Author:
Sampaio Filho Cesar I. N.,de Arcangelis Lucilla,Herrmann Hans J.,Plenz Dietmar,Kells Patrick,Ribeiro Tiago Lins,Andrade José S.
Abstract
AbstractWe analyze time-averaged experimental data from in vitro activities of neuronal networks. Through a Pairwise Maximum-Entropy method, we identify through an inverse binary Ising-like model the local fields and interaction couplings which best reproduce the average activities of each neuron as well as the statistical correlations between the activities of each pair of neurons in the system. The specific information about the type of neurons is mainly stored in the local fields, while a symmetric distribution of interaction constants seems generic. Our findings demonstrate that, despite not being directly incorporated into the inference approach, the experimentally observed correlations among groups of three neurons are accurately captured by the derived Ising-like model. Within the context of the thermodynamic analogy inherent to the Ising-like models developed in this study, our findings additionally indicate that these models demonstrate characteristics of second-order phase transitions between ferromagnetic and paramagnetic states at temperatures above, but close to, unity. Considering that the operating temperature utilized in the Maximum-Entropy method is $$T_{o}=1$$
T
o
=
1
, this observation further expands the thermodynamic conceptual parallelism postulated in this work for the manifestation of criticality in neuronal network behavior.
Funder
Conselho Nacional de Desenvolvimento Científico e Tecnológico, CNPq
Coordenação de Aperfeiçoamento de Pessoal de Nível Superior , CAPES
Fundação Cearense de Apoio ao Desenvolvimento Científico e Tecnológico, FUNCAP, BRAZIL
MIUR PRIN 2017WZFTZP
#NEXTGENERATIONEU
Ministry of University and Research
National Recovery and Resilience Plan
Division of the Intramural Research Program (DIRP), NIMH
Publisher
Springer Science and Business Media LLC
Cited by
2 articles.
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