步态周期
物理医学与康复
脑电图
外骨骼
步态
脑-机接口
任务(项目管理)
节奏
计算机科学
心理学
模拟
医学
神经科学
管理
物理
内科学
经典力学
运动学
经济
作者
Enrique Hortal,Andrés Úbeda,Eduardo Iáñez,José M. Azorín,Eduardo Fernández
标识
DOI:10.1142/s0129065716500295
摘要
Walking is for humans an essential task in our daily life. However, there is a huge (and growing) number of people who have this ability diminished or are not able to walk due to motor disabilities. In this paper, a system to detect the start and the stop of the gait through electroencephalographic signals has been developed. The system has been designed in order to be applied in the future to control a lower limb exoskeleton to help stroke or spinal cord injured patients during the gait. The brain–machine interface (BMI) training has been optimized through a preliminary analysis using the brain information recorded during the experiments performed by three healthy subjects. Afterward, the system has been verified by other four healthy subjects and three patients in a real-time test. In both preliminary optimization analysis and real-time tests, the results obtained are very similar. The true positive rates are [Formula: see text] and [Formula: see text] respectively. Regarding the false positive per minute, the values are also very similar, decreasing from 2.66 in preliminary tests to 1.90 in real-time. Finally, the average latencies in the detection of the movement intentions are 794 and 798[Formula: see text]ms, preliminary and real-time tests respectively.
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