Nitzken Matthew, Bajaj Nihit, Aslan Sevda, Gimel'farb Georgy, El-Baz Ayman, Ovechkin Alexander
BioImaging laboratory, Bioengineering Department, University of Louisville, Louisville, KY 40292, USA.
J Biomed Sci Eng. 2013 Jul 18;6(7B). doi: 10.4236/jbise.2013.67A2001.
Surface Electromyography (EMG) is a standard method used in clinical practice and research to assess motor function in order to help with the diagnosis of neuromuscular pathology in human and animal models. EMG recorded from trunk muscles involved in the activity of breathing can be used as a direct measure of respiratory motor function in patients with spinal cord injury (SCI) or other disorders associated with motor control deficits. However, EMG potentials recorded from these muscles are often contaminated with heart-induced electrocardiographic (ECG) signals. Elimination of these artifacts plays a critical role in the precise measure of the respiratory muscle electrical activity. This study was undertaken to find an optimal approach to eliminate the ECG artifacts from EMG recordings. Conventional global filtering can be used to decrease the ECG-induced artifact. However, this method can alter the EMG signal and changes physiologically relevant information. We hypothesize that, unlike global filtering, localized removal of ECG artifacts will not change the original EMG signals. We develop an approach to remove the ECG artifacts without altering the amplitude and frequency components of the EMG signal by using an externally recorded ECG signal as a mask to locate areas of the ECG spikes within EMG data. These segments containing ECG spikes were decomposed into 128 sub-wavelets by a custom-scaled Morlet Wavelet Transform. The ECG-related sub-wavelets at the ECG spike location were removed and a de-noised EMG signal was reconstructed. Validity of the proposed method was proven using mathematical simulated synthetic signals and EMG obtained from SCI patients. We compare the Root-mean Square Error and the Relative Change in Variance between this method, global, notch and adaptive filters. The results show that the localized wavelet-based filtering has the benefit of not introducing error in the native EMG signal and accurately removing ECG artifacts from EMG signals.
表面肌电图(EMG)是临床实践和研究中用于评估运动功能的标准方法,以帮助诊断人类和动物模型中的神经肌肉病理学。从参与呼吸活动的躯干肌肉记录的肌电图可作为脊髓损伤(SCI)患者或其他与运动控制缺陷相关疾病的呼吸运动功能的直接测量指标。然而,从这些肌肉记录的肌电图电位常常被心脏诱发的心电图(ECG)信号污染。消除这些伪迹在精确测量呼吸肌电活动中起着关键作用。本研究旨在找到一种从肌电图记录中消除心电图伪迹的最佳方法。传统的全局滤波可用于减少心电图诱发的伪迹。然而,这种方法会改变肌电图信号并改变生理相关信息。我们假设,与全局滤波不同,局部去除心电图伪迹不会改变原始肌电图信号。我们开发了一种方法,通过使用外部记录的心电图信号作为掩码来定位肌电图数据中心电图尖峰的区域,从而在不改变肌电图信号幅度和频率成分的情况下去除心电图伪迹。通过自定义缩放的Morlet小波变换,将包含心电图尖峰的这些段分解为128个子小波。去除心电图尖峰位置处与心电图相关的子小波,并重建去噪后的肌电图信号。使用数学模拟合成信号和从SCI患者获得的肌电图证明了所提出方法的有效性。我们比较了该方法与全局滤波器、陷波滤波器和自适应滤波器之间的均方根误差和方差相对变化。结果表明,基于局部小波的滤波具有不引入原始肌电图信号误差并准确从肌电图信号中去除心电图伪迹的优点。