模块化设计
计算机科学
人工智能
脑电图
任务(项目管理)
脑-机接口
抓住
模式识别(心理学)
心理学
神经科学
工程类
系统工程
程序设计语言
操作系统
作者
Matthew S. Fifer,Guy Hotson,Brock A. Wester,David P. McMullen,Yujing Wang,Matthew S. Johannes,Kapil D. Katyal,John B. Helder,Matthew P. Para,R. Jacob Vogelstein,William S. Anderson,Nitish V. Thakor,Nathan E. Crone
标识
DOI:10.1109/tnsre.2013.2286955
摘要
Intracranial electroencephalographic (iEEG) signals from two human subjects were used to achieve simultaneous neural control of reaching and grasping movements with the Johns Hopkins University Applied Physics Lab (JHU/APL) Modular Prosthetic Limb (MPL), a dexterous robotic prosthetic arm. We performed functional mapping of high gamma activity while the subject made reaching and grasping movements to identify task-selective electrodes. Independent, online control of reaching and grasping was then achieved using high gamma activity from a small subset of electrodes with a model trained on short blocks of reaching and grasping with no further adaptation. Classification accuracy did not decline (p < 0.05, one-way ANOVA) over three blocks of testing in either subject. Mean classification accuracy during independently executed overt reach and grasp movements for (Subject 1, Subject 2) were (0.85, 0.81) and (0.80, 0.96), respectively, and during simultaneous execution they were (0.83, 0.88) and (0.58, 0.88), respectively. Our models leveraged knowledge of the subject's individual functional neuroanatomy for reaching and grasping movements, allowing rapid acquisition of control in a time-sensitive clinical setting. We demonstrate the potential feasibility of verifying functionally meaningful iEEG-based control of the MPL prior to chronic implantation, during which additional capabilities of the MPL might be exploited with further training.
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