用于研究运动控制策略和疲劳的肌电图系统

M. Janković, D. Popović
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引用次数: 11

摘要

我们提出了一个多肌图分析系统,该系统解决了肌肉疲劳的检测和中枢神经系统处理它的策略。该系统由肌电放大器、力传感器、A/D转换器、便携式计算机和运行在LabView环境下的软件组成,该软件可以在时间和频率域对肌电信号进行实时和详细的离线处理。我们通过分析在长时间内产生80%的最大力的策略的例子来展示系统的特点。使用力传感器检测肌肉疲劳(力下降到选定阈值以下),并使用肌电图记录来分析肌电图的哪些定量测量与此相关。我们测试了四种肌电测量方法:1)中位数频率,2)短时平均频率,3)尺度图平均频率和4)分形维数。我们表明,该系统能够提供可重复的结果,并可用于电机控制的诊断和基础研究。分析表明,通常使用的中位数频率并不是疲劳的最佳预测器,需要根据肌肉的相对活动与最大活动的比较来选择测量方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An EMG system for studying motor control strategies and fatigue
We present a system for polymyographic analysis which addresses detection of muscle fatigue and strategies assumed by the central nervous system to deal with it. The system consists of EMG amplifiers, force transducers, A/D converter, portable computer and software running in the LabView environment that allows real-time and detailed offline processing of EMG signals in time and frequency domains. We demonstrate the features of the system by using the example of analyzing the strategy to generate 80% percent of the maximum force for prolonged period of time. Force sensor was used to detect muscle fatigue (fall of the force bellow the selected threshold), and EMG recordings were used for the analysis which of the quantitative measures of EMG is correlated with this. We tested the following four methods of EMG measures: 1) median frequency, 2) short-time mean frequency, 3) mean frequency of scalogram and 4) fractal dimension. We show that the system is capable of providing reproducible results and could be used for diagnostics and basic research in motor control. The analysis shows that the median frequency used often is not the best predictor of fatigues, and the measure needs to be selected based on the relative activity of the muscle compared to its maximal activity.
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