Today I read a paper titled “Self-paced brain-computer interface control of ambulation in a virtual reality environment”
The abstract is:
Objective: Spinal cord injury (SCI) often leaves affected individuals unable to ambulate
Electroencephalogramme (EEG) based brain-computer interface (BCI) controlled lower extremity prostheses may restore intuitive and able-body-like ambulation after SCI
To test its feasibility, the authors developed and tested a novel EEG-based, data-driven BCI system for intuitive and self-paced control of the ambulation of an avatar within a virtual reality environment (VRE)
Approach: Eight able-bodied subjects and one with SCI underwent the following 10-min training session: subjects alternated between idling and walking kinaesthetic motor imageries (KMI) while their EEG were recorded and analysed to generate subject-specific decoding models
Subjects then performed a goal-oriented online task, repeated over 5 sessions, in which they utilised the KMI to control the linear ambulation of an avatar and make 10 sequential stops at designated points within the VRE
Main results: The average offline training performance across subjects was 77.2 +/- 9.5%, ranging from 64.3% (p = 0.00176) to 94.5% (p = 6.26*10^-23), with chance performance being 50%
The average online performance was 8.4 +/- 1.0 (out of 10) successful stops and 303 +/- 53 sec completion time (perfect = 211 sec)
All subjects achieved performances significantly different than those of random walk (p < 0.05) in 44 of the 45 online sessions
Significance: By using a data-driven machine learning approach to decode users’ KMI, this BCIVRE system enabled intuitive and purposeful self-paced control of ambulation after only a 10-minute training
The ability to achieve such BCI control with minimal training indicates that the implementation of future BCI-lower extremity prosthesis systems may be feasible