Lu Guohua, Brittain John-Stuart, Holland Peter, Yianni John, Green Alexander L, Stein John F, Aziz Tipu Z, Wang Shouyan
Department of Physiology, Anatomy and Genetics, University of Oxford, OX1 3PT, UK.
Neurosci Lett. 2009 Oct 2;462(1):14-9. doi: 10.1016/j.neulet.2009.06.063. Epub 2009 Jun 25.
Surface electromyograms (EMGs) are valuable in the pathophysiological study and clinical treatment for dystonia. These recordings are critically often contaminated by cardiac artefact. Our objective of this study was to evaluate the performance of an adaptive noise cancellation filter in removing electrocardiogram (ECG) interference from surface EMGs recorded from the trapezius muscles of patients with cervical dystonia. Performance of the proposed recursive-least-square adaptive filter was first quantified by coherence and signal-to-noise ratio measures in simulated noisy EMG signals. The influence of parameters such as the signal-to-noise ratio, forgetting factor, filter order and regularization factor were assessed. Fast convergence of the recursive-least-square algorithm enabled the filter to track complex dystonic EMGs and effectively remove ECG noise. This adaptive filter procedure proved a reliable and efficient tool to remove ECG artefact from surface EMGs with mixed and varied patterns of transient, short and long lasting dystonic contractions.
表面肌电图(EMG)在肌张力障碍的病理生理研究和临床治疗中具有重要价值。这些记录常常受到心脏伪迹的严重干扰。本研究的目的是评估自适应噪声消除滤波器在去除颈肌张力障碍患者斜方肌表面肌电图中心电图(ECG)干扰方面的性能。首先通过相干性和信噪比测量对所提出的递归最小二乘自适应滤波器在模拟噪声肌电信号中的性能进行量化。评估了诸如信噪比、遗忘因子、滤波器阶数和正则化因子等参数的影响。递归最小二乘算法的快速收敛使滤波器能够跟踪复杂的肌张力障碍肌电图并有效去除心电图噪声。这种自适应滤波程序被证明是一种可靠且高效的工具,可用于去除具有混合且多样的短暂、短期和长期肌张力障碍性收缩模式的表面肌电图中的心电图伪迹。