Recent functional magnetic resonance imaging (fMRI) studies have identified specific neural patterns related to three different categories of movements: intransitive (i.e., meaningful gestures that do not include the use of objects), transitive (i.e., actions involving an object), and tool-mediated (i.e., actions involving a tool to interact with an object). However, fMRI intrinsically limits the exploitation of these results in a real scenario, such as a brain-machine interface (BMI). In this study, we propose a new approach to automatically predict intransitive, transitive, or tool-mediated movements of the upper limb using electroencephalography (EEG) spectra estimated during a motor planning phase. To this end, high-resolution EEG data gathered from 33 healthy subjects were used as input of a three-class k-Nearest Neighbours classifier. Different combinations of EEGderived spatial and frequency information were investigated to find the most accurate feature vector. In addition, we studied gender differences further splitting the dataset into only-male data, and only-female data. A remarkable difference was found between accuracies achieved with male and female data, the latter yielding the best performance (78.55% of accuracy for the prediction of intransitive, transitive and tool-mediated actions). These results potentially suggest that different gender-based models should be employed for future BMI applications.

Predicting object-mediated gestures from brain activity: an EEG study on gender differences

Catrambone, Vincenzo;Greco, Alberto;Averta, Giuseppe;Bianchi, Matteo
Methodology
;
Valenza, Gaetano;Scilingo, Enzo Pasquale
2019-01-01

Abstract

Recent functional magnetic resonance imaging (fMRI) studies have identified specific neural patterns related to three different categories of movements: intransitive (i.e., meaningful gestures that do not include the use of objects), transitive (i.e., actions involving an object), and tool-mediated (i.e., actions involving a tool to interact with an object). However, fMRI intrinsically limits the exploitation of these results in a real scenario, such as a brain-machine interface (BMI). In this study, we propose a new approach to automatically predict intransitive, transitive, or tool-mediated movements of the upper limb using electroencephalography (EEG) spectra estimated during a motor planning phase. To this end, high-resolution EEG data gathered from 33 healthy subjects were used as input of a three-class k-Nearest Neighbours classifier. Different combinations of EEGderived spatial and frequency information were investigated to find the most accurate feature vector. In addition, we studied gender differences further splitting the dataset into only-male data, and only-female data. A remarkable difference was found between accuracies achieved with male and female data, the latter yielding the best performance (78.55% of accuracy for the prediction of intransitive, transitive and tool-mediated actions). These results potentially suggest that different gender-based models should be employed for future BMI applications.
2019
Catrambone, Vincenzo; Greco, Alberto; Averta, Giuseppe; Bianchi, Matteo; Valenza, Gaetano; Scilingo, Enzo Pasquale
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11568/963713
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