Modelling time-varying and frequency-specific relationships between two brain signals is becoming an essential methodological tool to answer heoretical questions in experimental neuroscience. In this article, we propose to estimate a frequency Granger causality statistic that may vary in time in order to evaluate the functional connections between two brain regions during a task. We use for that purpose an adaptive Kalman filter type of estimator of a linear Gaussian vector autoregressive model with coefficients evolving over time. The estimation procedure is achieved through variational Bayesian approximation and is extended for multiple trials. This Bayesian State Space (BSS) model provides a dynamical Granger-causality statistic that is ...
Multielectrode neurophysiological recording and high-resolution neuroimaging generate multivariate d...
An often addressed challenge in neuroscience research is the assignment of different tasks to specif...
Brain effective connectivity aims to detect causal interactions between distinct brain units and it ...
<p>Modelling time-varying and frequency-specific relationships between two brain signals is becoming...
This PhD thesis concerns the modelling of time-varying causal relationships between two signals, wit...
The study of causality has drawn the attention of researchers from many different fields for centuri...
Since interactions in neural systems occur across multiple temporal scales, it is likely that inform...
Contains fulltext : 173085.pdf (publisher's version ) (Open Access)In many fields ...
International audienceGranger causality approaches have been widely used to estimate effective conne...
In many fields of science, there is the need of assessing the causal influences among time series. E...
High-frequency neuroelectric signals like electroencephalography (EEG) or magnetoencephalography (ME...
One of the main limitations of the brain functional connectivity estimation methods based on Autoreg...
High-frequency neuroelectric signals like electroencephalography (EEG) or magnetoencephalography (ME...
Granger causality is increasingly being applied to multi-electrode neurophysiological and functional...
Multielectrode neurophysiological recording and high-resolution neuroimaging generate multivariate d...
An often addressed challenge in neuroscience research is the assignment of different tasks to specif...
Brain effective connectivity aims to detect causal interactions between distinct brain units and it ...
<p>Modelling time-varying and frequency-specific relationships between two brain signals is becoming...
This PhD thesis concerns the modelling of time-varying causal relationships between two signals, wit...
The study of causality has drawn the attention of researchers from many different fields for centuri...
Since interactions in neural systems occur across multiple temporal scales, it is likely that inform...
Contains fulltext : 173085.pdf (publisher's version ) (Open Access)In many fields ...
International audienceGranger causality approaches have been widely used to estimate effective conne...
In many fields of science, there is the need of assessing the causal influences among time series. E...
High-frequency neuroelectric signals like electroencephalography (EEG) or magnetoencephalography (ME...
One of the main limitations of the brain functional connectivity estimation methods based on Autoreg...
High-frequency neuroelectric signals like electroencephalography (EEG) or magnetoencephalography (ME...
Granger causality is increasingly being applied to multi-electrode neurophysiological and functional...
Multielectrode neurophysiological recording and high-resolution neuroimaging generate multivariate d...
An often addressed challenge in neuroscience research is the assignment of different tasks to specif...
Brain effective connectivity aims to detect causal interactions between distinct brain units and it ...