We present a review of dynamic causal modeling (DCM) for magneto- and electroencephalography (M/EEG) data. DCM is based on a spatiotemporal model, where the temporal component is formulated in terms of neurobiologically plausible dynamics. Following an intuitive description of the model, we discuss six recent studies, which use DCM to analyze M/EEG and local field potentials. These studies illustrate how DCM can be used to analyze evoked responses (average response in time), induced responses (average response in time-frequency), and steady-state responses (average response in frequency). Bayesian model comparison plays a critical role in these analyses, by allowing one to compare equally plausible models in terms of their model evidence. T...
AbstractDynamic causal modelling (DCM) has been applied recently to event-related responses (ERPs) m...
International audienceDynamical causal modeling (DCM) of evoked responses is a new approach to makin...
Dynamic Causal Modeling (DCM) is a Bayesian framework for inferring on hidden (latent) neuronal stat...
Abstract: We present a review of dynamic causal modeling (DCM) for magneto-and electroencephalograph...
We present a review of dynamic causal modeling (DCM) for magneto- and electroencephalography (M/EEG)...
Developments in M/EEG analysis allows for models that are sophisticated enough to capture the full r...
Developments in M/EEG analysis allows for models that are sophisticated enough to capture the full r...
International audienceThe goal of dynamic causal modelling (DCM) of neuroimaging data is to study ex...
We describe the use of spatial and temporal constraints in dynamic causal modelling (DCM) of magneto...
Abstract—Recent advances in neurophysiology have led to the development of complex dynamical models ...
In this paper, we compare mean-field and neural-mass models of electrophysiological responses using ...
International audienceDynamic causal modeling (DCM) is a methodological approach to study effective ...
AbstractIn this paper, we compare mean-field and neural-mass models of electrophysiological response...
Abstract — The use of complex dynamical models have been proposed for describing the connections and...
Complex processes resulting from interaction of multiple elements can rarely be understood by analyt...
AbstractDynamic causal modelling (DCM) has been applied recently to event-related responses (ERPs) m...
International audienceDynamical causal modeling (DCM) of evoked responses is a new approach to makin...
Dynamic Causal Modeling (DCM) is a Bayesian framework for inferring on hidden (latent) neuronal stat...
Abstract: We present a review of dynamic causal modeling (DCM) for magneto-and electroencephalograph...
We present a review of dynamic causal modeling (DCM) for magneto- and electroencephalography (M/EEG)...
Developments in M/EEG analysis allows for models that are sophisticated enough to capture the full r...
Developments in M/EEG analysis allows for models that are sophisticated enough to capture the full r...
International audienceThe goal of dynamic causal modelling (DCM) of neuroimaging data is to study ex...
We describe the use of spatial and temporal constraints in dynamic causal modelling (DCM) of magneto...
Abstract—Recent advances in neurophysiology have led to the development of complex dynamical models ...
In this paper, we compare mean-field and neural-mass models of electrophysiological responses using ...
International audienceDynamic causal modeling (DCM) is a methodological approach to study effective ...
AbstractIn this paper, we compare mean-field and neural-mass models of electrophysiological response...
Abstract — The use of complex dynamical models have been proposed for describing the connections and...
Complex processes resulting from interaction of multiple elements can rarely be understood by analyt...
AbstractDynamic causal modelling (DCM) has been applied recently to event-related responses (ERPs) m...
International audienceDynamical causal modeling (DCM) of evoked responses is a new approach to makin...
Dynamic Causal Modeling (DCM) is a Bayesian framework for inferring on hidden (latent) neuronal stat...