AbstractDynamic causal modelling (DCM) has been applied recently to event-related responses (ERPs) measured with EEG/MEG. DCM attempts to explain ERPs using a network of interacting cortical sources and waveform differences in terms of coupling changes among sources. The aim of this work was to establish the validity of DCM by assessing its reproducibility across subjects. We used an oddball paradigm to elicit mismatch responses. Sources of cortical activity were modelled as equivalent current dipoles, using a biophysical informed spatiotemporal forward model that included connections among neuronal subpopulations in each source. Bayesian inversion provided estimates of changes in coupling among sources and the marginal likelihood of each m...
This paper revisits the dynamic causal modelling of fMRI timeseries by replacing the usual (Taylor) ...
Developments in M/EEG analysis allows for models that are sophisticated enough to capture the full r...
This article describes the first application of a generic (empirical) Bayesian analysis of between-s...
We present a review of dynamic causal modeling (DCM) for magneto- and electroencephalography (M/EEG)...
International audienceNeuronally plausible, generative or forward models are essential for understan...
Abstract: We present a review of dynamic causal modeling (DCM) for magneto-and electroencephalograph...
Dynamic causal modeling (DCM) provides a framework for the analysis of effective connectivity among ...
AbstractNeuronal responses exhibit two stimulus or task-related components: evoked and induced. The ...
International audienceThe aim of this work was to investigate the mechanisms that shape evoked elect...
The goal of dynamic causal modelling (DCM) of neuroimaging data is to study experimentally induced c...
Neuronal responses exhibit two stimulus or task-related components: evoked and induced. The function...
International audienceThe goal of dynamic causal modelling (DCM) of neuroimaging data is to study ex...
Developments in M/EEG analysis allows for models that are sophisticated enough to capture the full r...
This article describes the first application of a generic (empirical) Bayesian analysis of between-s...
This paper revisits the dynamic causal modelling of fMRI timeseries by replacing the usual (Taylor) ...
Developments in M/EEG analysis allows for models that are sophisticated enough to capture the full r...
This article describes the first application of a generic (empirical) Bayesian analysis of between-s...
We present a review of dynamic causal modeling (DCM) for magneto- and electroencephalography (M/EEG)...
International audienceNeuronally plausible, generative or forward models are essential for understan...
Abstract: We present a review of dynamic causal modeling (DCM) for magneto-and electroencephalograph...
Dynamic causal modeling (DCM) provides a framework for the analysis of effective connectivity among ...
AbstractNeuronal responses exhibit two stimulus or task-related components: evoked and induced. The ...
International audienceThe aim of this work was to investigate the mechanisms that shape evoked elect...
The goal of dynamic causal modelling (DCM) of neuroimaging data is to study experimentally induced c...
Neuronal responses exhibit two stimulus or task-related components: evoked and induced. The function...
International audienceThe goal of dynamic causal modelling (DCM) of neuroimaging data is to study ex...
Developments in M/EEG analysis allows for models that are sophisticated enough to capture the full r...
This article describes the first application of a generic (empirical) Bayesian analysis of between-s...
This paper revisits the dynamic causal modelling of fMRI timeseries by replacing the usual (Taylor) ...
Developments in M/EEG analysis allows for models that are sophisticated enough to capture the full r...
This article describes the first application of a generic (empirical) Bayesian analysis of between-s...