A Gait Imagery-Based Brain-Computer Interface With Visual Feedback for Spinal Cord Injury Rehabilitation on Lokomat

被引:1
|
作者
Blanco-Diaz, Cristian Felipe [1 ]
Serafini, Ericka Raiane da Silva [2 ]
Bastos-Filho, Teodiano [1 ]
Dantas, Andre Felipe Oliveira de Azevedo [2 ]
Santo, Caroline Cunha do Espirito [2 ]
Delisle-Rodriguez, Denis [2 ]
机构
[1] Fed Univ Espirito Santo UFES, Postgrad Program Elect Engn, Vitoria, Brazil
[2] Santos Dumont Inst, Edmond & Lily Safra Int Inst Neurosci, BR-59288899 Macaiba, Brazil
关键词
Motors; Electroencephalography; Vectors; Visualization; Neurofeedback; Legged locomotion; Feature extraction; Brain-computer interface; lokomat; lower-limb rehabilitation; motor imagery; neurofeedback; spinal cord injury; walking; MOTOR IMAGERY; RECOVERY;
D O I
10.1109/TBME.2024.3440036
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Motor Imagery (MI)-based Brain- Computer Interfaces (BCIs) have been proposed for the rehabilitation of people with disabilities, being a big challenge their successful application to restore motor functions in individuals with Spinal Cord Injury (SCI). This work proposes an Electroencephalography (EEG) gait imagery- based BCI to promote motor recovery on the Lokomat platform, in order to allow a clinical intervention by acting simultaneously on both central and peripheral nervous mechanisms. Methods: As a novelty, our BCI system accurately discriminates gait imagery tasks during walking and further provides a multi-channel EEG-based Visual Neurofeedback (VNFB) linked to mu (8-12 Hz) and beta (15- 20 Hz) rhythms around Cz. VNFB is carried out through a cluster analysis strategy-based Euclidean distance, where the weighted mean MI feature vector is used as a reference to teach individuals with SCI to modulate their cortical rhythms. Results: The developed BCI reached an average classification accuracy of 74.4%. In addition, feature analysis demonstrated a reduction in cluster variance after several sessions, whereas metrics associated with self-modulation indicated a greater distance between both classes: passive walking with gait MI and passive walking without MI. Conclusion: The results suggest that intervention with a gait MI-based BCI with VNFB may allow the individuals to appropriately modulate their rhythms of interest around Cz. Significance: This work contributes to the development of advanced systems for gait rehabilitation by integrating Machine Learning and neurofeedback techniques, to restore lower-limb functions of SCI individuals.
引用
收藏
页码:102 / 111
页数:10
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