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A method for discrimination of noise and EMG signal regions recorded during rhythmic behaviors

机译:区分有节奏行为中记录的噪声和EMG信号区域的方法

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Analyses of muscular activity during rhythmic behaviors provide critical data for biomechanical studies. Electrical potentials measured from muscles using electromyography (EMG) require discrimination of noise regions as the first step in analysis. An experienced analyst can accurately identify the onset and offset of EMG but this process takes hours to analyze a short (10-15 s) record of rhythmic EMG bursts. Existing computational techniques reduce this time but have limitations. These include a universal threshold for delimiting noise regions (i.e., a single signal value for identifying the EMG signal onset and offset), pre-processing using wide time intervals that dampen sensitivity for EMG signal characteristics, poor performance when a low frequency component (e.g., DC offset) is present, and high computational complexity leading to lack of time efficiency. We present a new statistical method and MATLAB script (EMG-Extractor) that includes an adaptive algorithm to discriminate noise regions from EMG that avoids these limitations and allows for multi-channel datasets to be processed. We evaluate the EMG-Extractor with EMG data on mammalian jaw-adductor muscles during mastication, a rhythmic behavior typified by low amplitude onsets/offsets and complex signal pattern. The EMG-Extractor consistently and accurately distinguishes noise from EMG in a manner similar to that of an experienced analyst. It outputs the raw EMG signal region in a form ready for further analysis. (C) 2016 Elsevier Ltd. All rights reserved.
机译:在节律性行为期间的肌肉活动分析为生物力学研究提供了关键数据。使用肌电图(EMG)从肌肉测得的电势需要区分噪声区域,这是分析的第一步。经验丰富的分析人员可以准确地识别EMG的发作和偏移,但是此过程需要花费数小时来分析短(10-15 s)的节奏性EMG爆发记录。现有的计算技术减少了此时间,但有局限性。其中包括用于界定噪声区域的通用阈值(即,用于识别EMG信号开始和偏移的单个信号值),使用宽广的时间间隔进行预处理(会削弱对EMG信号特性的敏感性),低频分量(例如,低频分量)时的不良性能(直流偏移),并且计算复杂度高,导致缺乏时间效率。我们提出了一种新的统计方法和MATLAB脚本(EMG-Extractor),其中包括一种自适应算法,可从EMG中区分出噪声区域,从而避免了这些限制并允许处理多通道数据集。我们用EMG数据评估EMG提取器在咀嚼过程中的哺乳动物下颌内收肌的肌群,这是一种低振幅发作/偏移和复杂信号模式所代表的节律行为。 EMG提取器始终如一地,准确地将噪声与EMG区别开来,方法类似于经验丰富的分析师。它以准备进一步分析的形式输出原始EMG信号区域。 (C)2016 Elsevier Ltd.保留所有权利。

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