An important goal in neuroscience is to identify instances when EEG signals are coupled. We employ a method to measure the coupling strength between gamma signals (40–100 Hz) on a short time scale as the maximum cross-correlation over a range of time lags within a sliding variable-width window. Instances of coupling states among several signals are also identified, using a mixed multivariate beta distribution to model coupling strength across multiple gamma signals with reference to a common base signal. We first apply our variable-window method to simulated signals and compare its performance to a fixed-window approach. We then focus on gamma signals recorded in two regions of the rat hippocampus. Our results indicate that this may be a us...
Oscillations have been increasingly recognized as a core property of neural responses that contribut...
We define a metric, mutual information in frequency (MI-in-frequency), to detect and quantify the st...
Vinck et al. develop new statistical techniques for the analysis of electrophysiological brain data,...
An important goal in neuroscience is to identify instances when EEG signals are coupled. We employ a...
The use of EEG to simultaneously record multiple brains (i.e., hyperscanning) during social interact...
During the past decades, considerable effort has been devoted to the development of signal processin...
The goal of this study is to investigate functional connectivity between different brain regions by ...
Neuronal oscillations allow for temporal segmentation of neuronal spikes. Interdependent oscillators...
International audienceIn the past, considerable effort has been devoted to the development of signal...
Neuroscience time series data from a range of techniques and species reveal complex, non-linear inte...
International audienceOur objective is to analyze EEG signals recorded with depth electrodes during ...
It is well established that neuronal oscillations at different frequencies interact with each other ...
The sharing and the transmission of information between cortical brain regions is carried out by mec...
Background The spatiotemporal coupling of brainwaves is commonly quantified using the amplitude or p...
Synopsis (≤ 100 words): We establish a methodology for optimal combination of simultaneous EEG recor...
Oscillations have been increasingly recognized as a core property of neural responses that contribut...
We define a metric, mutual information in frequency (MI-in-frequency), to detect and quantify the st...
Vinck et al. develop new statistical techniques for the analysis of electrophysiological brain data,...
An important goal in neuroscience is to identify instances when EEG signals are coupled. We employ a...
The use of EEG to simultaneously record multiple brains (i.e., hyperscanning) during social interact...
During the past decades, considerable effort has been devoted to the development of signal processin...
The goal of this study is to investigate functional connectivity between different brain regions by ...
Neuronal oscillations allow for temporal segmentation of neuronal spikes. Interdependent oscillators...
International audienceIn the past, considerable effort has been devoted to the development of signal...
Neuroscience time series data from a range of techniques and species reveal complex, non-linear inte...
International audienceOur objective is to analyze EEG signals recorded with depth electrodes during ...
It is well established that neuronal oscillations at different frequencies interact with each other ...
The sharing and the transmission of information between cortical brain regions is carried out by mec...
Background The spatiotemporal coupling of brainwaves is commonly quantified using the amplitude or p...
Synopsis (≤ 100 words): We establish a methodology for optimal combination of simultaneous EEG recor...
Oscillations have been increasingly recognized as a core property of neural responses that contribut...
We define a metric, mutual information in frequency (MI-in-frequency), to detect and quantify the st...
Vinck et al. develop new statistical techniques for the analysis of electrophysiological brain data,...