OBJECTIVE: Spinal cord injury (SCI) often leaves affected individuals unable to ambulate. Electroencephalogram (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 five sessions, in which they utilized the KMI to control the linear ambulation of an avatar and make ten sequential stops at designated points within the VRE. MAIN RESULTS: The average offline training performance across subjects was 77.2 ± 11.0%, ranging from 64.3% (p = 0.001 76) to 94.5% (p = 6.26 × 10(-23)), with chance performance being 50%. The average online performance was 8.5 ± 1.1 (out of 10) successful stops and 303 ± 53 s completion time (perfect = 211 s). 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 BCI-VRE system enabled intuitive and purposeful self-paced control of ambulation after only 10 minutes 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.
OBJECTIVE:Spinal cord injury (SCI) often leaves affected individuals unable to ambulate. Electroencephalogram (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 five sessions, in which they utilized the KMI to control the linear ambulation of an avatar and make ten sequential stops at designated points within the VRE. MAIN RESULTS: The average offline training performance across subjects was 77.2 ± 11.0%, ranging from 64.3% (p = 0.001 76) to 94.5% (p = 6.26 × 10(-23)), with chance performance being 50%. The average online performance was 8.5 ± 1.1 (out of 10) successful stops and 303 ± 53 s completion time (perfect = 211 s). 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 BCI-VRE system enabled intuitive and purposeful self-paced control of ambulation after only 10 minutes 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.
Authors: Bin He; Bryan Baxter; Bradley J Edelman; Christopher C Cline; Wendy Ye Journal: Proc IEEE Inst Electr Electron Eng Date: 2015-05-20 Impact factor: 10.961
Authors: Christine E King; Po T Wang; Colin M McCrimmon; Cathy C Y Chou; An H Do; Zoran Nenadic Journal: Annu Int Conf IEEE Eng Med Biol Soc Date: 2014
Authors: Sumner L Norman; David Maresca; Vassilios N Christopoulos; Whitney S Griggs; Charlie Demene; Mickael Tanter; Mikhail G Shapiro; Richard A Andersen Journal: Neuron Date: 2021-03-22 Impact factor: 17.173
Authors: Po T Wang; Everardo Camacho; Ming Wang; Yongcheng Li; Susan J Shaw; Michelle Armacost; Hui Gong; Daniel Kramer; Brian Lee; Richard A Andersen; Charles Y Liu; Payam Heydari; Zoran Nenadic; An H Do Journal: J Neural Eng Date: 2019-11-12 Impact factor: 5.379
Authors: Christine E King; Po T Wang; Colin M McCrimmon; Cathy C Y Chou; An H Do; Zoran Nenadic Journal: J Neuroeng Rehabil Date: 2015-09-24 Impact factor: 4.262