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Griffin: A Tool for Symbolic Inference of Synchronous Boolean Molecular Networks

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dc.contributor.author Azpeitia, Eugenio
dc.contributor.author Carrillo, Miguel
dc.contributor.author Rosenblueth Laguette, David Arturo
dc.coverage.spatial US
dc.creator Muñoz, Stalin
dc.date.accessioned 2021-11-13T00:01:53Z
dc.date.available 2021-11-13T00:01:53Z
dc.date.issued 2018-03-06
dc.identifier.citation Muñoz, S., Carrillo, M., Azpeitia, E., & Rosenblueth, D. A. (2018). Griffin: A Tool for Symbolic Inference of Synchronous Boolean Molecular Networks. Frontiers in Genetics, 9. doi:10.3389/fgene.2018.00039
dc.identifier.uri http://www.ru.iimas.unam.mx/handle/IIMAS_UNAM/ART5
dc.description.abstract Boolean networks are important models of biochemical systems, located at the high end of the abstraction spectrum. A number of Boolean gene networks have been inferred following essentially the same method. Such a method first considers experimental data for a typically underdetermined "regulation" graph. Next, Boolean networks are inferred by using biological constraints to narrow the search space, such as a desired set of (fixed-point or cyclic) attractors. We describe Griffin, a computer tool enhancing this method. Griffin incorporates a number of well-established algorithms, such as Dubrova and Teslenko's algorithm for finding attractors in synchronous Boolean networks. In addition, a formal definition of regulation allows Griffin to employ "symbolic" techniques, able to represent both large sets of network states and Boolean constraints. We observe that when the set of attractors is required to be an exact set, prohibiting additional attractors, a naive Boolean coding of this constraint may be unfeasible. Such cases may be intractable even with symbolic methods, as the number of Boolean constraints may be astronomically large. To overcome this problem, we employ an Artificial Intelligence technique known as "clause learning" considerably increasing Griffin's scalability. Without clause learning only toy examples prohibiting additional attractors are solvable: only one out of seven queries reported here is answered. With clause learning, by contrast, all seven queries are answered. We illustrate Griffin with three case studies drawn from the Arabidopsis thaliana literature. Griffin is available at: http://turing.iimas.unam.mx/griffin.
dc.format application/pdf
dc.language.iso eng
dc.publisher Frontiers Media S.A.
dc.rights openAccess
dc.rights.uri http://creativecommons.org/licenses/by/4.0
dc.source Frontiers in Genetics (1664-8021), 9:39, (2018).
dc.subject molecular networks
dc.subject Boolean networks
dc.subject model inference
dc.subject Boolean satisfiability problem
dc.subject clause learning
dc.subject biological constraints
dc.subject attractors
dc.subject.classification Biología y Química
dc.subject.classification Ingeniería y Tecnología
dc.title Griffin: A Tool for Symbolic Inference of Synchronous Boolean Molecular Networks
dc.type article
dc.type publishedVersion
dcterms.creator ROSENBLUETH LAGUETTE, DAVID ARTURO::cvu::11043
dcterms.creator Azpeitia, Eugenio::si::SinIdentificador
dcterms.creator Carrillo, Miguel::orcid::0000-0003-2105-3075
dcterms.creator Muñoz Gutiérrez, Stalin::cvu::37084
dc.audience researchers
dc.audience students
dc.audience teachers
dc.identifier.doi http://dx.doi.org/10.3389/fgene.2018.00039
dc.relation.ispartofjournal https://www.frontiersin.org/journals/genetics


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