Detecting intention to execute the next movement while performing current movement from EEG using global optimal constrained ICA

Brain–computer interfaces (BCIs) are a promising tool in neurorehabilitation. The intention to perform a motor action can be detected from brain signals and used to control robotic devices. Most previous studies have focused on the starting of movements from a resting state, while in daily life acti...

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Veröffentlicht in:Computers in biology and medicine 2018-08, Vol.99, p.63-75
Hauptverfasser: Eilbeigi, Elnaz, Setarehdan, Seyed Kamaledin
Format: Artikel
Sprache:eng
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Zusammenfassung:Brain–computer interfaces (BCIs) are a promising tool in neurorehabilitation. The intention to perform a motor action can be detected from brain signals and used to control robotic devices. Most previous studies have focused on the starting of movements from a resting state, while in daily life activities, motions occur continuously and the neural activities correlated to the evolving movements are yet to be investigated. First we investigate the existence of neural correlates of intention to replace an object on the table during a holding phase. Next, we present a new method to extract the movement-related cortical potentials (MRCP) from a single-trial EEG. A novel method called Global optimal constrained ICA (GocICA) is proposed to overcome the limitations of cICA which is implemented based on Particle Swarm Optimization (PSO) and Charged System Search (CSS) techniques. GocICA is then utilized for decoding the intention to grasp and lift and intention to replace movements where the results were compared. It was found that GocICA significantly improves the intention detection performance. Best results in offline detection were obtained with CSS-cICA for both kinds of intentions. Furthermore, pseudo-online decoding showed that GocICA was able to predict both intentions before the onset of related movements with the highest probability. Decoding of the next movement intention during current movement is possible, which can be used to create more natural neuroprostheses. The results demonstrate that GocICA is a promising new algorithm for single-trial MRCP detection which can be used for detecting other types of ERPs such as P300. •We propose a novel algorithm to improve the performance of the conventional cICA.•The proposed method extracts the desired signal by using CSS and PSO algorithms.•The proposed method can be used for extracting the ERPs such as MRCP and P300.•We showed that decoding of the replacing intention during a holding phase is possible.•Our method outperforms some existing methods on detection of movement intention.
ISSN:0010-4825
1879-0534
DOI:10.1016/j.compbiomed.2018.05.024