Identificador persistente para citar o vincular este elemento: http://hdl.handle.net/10553/130790
Título: Modeling the implications of nitric oxide dynamics on information transmission: An automata networks approach
Autores/as: Fernández-López, Pablo 
García Baez, Patricio 
Cabrera-Leon, Ylermi 
Prochazka, Ales
Suárez Araujo, Carmen Paz 
Clasificación UNESCO: 120304 Inteligencia artificial
Palabras clave: Diffusion
Nitric Oxide Dynamics
Volume Transmission
Automata Network
Mathematical Modeling
Fecha de publicación: 2023
Proyectos: Investigación en Computación Neuronal por grupo de investigación CIPERBIG
Publicación seriada: Aims Mathematics 
Resumen: Nitric oxide (NO) is already recognized as an important signaling molecule in the brain. It diffuses easily and the nervous cell's membrane is permeable to NO. The information transmission is three-dimensional, which is different from synaptic transmission. NO operates in two different ways: Close and specific at the synapses of neurons, and as a volumetric transmitter sending signals to various targets, regardless of their anatomy, connectivity or function, when multiple nearby sources act simultaneously. These modes of operation seem to be the basis by which NO is involved in many central mechanisms of the brain, such as learning, memory formation, brain development and synaptogenesis. This work focuses on the effect of NO dynamics on the environment through which it diffuses, using automata networks. We study their implications in the formation of complex functional structures in the volume transmission (VT), which are necessary for the synchronous functional recruitment of neuronal populations. We qualitatively and quantitatively analyze the proposed model regarding these characteristics through the concepts of entropy and mutual information. The proposed deterministic model allows the incorporation of fuzzy dynamics. With that, a generalized model based on fuzzy automata networks can be provided. This allows the generation and diffusion processes of NO to be arbitrarily produced and maintained over time. This model can accommodate arbitrary processes in decision-making mechanisms and can be part of a complete formal VT framework in the brain and artificial neural networks.
URI: http://hdl.handle.net/10553/130790
ISSN: 2473-6988
DOI: 10.3934/math.20231541
Fuente: Aims Mathematics [2473-6988], v. 8 (12), p. 30142-30181, (2023)
Colección:Artículos
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