Matches in SemOpenAlex for { <https://semopenalex.org/work/W4285387424> ?p ?o ?g. }
- W4285387424 endingPage "469" @default.
- W4285387424 startingPage "445" @default.
- W4285387424 abstract "Networks of spiking neurons with adaption have been shown to be able to reproduce a wide range of neural activities, including the emergent population bursting and spike synchrony that underpin brain disorders and normal function. Exact mean-field models derived from spiking neural networks are extremely valuable, as such models can be used to determine how individual neurons and the network they reside within interact to produce macroscopic network behaviours. In the paper, we derive and analyze a set of exact mean-field equations for the neural network with spike frequency adaptation. Specifically, our model is a network of Izhikevich neurons, where each neuron is modeled by a two dimensional system consisting of a quadratic integrate and fire equation plus an equation which implements spike frequency adaptation. Previous work deriving a mean-field model for this type of network, relied on the assumption of sufficiently slow dynamics of the adaptation variable. However, this approximation did not succeed in establishing an exact correspondence between the macroscopic description and the realistic neural network, especially when the adaptation time constant was not large. The challenge lies in how to achieve a closed set of mean-field equations with the inclusion of the mean-field dynamics of the adaptation variable. We address this problem by using a Lorentzian ansatz combined with the moment closure approach to arrive at a mean-field system in the thermodynamic limit. The resulting macroscopic description is capable of qualitatively and quantitatively describing the collective dynamics of the neural network, including transition between states where the individual neurons exhibit asynchronous tonic firing and synchronous bursting. We extend the approach to a network of two populations of neurons and discuss the accuracy and efficacy of our mean-field approximations by examining all assumptions that are imposed during the derivation. Numerical bifurcation analysis of our mean-field models reveals bifurcations not previously observed in the models, including a novel mechanism for emergence of bursting in the network. We anticipate our results will provide a tractable and reliable tool to investigate the underlying mechanism of brain function and dysfunction from the perspective of computational neuroscience." @default.
- W4285387424 created "2022-07-14" @default.
- W4285387424 creator A5011487190 @default.
- W4285387424 creator A5058807780 @default.
- W4285387424 date "2022-07-14" @default.
- W4285387424 modified "2023-09-25" @default.
- W4285387424 title "Exact mean-field models for spiking neural networks with adaptation" @default.
- W4285387424 cites W1576838367 @default.
- W4285387424 cites W1583518289 @default.
- W4285387424 cites W1966048839 @default.
- W4285387424 cites W1966907489 @default.
- W4285387424 cites W1968829116 @default.
- W4285387424 cites W1975676204 @default.
- W4285387424 cites W1976888917 @default.
- W4285387424 cites W1983069678 @default.
- W4285387424 cites W1983520016 @default.
- W4285387424 cites W1985983039 @default.
- W4285387424 cites W1991199637 @default.
- W4285387424 cites W2001155429 @default.
- W4285387424 cites W2016354087 @default.
- W4285387424 cites W2020173888 @default.
- W4285387424 cites W2024035787 @default.
- W4285387424 cites W2029301766 @default.
- W4285387424 cites W2055718420 @default.
- W4285387424 cites W2057175858 @default.
- W4285387424 cites W2071147887 @default.
- W4285387424 cites W2072413244 @default.
- W4285387424 cites W2079025781 @default.
- W4285387424 cites W2087231528 @default.
- W4285387424 cites W2089876099 @default.
- W4285387424 cites W2095764889 @default.
- W4285387424 cites W2102014786 @default.
- W4285387424 cites W2116277877 @default.
- W4285387424 cites W2119443761 @default.
- W4285387424 cites W2128949090 @default.
- W4285387424 cites W2131019573 @default.
- W4285387424 cites W2142316811 @default.
- W4285387424 cites W2142925815 @default.
- W4285387424 cites W2151507971 @default.
- W4285387424 cites W2152502378 @default.
- W4285387424 cites W2153487752 @default.
- W4285387424 cites W2157239334 @default.
- W4285387424 cites W2158356610 @default.
- W4285387424 cites W2164653071 @default.
- W4285387424 cites W2184272066 @default.
- W4285387424 cites W2191147049 @default.
- W4285387424 cites W2220951078 @default.
- W4285387424 cites W2399416516 @default.
- W4285387424 cites W2520514017 @default.
- W4285387424 cites W2557964287 @default.
- W4285387424 cites W2765744508 @default.
- W4285387424 cites W2889715113 @default.
- W4285387424 cites W2903213499 @default.
- W4285387424 cites W2904976889 @default.
- W4285387424 cites W2911227059 @default.
- W4285387424 cites W2975518817 @default.
- W4285387424 cites W2991328567 @default.
- W4285387424 cites W2996067309 @default.
- W4285387424 cites W3000676033 @default.
- W4285387424 cites W3019449754 @default.
- W4285387424 cites W3030338802 @default.
- W4285387424 cites W3045487583 @default.
- W4285387424 cites W3048814456 @default.
- W4285387424 cites W3081870822 @default.
- W4285387424 cites W3101571838 @default.
- W4285387424 cites W3102551889 @default.
- W4285387424 cites W3103282891 @default.
- W4285387424 cites W3105553417 @default.
- W4285387424 cites W3156766613 @default.
- W4285387424 cites W3161813323 @default.
- W4285387424 cites W316919195 @default.
- W4285387424 cites W3179124057 @default.
- W4285387424 cites W3185986431 @default.
- W4285387424 cites W3198714172 @default.
- W4285387424 cites W3199812927 @default.
- W4285387424 cites W3206823622 @default.
- W4285387424 cites W3207813535 @default.
- W4285387424 cites W3213775419 @default.
- W4285387424 cites W3214213572 @default.
- W4285387424 cites W3216187916 @default.
- W4285387424 cites W4231081240 @default.
- W4285387424 cites W4235527302 @default.
- W4285387424 cites W4242092184 @default.
- W4285387424 cites W644076287 @default.
- W4285387424 doi "https://doi.org/10.1007/s10827-022-00825-9" @default.
- W4285387424 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/35834100" @default.
- W4285387424 hasPublicationYear "2022" @default.
- W4285387424 type Work @default.
- W4285387424 citedByCount "5" @default.
- W4285387424 countsByYear W42853874242023 @default.
- W4285387424 crossrefType "journal-article" @default.
- W4285387424 hasAuthorship W4285387424A5011487190 @default.
- W4285387424 hasAuthorship W4285387424A5058807780 @default.
- W4285387424 hasBestOaLocation W42853874242 @default.
- W4285387424 hasConcept C115903868 @default.
- W4285387424 hasConcept C11731999 @default.
- W4285387424 hasConcept C121332964 @default.
- W4285387424 hasConcept C121864883 @default.