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Iterative Assessment of Statistically-Oriented and Standard Algorithms for Determining Muscle Onset with Intramuscular Electromyography

机译:肌内肌电图确定肌肉发作的统计和标准算法的迭代评估

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摘要

The onset of muscle activity, as measured by electromyography (EMG), is a commonly applied metric in biomechanics. Intramuscular EMG is often used to examine deep musculature and there are currently no studies examining the effectiveness of algorithms for intramuscular EMG onset. The present study examines standard surface EMG onset algorithms (linear envelope, Teager-Kaiser Energy Operator, and sample entropy) and novel algorithms (time series mean-variance analysis, sequential/batch processing with parametric and nonparametric methods, and Bayesian changepoint analysis). Thirteen male and 5 female subjects had intramuscular EMG collected during isolated biceps brachii and vastus lateralis contractions, resulting in 103 trials. EMG onset was visually determined twice by 3 blinded reviewers. Since the reliability of visual onset was high (ICC(1,1): 0.92), the mean of the 6 visual assessments was contrasted with the algorithmic approaches. Poorly performing algorithms were stepwise eliminated via (1) root mean square error analysis, (2) algorithm failure to identify onset/premature onset, (3) linear regression analysis, and (4) Bland-Altman plots. The top performing algorithms were all based on Bayesian changepoint analysis of rectified EMG and were statistically indistinguishable from visual analysis. Bayesian changepoint analysis has the potential to produce more reliable, accurate, and objective intramuscular EMG onset results than standard methodologies.
机译:通过肌电图(EMG)测量的肌肉活动的发作是生物力学中常用的度量标准。肌内肌电图通常用于检查深部肌肉组织,目前尚无研究检查肌内肌电图发作算法的有效性。本研究研究了标准的表面肌电图发作算法(线性包络,Teager-Kaiser能量算子和样本熵)和新型算法(时间序列均方差分析,采用参数和非参数方法的顺序/批处理以及贝叶斯变化点分析)。 13名男性和5名女性受试者在孤立的肱二头肌肱二头肌和股外侧肌收缩期间收集了肌内肌电图,进行了103次试验。由3位盲审者通过视觉确定两次EMG发作。由于视觉发作的可靠性很高(ICC(1,1):0.92),因此将6次视觉评估的平均值与算法方法进行了对比。通过(1)均方根误差分析,(2)无法识别发作/过早发作,(3)线性回归分析和(4)Bland-Altman图来逐步淘汰效果不佳的算法。表现最佳的算法全部基于整流后的EMG的贝叶斯变化点分析,与视觉分析在统计上没有区别。与标准方法相比,贝叶斯变化点分析有可能产生更可靠,准确和客观的肌内肌电图发作结果。

著录项

  • 来源
    《Journal of Applied Biomechanics》 |2017年第6期|464-468|共5页
  • 作者单位

    US Army Res Lab, Human Res & Engn Directorate, Integrated Capabil Enhancement Branch, Aberdeen Proving Ground, MD 21005 USA;

    US Army Res Lab, Human Res & Engn Directorate, Integrated Capabil Enhancement Branch, Aberdeen Proving Ground, MD 21005 USA;

    US Army Res Lab, Human Res & Engn Directorate, Integrated Capabil Enhancement Branch, Aberdeen Proving Ground, MD 21005 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    EMG; linear envelope; Teager-Kaiser; Bayesian; muscle timing;

    机译:肌电图;线性包络;Teager-Kaiser;贝叶斯;肌肉定时;

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