Robust Control of Partially Specified Boolean Networks
Lubo\v{s} Brim, Samuel Pastva, David \v{S}afr\'anek, Eva, \v{S}mij\'akov\'a

TL;DR
This paper develops symbolic methods to control partially specified Boolean networks, enabling stabilization of biological regulatory systems despite incomplete models, with an emphasis on robustness and minimal perturbations.
Contribution
It introduces efficient symbolic techniques for controlling partially specified Boolean networks, addressing state explosion and robustness in biological system stabilization.
Findings
Symbolic methods effectively handle large state spaces.
Robustness varies with control type, with one-step controls being less robust.
Proposed approach scales well to complex models.
Abstract
Regulatory networks (RNs) are a well-accepted modelling formalism in computational systems biology. The control of RNs is currently receiving a lot of attention because it provides a computational basis for cell reprogramming -- an attractive technology developed in regenerative medicine. By solving the control problem, we learn which parts of a biological system should be perturbed to stabilise the system in the desired phenotype. We allow the specification of the Boolean model representing a given RN to be incomplete. To that end, we utilise the formalism of partially specified Boolean networks which covers every possible behaviour of unspecified parts of the system. Such an approach causes a significant state explosion. This problem is addressed by using symbolic methods to represent both the unspecified model parts and all possible perturbations of the system. Additionally, to…
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Taxonomy
TopicsGene Regulatory Network Analysis · Microbial Metabolic Engineering and Bioproduction · Formal Methods in Verification
