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经验模态分解结合陷波滤波在功能性电刺激期间表面肌电图解读中的应用

Application of Empirical Mode Decomposition Combined With Notch Filtering for Interpretation of Surface Electromyograms During Functional Electrical Stimulation.

作者信息

Pilkar Rakesh, Yarossi Mathew, Ramanujam Arvind, Rajagopalan Venkateswaran, Bayram Mehmed Bugrahan, Mitchell Meghan, Canton Stephen, Forrest Gail

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2017 Aug;25(8):1268-1277. doi: 10.1109/TNSRE.2016.2624763. Epub 2016 Nov 3.

Abstract

The goal of this paper is to demonstrate a novel approach that combines Empirical Mode Decomposition (EMD) with Notch filtering to remove the electrical stimulation (ES) artifact from surface electromyogram (EMG) data for interpretation of muscle responses during functional electrical stimulation (FES) experiments. FES was applied to the rectus femoris (RF) muscle unilaterally of six able bodied (AB) and one individual with spinal cord injury (SCI). Each trial consisted of three repetitions of ES. We hypothesized that the EMD algorithm provides a suitable platform for decomposing the EMG signal into physically meaningful intrinsic mode functions (IMFs) which can be further used to isolate electrical stimulation (ES) artifact. A basic EMD algorithm was used to decompose the EMG signals collected during FES into IMFs for each repetition separately. IMFs most contaminated by ES were identified based on the standard deviation (SD) of each IMF. Each artifact IMF was Notch filtered to filter ES harmonics and added to remaining IMFs containing pure EMG data to get a version of a filtered EMG signal. Of all such versions of filtered signals generated from each artifact IMF, the one with maximum signal to noise ratio (SNR) was chosen as the final output. The validity of the filtered signal was assessed by quantitative metrics, 1) root mean squared error (RMSE) and signal to noise (SNR) ratio values obtained by comparing a clean EMG and EMD-Notch filtered signal from the combination of simulated ES and clean EMG and, 2) using EMG-force correlation analysis on the data collected from AB individuals. Finally, the potential applicability of this algorithm on a neurologically impaired population was shown by applying the algorithm on EMG data collected from an individual with SCI. EMD combined with Notch filtering successfully extracted the EMG signal buried under ES artifact. Filtering performance was validated by smaller RMSE values and greater SNR post filtering. The amplitude values of the filtered EMG signal were seen to be consistent for three repetitions of ES and there was no significant difference among the repetition for all subjects. For the individual with a SCI the algorithm was shown to successfully isolate the underlying bursts of muscle activations during FES. The data driven nature of EMD algorithm and its ability to act as a filter bank at different bandwidths make this method extremely suitable for dissecting ES induced EMG into IMFs. Such IMFs clearly show the presence of ES artifact at different intensities as well as pure artifact free EMG. This allows the application of Notch filters to IMFs containing ES artifact to further isolate the EMG. As a result of such stepwise approach, the extraction of EMG is achieved with minimal data loss. This study provides a unique approach to dissect and interpret the EMG signal during FES applications.

摘要

本文的目的是展示一种将经验模态分解(EMD)与陷波滤波相结合的新方法,用于从表面肌电图(EMG)数据中去除电刺激(ES)伪迹,以解读功能性电刺激(FES)实验期间的肌肉反应。FES被单侧施加于六名健全个体(AB)和一名脊髓损伤(SCI)个体的股直肌(RF)。每个试验包含三次ES重复。我们假设EMD算法为将EMG信号分解为具有物理意义的本征模态函数(IMF)提供了一个合适的平台,这些IMF可进一步用于分离电刺激(ES)伪迹。使用基本的EMD算法将FES期间收集的EMG信号分别分解为每次重复的IMF。基于每个IMF的标准差(SD)识别受ES污染最严重的IMF。对每个伪迹IMF进行陷波滤波以滤除ES谐波,并将其添加到包含纯EMG数据的其余IMF中,以获得滤波后的EMG信号版本。在从每个伪迹IMF生成的所有此类滤波信号版本中,选择信噪比(SNR)最大的那个作为最终输出。通过定量指标评估滤波信号的有效性:1)通过比较模拟ES和干净EMG组合得到的干净EMG与EMD - 陷波滤波信号获得的均方根误差(RMSE)和信噪比(SNR)值;2)对从AB个体收集的数据进行EMG - 力相关性分析。最后,通过将该算法应用于从一名SCI个体收集的EMG数据,展示了该算法在神经功能受损人群中的潜在适用性。EMD与陷波滤波相结合成功提取了埋在ES伪迹下的EMG信号。滤波性能通过滤波后较小的RMSE值和较大的SNR得到验证。滤波后的EMG信号的幅度值在ES的三次重复中保持一致,并且所有受试者的重复之间没有显著差异。对于SCI个体,该算法被证明在FES期间成功分离了潜在的肌肉激活爆发。EMD算法的数据驱动性质及其在不同带宽下充当滤波器组的能力使得该方法非常适合将ES诱发的EMG分解为IMF。此类IMF清楚地显示了不同强度下ES伪迹的存在以及无伪迹的纯EMG。这允许对包含ES伪迹的IMF应用陷波滤波器以进一步分离EMG。通过这种逐步方法,以最小的数据损失实现了EMG的提取。本研究为FES应用期间剖析和解读EMG信号提供了一种独特的方法。

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