Synchronization is an important mechanism that helps in understanding information processing in a normal or abnormal brain. In this paper, we propose a new method to estimate the genuine and random synchronization indexes in multivariate neural series, denoted as GSI (genuine synchronization index) and RSI (random synchronization index), by means of a correlation matrix analysis and surrogate technique. The performance of the method is evaluated by using a multi-channel neural mass model (MNMM), including the effects of different coupling coefficients, signal to noise ratios (SNRs) and time-window widths on the estimation of the GSI and RSI. Results show that the GSI and the RSI are superior in description of the synchronization in multivar...
Epilepsy is a persistent and recurring neurological condition in a community of brain neurons that r...
Phase synchrony assessment across non-stationary multivariate signals is a useful way to characteriz...
Complex biological systems such as the human brain can be expected to be inherently nonlinear and he...
Synchronization behavior of electroencephalographic (EEG) signals is important for decoding informat...
Cognitive processing requires integration of information processed simultaneously in spatially disti...
We propose a new measure of synchronization of multichannel ictal and interictal EEG signals. The me...
The study of complex systems consisting of many interacting subsystems requires the use of analytica...
There are various methods to measure the value of synchronization of signals. These methods usually ...
AbstractWe investigate the emergence of synchronization in two groups of oscillators; one group acts...
In this paper we introduce a novel method for the characterization of synchronziation and coupling e...
A longstanding challenge in epilepsy research and practice is the need to classify synchronization p...
r r Abstract: This article presents, for the first time, a practical method for the direct quantific...
Analog signals of the cerebral cortex in behaving subjects frequently express strong oscillatory com...
Multivariate time series analysis is extensively used in neurophysiology with the aim of studying th...
The chapters thus far have described quantitative tools that can be used to extract information from...
Epilepsy is a persistent and recurring neurological condition in a community of brain neurons that r...
Phase synchrony assessment across non-stationary multivariate signals is a useful way to characteriz...
Complex biological systems such as the human brain can be expected to be inherently nonlinear and he...
Synchronization behavior of electroencephalographic (EEG) signals is important for decoding informat...
Cognitive processing requires integration of information processed simultaneously in spatially disti...
We propose a new measure of synchronization of multichannel ictal and interictal EEG signals. The me...
The study of complex systems consisting of many interacting subsystems requires the use of analytica...
There are various methods to measure the value of synchronization of signals. These methods usually ...
AbstractWe investigate the emergence of synchronization in two groups of oscillators; one group acts...
In this paper we introduce a novel method for the characterization of synchronziation and coupling e...
A longstanding challenge in epilepsy research and practice is the need to classify synchronization p...
r r Abstract: This article presents, for the first time, a practical method for the direct quantific...
Analog signals of the cerebral cortex in behaving subjects frequently express strong oscillatory com...
Multivariate time series analysis is extensively used in neurophysiology with the aim of studying th...
The chapters thus far have described quantitative tools that can be used to extract information from...
Epilepsy is a persistent and recurring neurological condition in a community of brain neurons that r...
Phase synchrony assessment across non-stationary multivariate signals is a useful way to characteriz...
Complex biological systems such as the human brain can be expected to be inherently nonlinear and he...