Closed-Loop Brain–Machine–Body Interfaces for Noninvasive Rehabilitation of Movement Disorders
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T. Sejnowski | K. Kreutz-Delgado | T. Jung | S. Makeig | G. Cauwenberghs | Frédéric D. Broccard | H. Poizner | J. Iversen | Y. Chi | T. Mullen | D. Peterson | M. Arnold | F. Broccard
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