AbstractIn this paper, we compare mean-field and neural-mass models of electrophysiological responses using Bayesian model comparison. In previous work, we presented a mean-field model of neuronal dynamics as observed with magnetoencephalography and electroencephalography. Unlike neural-mass models, which consider only the mean activity of neuronal populations, mean-field models track the distribution (e.g., mean and dispersion) of population activity. This can be important if the mean affects the dispersion or vice versa. Here, we introduce a dynamical causal model based on mean-field (i.e., population density) models of neuronal activity, and use it to assess the evidence for a coupling between the mean and dispersion of hidden neuronal s...
Neural mass and neural field models have been actively used since the 1970s to model the coarse grai...
Neural mass models have been used for many years to study the macroscopic dynamics of neural populat...
We present a mean-field formalism able to predict the collective dynamics of large networks of condu...
In this paper, we compare mean-field and neural-mass models of electrophysiological responses using ...
AbstractIn this paper, we compare mean-field and neural-mass models of electrophysiological response...
Dynamic causal modeling (DCM) provides a framework for the analysis of effective connectivity among ...
We present a review of dynamic causal modeling (DCM) for magneto- and electroencephalography (M/EEG)...
Biophysical modelling of brain activity has a long and illustrious history and has recently profited...
Abstract: We present a review of dynamic causal modeling (DCM) for magneto-and electroencephalograph...
International audienceNeuronally plausible, generative or forward models are essential for understan...
© Copyright © 2021 Deschle, Ignacio Gossn, Tewarie, Schelter and Daffertshofer.Modeling the dynamics...
Mean-field descriptions of neuronal networks yield stabilityconstraints that guide efficient model d...
AbstractWe present a neural mass model of steady-state membrane potentials measured with local field...
Low-dimensional neural mass models are often invoked to model the coarse-grained activity of large p...
Neural rhythms or oscillations are ubiquitous in neuroimaging data. These spectral responses have be...
Neural mass and neural field models have been actively used since the 1970s to model the coarse grai...
Neural mass models have been used for many years to study the macroscopic dynamics of neural populat...
We present a mean-field formalism able to predict the collective dynamics of large networks of condu...
In this paper, we compare mean-field and neural-mass models of electrophysiological responses using ...
AbstractIn this paper, we compare mean-field and neural-mass models of electrophysiological response...
Dynamic causal modeling (DCM) provides a framework for the analysis of effective connectivity among ...
We present a review of dynamic causal modeling (DCM) for magneto- and electroencephalography (M/EEG)...
Biophysical modelling of brain activity has a long and illustrious history and has recently profited...
Abstract: We present a review of dynamic causal modeling (DCM) for magneto-and electroencephalograph...
International audienceNeuronally plausible, generative or forward models are essential for understan...
© Copyright © 2021 Deschle, Ignacio Gossn, Tewarie, Schelter and Daffertshofer.Modeling the dynamics...
Mean-field descriptions of neuronal networks yield stabilityconstraints that guide efficient model d...
AbstractWe present a neural mass model of steady-state membrane potentials measured with local field...
Low-dimensional neural mass models are often invoked to model the coarse-grained activity of large p...
Neural rhythms or oscillations are ubiquitous in neuroimaging data. These spectral responses have be...
Neural mass and neural field models have been actively used since the 1970s to model the coarse grai...
Neural mass models have been used for many years to study the macroscopic dynamics of neural populat...
We present a mean-field formalism able to predict the collective dynamics of large networks of condu...