A novel metric for estimating connectivity between brain areas, namely the Phase Linearity Measurement (PLM), is presented. The purpose consists in measuring the amount of information exchanged between brain areas. Such scope is achieved by analyzing the similarities between the recorded signal phases. The PLM has been designed for exploiting both Electroencephalographic (EEG) and Magnetoencephalographic (MEG) data. We compared the results achieved by PLM in case of real MEG data with a widely adopted phase based connectivity metric, the Phase Lag Index (PLI). The PLM is characterized by interesting results, mainly in terms of noise resiliency
The time- and frequency-varying dynamics of how brain regions interact is one of the fundamental mys...
Magneto/Electro-encephalography (M/EEG) source connectivity is an emerging approach to estimate brai...
Information flow between brain areas is difficult to estimate from EEG measurements due to the prese...
The problem of describing how different brain areas interact between each other has been granted a g...
The analysis of brain connectivity is gaining interest in recent years due to the relevant informati...
Phase synchronization has been an effective measurement of functional connectivity, detecting simila...
International audienceThe current paper proposes a method to estimate phase to phase cross-frequency...
Objective: To address the problem of volume conduction and active reference electrodes in the assess...
International audienceAbstract Background Brain areas need to coordinate their activity in order to ...
<div><p>Functional connectivity (FC) and graph measures provide powerful means to analyze complex ne...
Connectivity analysis characterizes normal and altered brain function, for example, using the phase ...
International audienceMagneto/Electro-encephalography (M/EEG) source connectivity is an emergent too...
<p>EEG time series are measured from scalp electrodes. Phase Lag Index (PLI) as a measure of functio...
Magneto/electro-encephalography (M/EEG) source connectivity is an emerging approach to estimate brai...
Functional connectivity (FC) and graph measures provide powerful means to analyze complex networks. ...
The time- and frequency-varying dynamics of how brain regions interact is one of the fundamental mys...
Magneto/Electro-encephalography (M/EEG) source connectivity is an emerging approach to estimate brai...
Information flow between brain areas is difficult to estimate from EEG measurements due to the prese...
The problem of describing how different brain areas interact between each other has been granted a g...
The analysis of brain connectivity is gaining interest in recent years due to the relevant informati...
Phase synchronization has been an effective measurement of functional connectivity, detecting simila...
International audienceThe current paper proposes a method to estimate phase to phase cross-frequency...
Objective: To address the problem of volume conduction and active reference electrodes in the assess...
International audienceAbstract Background Brain areas need to coordinate their activity in order to ...
<div><p>Functional connectivity (FC) and graph measures provide powerful means to analyze complex ne...
Connectivity analysis characterizes normal and altered brain function, for example, using the phase ...
International audienceMagneto/Electro-encephalography (M/EEG) source connectivity is an emergent too...
<p>EEG time series are measured from scalp electrodes. Phase Lag Index (PLI) as a measure of functio...
Magneto/electro-encephalography (M/EEG) source connectivity is an emerging approach to estimate brai...
Functional connectivity (FC) and graph measures provide powerful means to analyze complex networks. ...
The time- and frequency-varying dynamics of how brain regions interact is one of the fundamental mys...
Magneto/Electro-encephalography (M/EEG) source connectivity is an emerging approach to estimate brai...
Information flow between brain areas is difficult to estimate from EEG measurements due to the prese...