This article describes the first application of a generic (empirical) Bayesian analysis of between-subject effects in the dynamic causal modeling (DCM) of electrophysiological (MEG) data. It shows that (i) non-invasive (MEG) data can be used to characterize subject-specific differences in cortical microcircuitry and (ii) presents a validation of DCM with neural fields that exploits intersubject variability in gamma oscillations. We find that intersubject variability in visually induced gamma responses reflects changes in the excitation-inhibition balance in a canonical cortical circuit. Crucially, this variability can be explained by subject-specific differences in intrinsic connections to and from inhibitory interneurons that form a pyrami...
Using high-density electrocorticographic recordings - from awake-behaving monkeys - and dynamic caus...
This work is about understanding the dynamics of neuronal systems, in particular with respect to br...
Background and Objective: While machine learning approaches have led to tremendous advances in brain...
This article describes the first application of a generic (empirical) Bayesian analysis of between-s...
This article describes the first application of a generic (empirical) Bayesian analysis of between-s...
The ability to quantify synaptic function at the level of cortical microcircuits from non-invasive d...
This paper shows how gamma oscillations can be combined with neural population models and <em>dynami...
Neural rhythms or oscillations are ubiquitous in neuroimaging data. These spectral responses have be...
AbstractThis paper presents a dynamic causal model based upon neural field models of the Amari type....
Neural activity is organized at multiple scales, ranging from the cellular to the whole brain level....
This paper reports a dynamic causal modeling study of electrocorticographic (ECoG) data that address...
AbstractThis paper reports a dynamic causal modeling study of electrocorticographic (ECoG) data that...
AbstractDynamic causal modelling (DCM) has been applied recently to event-related responses (ERPs) m...
This paper reports a dynamic causal modeling study of electrocorticographic (ECoG) data that address...
We present a review of dynamic causal modeling (DCM) for magneto- and electroencephalography (M/EEG)...
Using high-density electrocorticographic recordings - from awake-behaving monkeys - and dynamic caus...
This work is about understanding the dynamics of neuronal systems, in particular with respect to br...
Background and Objective: While machine learning approaches have led to tremendous advances in brain...
This article describes the first application of a generic (empirical) Bayesian analysis of between-s...
This article describes the first application of a generic (empirical) Bayesian analysis of between-s...
The ability to quantify synaptic function at the level of cortical microcircuits from non-invasive d...
This paper shows how gamma oscillations can be combined with neural population models and <em>dynami...
Neural rhythms or oscillations are ubiquitous in neuroimaging data. These spectral responses have be...
AbstractThis paper presents a dynamic causal model based upon neural field models of the Amari type....
Neural activity is organized at multiple scales, ranging from the cellular to the whole brain level....
This paper reports a dynamic causal modeling study of electrocorticographic (ECoG) data that address...
AbstractThis paper reports a dynamic causal modeling study of electrocorticographic (ECoG) data that...
AbstractDynamic causal modelling (DCM) has been applied recently to event-related responses (ERPs) m...
This paper reports a dynamic causal modeling study of electrocorticographic (ECoG) data that address...
We present a review of dynamic causal modeling (DCM) for magneto- and electroencephalography (M/EEG)...
Using high-density electrocorticographic recordings - from awake-behaving monkeys - and dynamic caus...
This work is about understanding the dynamics of neuronal systems, in particular with respect to br...
Background and Objective: While machine learning approaches have led to tremendous advances in brain...