In the background of all human thinking—acting and reacting are sets of connections between different neurons or groups of neurons. We studied and evaluated these connections using electroencephalography (EEG) brain signals. In this paper, we propose the use of the complex Pearson correlation coefficient (CPCC), which provides information on connectivity with and without consideration of the volume conduction effect. Although the Pearson correlation coefficient is a widely accepted measure of the statistical relationships between random variables and the relationships between signals, it is not being used for EEG data analysis. Its meaning for EEG is not straightforward and rarely well understood. In this work, we compare it to the most com...
Magneto/electro-encephalography (M/EEG) source connectivity is an emerging approach to estimate brai...
A novel metric for estimating connectivity between brain areas, namely the Phase Linearity Measureme...
Real world biological systems such as the human brain are inherently nonlinear and difficult to mode...
Information flow between brain areas is difficult to estimate from EEG measurements due to the prese...
Using EEG to study brain connectivity seems to be something quite obvious, because EEG results from ...
International audienceMagneto/Electro-encephalography (M/EEG) source connectivity is an emergent too...
Phase synchronization has been an effective measurement of functional connectivity, detecting simila...
Electroencephalography (EEG) is an accessible technique that records neuronal oscillatory activity f...
<div><p>Functional connectivity (FC) and graph measures provide powerful means to analyze complex ne...
Power spectral density (PSD) and network analysis performed on functional correlation (FC) patterns ...
Connectivity analysis characterizes normal and altered brain function, for example, using the phase ...
Oscillatory neuronal activity may provide a mechanism for dynamic network coordination. Rhythmic neu...
International audienceIn the past, considerable effort has been devoted to the development of signal...
Functional connectivity (FC) and graph measures provide powerful means to analyze complex networks. ...
In this paper, we test the performance of a synchronicity estimator widely applied in Neuroscience, ...
Magneto/electro-encephalography (M/EEG) source connectivity is an emerging approach to estimate brai...
A novel metric for estimating connectivity between brain areas, namely the Phase Linearity Measureme...
Real world biological systems such as the human brain are inherently nonlinear and difficult to mode...
Information flow between brain areas is difficult to estimate from EEG measurements due to the prese...
Using EEG to study brain connectivity seems to be something quite obvious, because EEG results from ...
International audienceMagneto/Electro-encephalography (M/EEG) source connectivity is an emergent too...
Phase synchronization has been an effective measurement of functional connectivity, detecting simila...
Electroencephalography (EEG) is an accessible technique that records neuronal oscillatory activity f...
<div><p>Functional connectivity (FC) and graph measures provide powerful means to analyze complex ne...
Power spectral density (PSD) and network analysis performed on functional correlation (FC) patterns ...
Connectivity analysis characterizes normal and altered brain function, for example, using the phase ...
Oscillatory neuronal activity may provide a mechanism for dynamic network coordination. Rhythmic neu...
International audienceIn the past, considerable effort has been devoted to the development of signal...
Functional connectivity (FC) and graph measures provide powerful means to analyze complex networks. ...
In this paper, we test the performance of a synchronicity estimator widely applied in Neuroscience, ...
Magneto/electro-encephalography (M/EEG) source connectivity is an emerging approach to estimate brai...
A novel metric for estimating connectivity between brain areas, namely the Phase Linearity Measureme...
Real world biological systems such as the human brain are inherently nonlinear and difficult to mode...