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Modeling nonlinear errors in surface electromyography due to baseline noise: a new methodology.

机译:由于基线噪声而导致的表面肌电图非线性误差建模:一种新方法。

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摘要

The surface electromyographic (EMG) signal is often contaminated by some degree of baseline noise. It is customary for scientists to subtract baseline noise from the measured EMG signal prior to further analyses based on the assumption that baseline noise adds linearly to the observed EMG signal. The stochastic nature of both the baseline and EMG signal, however, may invalidate this assumption. Alternately, "true" EMG signals may be either minimally or nonlinearly affected by baseline noise. This information is particularly relevant at low contraction intensities when signal-to-noise ratios (SNR) may be lowest. Thus, the purpose of this simulation study was to investigate the influence of varying levels of baseline noise (approximately 2-40% maximum EMG amplitude) on mean EMG burst amplitude and to assess the best means to account for signal noise. The simulations indicated baseline noise had minimal effects on mean EMG activity for maximum contractions, but increased nonlinearly with increasing noise levels and decreasing signal amplitudes. Thus, the simple baseline noise subtraction resulted in substantial error when estimating mean activity during low intensity EMG bursts. Conversely, correcting EMG signal as a nonlinear function of both baseline and measured signal amplitude provided highly accurate estimates of EMG amplitude. This novel nonlinear error modeling approach has potential implications for EMG signal processing, particularly when assessing co-activation of antagonist muscles or small amplitude contractions where the SNR can be low.
机译:表面肌电图(EMG)信号经常被某种程度的基线噪声污染。对于科学家来说,习惯上是在假设基线噪声线性增加到观察到的EMG信号的假设基础上,再从分析的EMG信号中减去基线噪声。但是,基线和EMG信号的随机性可能会使该假设无效。或者,“真实” EMG信号可能受到基线噪声的影响最小或非线性。当信噪比(SNR)最低时,此信息在低收缩强度时特别有用。因此,本仿真研究的目的是研究基线噪声变化水平(最大EMG振幅大约2-40%)对平均EMG猝发振幅的影响,并评估解决信号噪声的最佳方法。模拟表明,基线噪声对最大收缩量的平均EMG活动影响最小,但随着噪声水平的增加和信号幅度的减小而非线性增加。因此,当估计低强度EMG爆发期间的平均活动时,简单的基线噪声减法会导致相当大的误差。相反,将EMG信号校正为基线和测得信号幅度的非线性函数,可以提供高度准确的EMG幅度估计值。这种新颖的非线性误差建模方法对EMG信号处理具有潜在的影响,尤其是在评估SNR可能较低的拮抗肌或小幅度收缩的共激活时。

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