IEEE Trans Neural Syst Rehabil Eng. 2020 May;28(5):1069-1080. doi: 10.1109/TNSRE.2020.2980294. Epub 2020 Mar 12.
The goal of this study is to design a novel approach for extracting volitional electromyography (vEMG) contaminated by functional electrical stimulation (FES) with time variant amplitudes and frequencies.
A selective interpolation (SI) is adopted to eliminate the initial spike. Then the interpolated signal is decomposed into intrinsic mode functions by using complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN). Each IMF is window-filtered based on a logistic regression (LR) classifier to identify the IMFs contaminated by FES. Semi-simulated signals were generated using EMG and stimulation response and three metrics were adopted to validate the performance of the proposed algorithm, including the a) signal-to-noise ratio (SNR), b) normalized root mean squared error (NRMSE) and c) cross-correlation coefficient between the clean EMG and the extracted EMG. Real FES-contaminated EMG was collected from six able bodied volunteers and one stroke patient. The correlation coefficients between the extracted EMG and the wrist torque were analyzed.
The simulation results showed a higher SNR (2.12 to -2.13dB), higher correlation (0.88± 0.08) and lower NRMSE (0.78 to 1.29) than those of the comb filter and EMD-Notch algorithm. The EMG-Torque correlation coefficients were 0.75± 0.07 for monopolar pulses and 0.77± 0.12 for bipolar pulses. For the stroke patient, the algorithm also successfully extracted underlying vEMG from time variant FES noises.
All results showed that SICEEMDAN-LR is capable of extracting EMG during FES with time-variant parameters.
本研究旨在设计一种新方法,用于提取受时变幅度和频率的功能性电刺激(FES)污染的随意肌电图(vEMG)。
采用选择性插值(SI)消除初始尖峰。然后,使用具有自适应噪声的完全集合经验模态分解(CEEMDAN)将插值信号分解为固有模态函数。根据逻辑回归(LR)分类器对每个 IMF 进行窗口滤波,以识别受 FES 污染的 IMF。使用肌电图和刺激响应生成半仿真信号,并采用三个指标验证所提出算法的性能,包括 a)信噪比(SNR)、b)归一化均方根误差(NRMSE)和 c)清洁 EMG 和提取 EMG 之间的互相关系数。从六名健康志愿者和一名中风患者中采集真实的 FES 污染 EMG。分析提取的 EMG 与腕力矩之间的相关系数。
模拟结果显示,与梳状滤波器和 EMD-Notch 算法相比,SNR 更高(2.12 至-2.13dB)、相关性更高(0.88±0.08)、NRMSE 更低(0.78 至 1.29)。单极脉冲的 EMG-Torque 相关系数为 0.75±0.07,双极脉冲的相关系数为 0.77±0.12。对于中风患者,该算法还成功地从时变 FES 噪声中提取了潜在的 vEMG。
所有结果均表明,SICEEMDAN-LR 能够提取具有时变参数的 FES 期间的 EMG。