IEEE Trans Neural Syst Rehabil Eng. 2020 Jul;28(7):1623-1635. doi: 10.1109/TNSRE.2020.2998778.
Prediction of human voluntary gait intention is a very significant task to ensure direct cortical control of real-life assistive technologies for locomotion rehabilitation. Neurophysiological studies provide that human voluntary gait intention is represented by slow DC potentials and power shifts in specific frequency ranges of brain wave, which can be detected 1.5- 2 seconds before the actual onset. The goal of this study was to determine whether it is possible to reliably detect the intention of voluntary gait 'starting' and 'stopping' intention before it takes place. A computational algorithm was designed to implement asynchronous prediction of gait intention in an offline and pseudo-online environment using support vector machine. Six healthy subjects participated in the study and performed self- paced voluntary gait cycles. A combination of advanced wavelet transform algorithms resulted in 88.23± 1.59% accuracy, 85.42± 4.03% sensitivity and 90.24± 2.78% specificity for intention of start detection and 87.04± 1.72% accuracy, 82.69± 4.13% sensitivity and 89.59± 3.04% specificity for intention to stop walking in offline testing. Additionally, the wavelet transform methods accompanied with threshold regulation and majority voting algorithm resulted in a True Positive Rate of 85.5± 5.0% and 81.2± 3.3% for 'start' and 'stop' prediction with 6.8± 0.7 and 9.4± 1.0 False Positives per Minute respectively in pseudo online testing. The average detection latencies were -1002 ± 603 ms and -943 ± 603 ms, respectively, for 'start' and 'stop' prediction. The study provides promising outcomes in terms of TPR, FP/min, and detection latency, which suggests that human voluntary gait intention can be predicted before the onset of movement.
预测人类自主步态意图是确保直接皮质控制用于运动康复的现实辅助技术的一项非常重要的任务。神经生理学研究表明,人类自主步态意图由慢 DC 电位和脑电波特定频率范围内的功率转移来表示,可以在实际开始前 1.5-2 秒检测到。本研究的目的是确定是否可以在离线和伪在线环境中使用支持向量机设计计算算法来可靠地检测自愿步态“开始”和“停止”意图的发生。六位健康受试者参与了本研究,并进行了自我调节的自愿步态循环。先进的小波变换算法的组合导致开始意图检测的准确率为 88.23±1.59%,灵敏度为 85.42±4.03%,特异性为 90.24±2.78%,停止意图检测的准确率为 87.04±1.72%,灵敏度为 82.69±4.13%,特异性为 89.59±3.04%。此外,小波变换方法结合阈值调节和多数投票算法,在伪在线测试中,“开始”和“停止”预测的真阳性率分别为 85.5±5.0%和 81.2±3.3%,假阳性率分别为每分钟 6.8±0.7 和 9.4±1.0。平均检测潜伏期分别为-1002±603ms 和-943±603ms,用于“开始”和“停止”预测。该研究在 TPR、FP/min 和检测潜伏期方面提供了有希望的结果,表明人类自主步态意图可以在运动开始之前进行预测。