HERMES: towards an integrated toolbox to characterize functional and effective brain connectivity
Guiomar Niso, Ricardo Bru\~na, Ernesto Pereda, Ricardo Guti\'errez,, Ricardo Bajo, Fernando Maest\'u, Francisco del-Pozo

TL;DR
HERMES is an integrated Matlab toolbox that simplifies the analysis of functional and effective brain connectivity from neurophysiological data like EEG and MEG, including visualization and statistical tools.
Contribution
This paper introduces HERMES, a comprehensive, user-friendly software toolbox that consolidates various brain connectivity analysis methods into a single platform.
Findings
Provides a unified toolbox for brain connectivity analysis
Includes visualization and statistical tools for neurophysiological data
Facilitates research in brain connectivity with an accessible interface
Abstract
The analysis of the interdependence between time series has become an important field of research in the last years, mainly as a result of advances in the characterization of dynamical systems from the signals they produce, the introduction of concepts such as generalized and phase synchronization and the application of information theory to time series analysis. In neurophysiology, different analytical tools stemming from these concepts have added to the 'traditional' set of linear methods, which includes the cross-correlation and the coherency function in the time and frequency domain, respectively, or more elaborated tools such as Granger Causality. This increase in the number of approaches to tackle the existence of functional (FC) or effective connectivity (EC) between two (or among many) neural networks, along with the mathematical complexity of the corresponding time series…
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