Journal Article10.48550/arXiv.2305.01327
Attractor identification in asynchronous Boolean dynamics with network reduction
Elisa Tonello,Loic Paulev'e +1 more
TL;DR: In this article , an approach to the search for asynchronous cyclic attractors of Boolean networks that exploits, in a novel way, the established technique of elimination of components is described. But this approach is limited to Boolean networks.
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Abstract: Identification of attractors, that is, stable states and sustained oscillations, is an important step in the analysis of Boolean models and exploration of potential variants. We describe an approach to the search for asynchronous cyclic attractors of Boolean networks that exploits, in a novel way, the established technique of elimination of components. Computation of attractors of simplified networks allows the identification of a limited number of candidate attractor states, which are then screened with techniques of reachability analysis combined with trap space computation. An implementation that brings together recently developed Boolean network analysis tools, tested on biological models and random benchmark networks, shows the potential to significantly reduce running times.
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Citations
Phenotype control and elimination of variables in Boolean networks
Elisa Tonello,Loïc Paulevé +1 more
- 04 Jun 2024
TL;DR: Elimination of variables in Boolean networks affects the asymptotic dynamics and phenotype control. It can preserve minimal trap spaces under certain structural conditions.
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