, Yang J, Nyland SB, Liu X, Yun JK, Albert R, Loughran TP (2008) Network model of survival signaling in large granular lymphocyte leukemia. Proc Natl Acad Sci USA 105:16308–16313
go back to reference Zúñiga A, Donoso RA, Ruiz D, Ruz GA, González B (2017) Quorum-Sensing systems in the plant growth-promoting bacterium paraburkholderia phytofirmans PsJN exhibit cross-regulation and are involved in biofilm formation. Mol Plant Microbe Interact 30:557–565 Zúñiga A, Donoso RA, Ruiz D, Ruz GA, González B (2017) Quorum-Sensing systems in the plant growth-promoting bacterium paraburkholderia phytofirmans PsJN exhibit cross-regulation and are involved in biofilm formation. Mol Plant Microbe Interact 30:557–565
Metadata
Title
Attractor landscapes in Boolean networks with firing memory: a theoretical study applied to genetic networks
Authors
Eric Goles
Fabiola Lobos
Gonzalo A. Ruz
Sylvain Sené
Publication date
09-05-2020
Publisher
Springer Netherlands
Published in
Natural Computing / Issue 2/2020
Print ISSN: 1567-7818
Electronic ISSN: 1572-9796
DOI
https://doi.org/10.1007/s11047-020-09789-0

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