Abbink J H, van der Bilt A, van der Glas H W
Department of Oral-Maxillofacial Surgery, Prosthodontics and Special Dental Care, Faculty of Medicine, Utrecht University, The Netherlands.
J Oral Rehabil. 1998 May;25(5):365-9. doi: 10.1046/j.1365-2842.1998.00242.x.
A method of automated detection of onset and termination of rhythmic muscle activity in electromyograms (EMGs) is presented. A threshold level in the EMG is computed, such that amplitudes in the EMG signal exceeding this level indicate muscle activity. The threshold level is determined using a statistical criterion based on the amplitude distribution of the entire EMG signal. The working of the method is illustrated with EMG signals recorded from chewing muscles. EMG signals with a good as well as a worse signal-to-noise ratio are presented. The method can be used for any EMG signal containing cyclic bursts of activity and thus may be applied in studies on rhythmic movements, such as chewing, walking and breathing. An automated method of EMG burst detection has the advantage that large amounts of EMG data can be easily and objectively processed.
本文提出了一种自动检测肌电图(EMG)中有节奏肌肉活动起始和终止的方法。计算EMG中的阈值水平,使得EMG信号中超过该水平的幅度表明肌肉活动。基于整个EMG信号的幅度分布,使用统计标准确定阈值水平。用从咀嚼肌记录的EMG信号说明了该方法的工作原理。展示了具有良好和较差信噪比的EMG信号。该方法可用于任何包含周期性活动爆发的EMG信号,因此可应用于诸如咀嚼、行走和呼吸等有节奏运动的研究。EMG爆发检测的自动化方法具有可以轻松、客观地处理大量EMG数据的优点。