Title of article :
Detecting the Intention to Move Upper Limbs from Electroencephalographic Brain Signals
Author/Authors :
Gudiño-Mendoza, Berenice Tecnologico de Monterrey - Campus Guadalajara - Avenida General Ramon Corona - Zapopan, Mexico , Sanchez-Ante, Gildardo Tecnologico de Monterrey - Campus Guadalajara - Avenida General Ramon Corona - Zapopan, Mexico , Antelis, Javier M Tecnologico de Monterrey - Campus Guadalajara - Avenida General Ramon Corona - Zapopan, Mexico
Abstract :
Early decoding of motor states directly from the brain activity is essential to develop brain-machine interfaces (BMI) for natural
motor control of neuroprosthetic devices. Hence, this study aimed to investigate the detection of movement information before the
actual movement occurs. This information piece could be useful to provide early control signals to drive BMI-based rehabilitation
and motor assisted devices, thus providing a natural and active rehabilitation therapy. In this work, electroencephalographic (EEG)
brain signals from six healthy right-handed participants were recorded during self-initiated reaching movements of the upper
limbs. The analysis of these EEG traces showed that significant event-related desynchronization is present before and during the
execution of the movements, predominantly in the motor-related 𝛼 and 𝛽 frequency bands and in electrodes placed above the motor
cortex. This oscillatory brain activity was used to continuously detect the intention to move the limbs, that is, to identify the motor
phase prior to the actual execution of the reaching movement. The results showed, first, significant classification between relax and
movement intention and, second, significant detection of movement intention prior to the onset of the executed movement. On
the basis of these results, detection of movement intention could be used in BMI settings to reduce the gap between mental motor
processes and the actual movement performed by an assisted or rehabilitation robotic device.
Keywords :
Upper , Electroencephalographic , BMI , EEG
Journal title :
Computational and Mathematical Methods in Medicine