In thiswork we propose a proof of principle that dynamic causal modelling can identify plausible mechanisms at the synaptic level underlying brain state changes over a timescale of seconds. As a benchmark example for validation we used intracranial electroencephalographic signals in a human subject. These data were used to infer the (effective connectivity) architecture of synaptic connections among neural populations assumed to generate seizure activity. Dynamic causal modelling allowed us to quantify empirical changes in spectral activity in terms of a trajectory in parameter space -identifying key synaptic parameters or connections that cause observed signals. Using recordings from three seizures in one patient, we considered a network o...
Using electroencephalography (EEG) dynamic brain function can be measured and its abnormalities iden...
In this note, we assess the predictive validity of stochastic dynamic causal modeling (sDCM) of func...
<p>This poster describes a novel application of Dynamic Causal Modelling to characterize the synapti...
In thiswork we propose a proof of principle that dynamic causal modelling can identify plausible mec...
AbstractIn this work we propose a proof of principle that dynamic causal modelling can identify plau...
AbstractSeizure activity in EEG recordings can persist for hours with seizure dynamics changing rapi...
This paper presents a physiological account of seizure activity and its evolution over time using a ...
This technical note introduces adiabatic dynamic causal modelling, a method for inferring slow chang...
This paper revisits the dynamic causal modelling of fMRI timeseries by replacing the usual (Taylor) ...
In this work, we propose an approach that allows to explore the potential pathophysiological mechani...
Functional and effective connectivity are known to change systematically over time. These changes mi...
International audienceBACKGROUND AND OBJECTIVE: Recently, spectral Dynamic Causal Modelling (DCM) ha...
This technical note introduces adiabatic dynamic causal modelling, a method for inferring slow chang...
International audienceThis study deals with effective connectivity analysis among distant neural ens...
Physiologically based models could facilitate better understanding of mechanisms underlying epilepti...
Using electroencephalography (EEG) dynamic brain function can be measured and its abnormalities iden...
In this note, we assess the predictive validity of stochastic dynamic causal modeling (sDCM) of func...
<p>This poster describes a novel application of Dynamic Causal Modelling to characterize the synapti...
In thiswork we propose a proof of principle that dynamic causal modelling can identify plausible mec...
AbstractIn this work we propose a proof of principle that dynamic causal modelling can identify plau...
AbstractSeizure activity in EEG recordings can persist for hours with seizure dynamics changing rapi...
This paper presents a physiological account of seizure activity and its evolution over time using a ...
This technical note introduces adiabatic dynamic causal modelling, a method for inferring slow chang...
This paper revisits the dynamic causal modelling of fMRI timeseries by replacing the usual (Taylor) ...
In this work, we propose an approach that allows to explore the potential pathophysiological mechani...
Functional and effective connectivity are known to change systematically over time. These changes mi...
International audienceBACKGROUND AND OBJECTIVE: Recently, spectral Dynamic Causal Modelling (DCM) ha...
This technical note introduces adiabatic dynamic causal modelling, a method for inferring slow chang...
International audienceThis study deals with effective connectivity analysis among distant neural ens...
Physiologically based models could facilitate better understanding of mechanisms underlying epilepti...
Using electroencephalography (EEG) dynamic brain function can be measured and its abnormalities iden...
In this note, we assess the predictive validity of stochastic dynamic causal modeling (sDCM) of func...
<p>This poster describes a novel application of Dynamic Causal Modelling to characterize the synapti...