Research Institute MOVE, Faculty of Human Movement Sciences, VU University, Amsterdam, The Netherlands.
J Electromyogr Kinesiol. 2012 Jun;22(3):485-93. doi: 10.1016/j.jelekin.2012.01.001. Epub 2012 Jan 31.
Trunk muscle electromyography (EMG) is often contaminated by the electrocardiogram (ECG), which hampers data analysis and potentially yields misinterpretations. We propose the use of independent component analysis (ICA) for removing ECG contamination and compared it with other procedures previously developed to decontaminate EMG. To mimic realistic contamination while having uncontaminated reference signals, we employed EMG recordings from peripheral muscles with different activation patterns and superimposed distinct ECG signals that were recorded during rest at conventional locations for trunk muscle EMG. ICA decomposition was performed with and without a separately collected ECG signal as part of the data set and contaminated ICA modes representing ECG were identified automatically. Root mean squared relative errors and correlations between the linear envelopes of uncontaminated and contaminated EMG were calculated to assess filtering effects on EMG amplitude. Changes in spectral content were quantified via mean power frequencies. ICA-based filtering largely preserved the EMG's spectral content. Performance on amplitude measures was especially successful when a separate ECG recording was included. That is, the ICA-based filtering can produce excellent results when EMG and ECG are indeed statistically independent and when mode selection is flexibly adjusted to the data set under study.
躯干肌肉肌电图 (EMG) 常受到心电图 (ECG) 的干扰,这会妨碍数据分析并可能导致误解。我们提出使用独立成分分析 (ICA) 来去除 ECG 干扰,并将其与之前开发的其他去除 EMG 干扰的方法进行了比较。为了在具有未受污染的参考信号的情况下模拟真实的污染,我们使用了具有不同激活模式的外周肌肉的 EMG 记录,并叠加了在常规位置记录的处于休息状态时的不同 ECG 信号,这些信号是用于躯干肌肉 EMG 的。在没有单独采集 ECG 信号的情况下和作为数据集一部分采集 ECG 信号的情况下,对 ICA 分解进行了处理,并自动识别代表 ECG 的污染 ICA 模式。计算未受污染和受污染的 EMG 的线性包络之间的均方根相对误差和相关性,以评估对 EMG 幅度的滤波效果。通过平均功率频率量化频谱内容的变化。基于 ICA 的滤波在很大程度上保留了 EMG 的频谱内容。当包括单独的 ECG 记录时,在幅度测量方面的性能尤其成功。也就是说,当 EMG 和 ECG 确实在统计上是独立的,并且模式选择灵活地适应所研究的数据集时,基于 ICA 的滤波可以产生出色的结果。