2019
DOI: 10.1109/tcbb.2019.2914383
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Algorithms for the Sequential Reprogramming of Boolean Networks

Abstract: Cellular reprogramming, a technique that opens huge opportunities in modern and regenerative medicine, heavily relies on identifying key genes to perturb. Most of the existing computational methods for controlling which attractor (steady state) the cell will reach focus on finding mutations to apply to the initial state. However, it has been shown, and is proved in this article, that waiting between perturbations so that the update dynamics of the system prepares the ground, allows for new reprogramming strate… Show more

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Cited by 17 publications
(19 citation statements)
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References 25 publications
(29 reference statements)
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“…We have developped Petri net-represented structures that allow to identify completely the strong basins of attraction for all attractors present in a finite safe Petri net. Future work will investigate further the different types of boundaries encountered here, and aim at refining and evaluating robustness of attractors and reprogramming strategies [17,16] in the context of concurrency. Finally, in regard to benchmarks in prior work relying on Petri net unfoldings [2,4], the time and space consumption of the proposed algorithms allows to envisage their application to networks with two-digit numbers of nodes.…”
Section: Resultsmentioning
confidence: 99%
“…We have developped Petri net-represented structures that allow to identify completely the strong basins of attraction for all attractors present in a finite safe Petri net. Future work will investigate further the different types of boundaries encountered here, and aim at refining and evaluating robustness of attractors and reprogramming strategies [17,16] in the context of concurrency. Finally, in regard to benchmarks in prior work relying on Petri net unfoldings [2,4], the time and space consumption of the proposed algorithms allows to envisage their application to networks with two-digit numbers of nodes.…”
Section: Resultsmentioning
confidence: 99%
“…To cope with this problem, we employ the 'divide and conquer' strategy to explore both the structural and dynamical properties of a BN. As shown in Table 1, we have developed efficient methods to solve the minimal one-step source-target control with instantaneous, temporary and permanent perturbations [8,9,11], the minimal sequential source-target control with instantaneous perturbations [4,5], as well as the target control with instantaneous perturbations [1]. Among these methods, sequential source-target control identifies a sequence of intermediate states and the associated perturbations.…”
Section: Resultsmentioning
confidence: 99%
“…We have developed efficient methods to tackle the minimal OI, OT and OP control [21,22,26], as well as ASI control [11,12]. Considering the advantages of sequential control and temporary and permanent perturbations, in this paper, we shall develop methods to solve the AST and ASP control problems based on the methods for the minimal OT and OP control.…”
Section: Dynamics Of Boolean Networkmentioning
confidence: 99%
“…AST and ASP integrate promising factors: attractorbased sequential control and temporary/permanent control. Attractor-based sequential control is more practical than the general sequential control [12], where any state can play the role of intermediate states. Moreover, temporary and permanent controls have proved their potential in reducing the number of perturbations [26].…”
Section: Introductionmentioning
confidence: 99%