GUIDER is a graphical user interface developed in MATLAB software environment to identify electroencephalography (EEG)-based brain computer interface (BCI) control features for a rehabilitation application (i.e. post-stroke motor imagery training). In this context, GUIDER aims to combine physiological and machine learning approaches. Indeed, GUIDER allows therapists to set parameters and constraints according to the rehabilitation principles (e.g. affected hemisphere, sensorimotor relevant frequencies) and foresees an automatic method to select the features among the defined subset. As a proof of concept, we compared offline performances between manual, just based on operator’s expertise and experience, and GUIDER semiautomatic features selection on BCI data collected from stroke patients during BCI-supported motor imagery training. Preliminary results suggest that this semiautomatic approach could be successfully applied to support the human selection reducing operator dependent variability in view of future multi-centric clinical trials.
GUIDER: a GUI for semiautomatic, physiologically driven EEG feature selection for a rehabilitation BCI / Colamarino, Emma; Pichiorri, Floriana; Schettini, Francesca; Martinoia, M.; Mattia, D.; Cincotti, Febo. - ELETTRONICO. - (2017), pp. 97-101. (Intervento presentato al convegno 7th Graz Brain-Computer Interface Conference 2017 From Vision to Reality tenutosi a Graz; Austria nel 18-22/09/2017) [10.3217/978-3-85125-533-1-19].
GUIDER: a GUI for semiautomatic, physiologically driven EEG feature selection for a rehabilitation BCI
COLAMARINO, EMMA
;PICHIORRI, FLORIANA;SCHETTINI, FRANCESCA;CINCOTTI, FEBO
2017
Abstract
GUIDER is a graphical user interface developed in MATLAB software environment to identify electroencephalography (EEG)-based brain computer interface (BCI) control features for a rehabilitation application (i.e. post-stroke motor imagery training). In this context, GUIDER aims to combine physiological and machine learning approaches. Indeed, GUIDER allows therapists to set parameters and constraints according to the rehabilitation principles (e.g. affected hemisphere, sensorimotor relevant frequencies) and foresees an automatic method to select the features among the defined subset. As a proof of concept, we compared offline performances between manual, just based on operator’s expertise and experience, and GUIDER semiautomatic features selection on BCI data collected from stroke patients during BCI-supported motor imagery training. Preliminary results suggest that this semiautomatic approach could be successfully applied to support the human selection reducing operator dependent variability in view of future multi-centric clinical trials.File | Dimensione | Formato | |
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