Krabben Thijs, Prange Gerdienke B, Kobus Hermen J, Rietman Johan S, Buurke Jaap H
Roessingh Research and Development, Enschede, the Netherlands.
Department of Biomechanical Engineering, University of Twente, the Netherlands.
Acta Bioeng Biomech. 2016;18(4):135-144.
The primary aim of this study is to investigate the potential benefit of the Teager-Kaiser Energy Operator (TKEO) as data pre-processor, in an autonomous burst detection method to classify electromyographic signals of the (fore)arm and hand. For this purpose, optimal settings of the burst detector, leading to minimal detection errors, need to be known. Additionally, the burst detector is applied to real muscle activity recorded in healthy adults performing reach-to-grasp movements.
The burst detector was based on the Approximated Generalized Likelihood Ratio (AGLR). Simulations with synthesized electromyographic (EMG) traces with known onset and offset times, yielded optimal settings for AGLR parameters "window width" and "threshold value" that minimized detection errors. Next, comparative simulations were done with and without TKEO data pre-processing. Correct working of the burst detector was verified by applying it to real surface EMG signals obtained from arm and hand muscles involved in a submaximal reach-to-grasp task, performed by healthy adults.
Minimal detection errors were found with a window width of 100 ms and a detection threshold of 15. Inclusion of the TKEO contributed significantly to a reduction of detection errors. Application of the autonomous burst detector to real data was feasible.
The burst detector was able to classify muscle activation and create Muscle Onset Offset Profiles (MOOPs) autonomously from real EMG data, which allows objective comparison of MOOPs obtained from movement tasks performed in different conditions or from different populations. The TKEO contributed to improved performance and robustness of the burst detector.
本研究的主要目的是探讨在一种自主突发检测方法中,将蒂杰 - 凯泽能量算子(TKEO)用作数据预处理器,以对(前)臂和手部的肌电信号进行分类的潜在益处。为此,需要知道突发检测器的最佳设置,以尽量减少检测误差。此外,将突发检测器应用于健康成年人在进行抓握动作时记录的真实肌肉活动。
突发检测器基于近似广义似然比(AGLR)。对具有已知起始和结束时间的合成肌电(EMG)轨迹进行模拟,得出了AGLR参数“窗口宽度”和“阈值”的最佳设置,可将检测误差降至最低。接下来,进行了有无TKEO数据预处理的对比模拟。通过将其应用于健康成年人在次最大抓握任务中从手臂和手部肌肉获得的真实表面肌电信号,验证了突发检测器的正常工作。
窗口宽度为100毫秒且检测阈值为15时,检测误差最小。纳入TKEO显著有助于减少检测误差。将自主突发检测器应用于实际数据是可行的。
突发检测器能够从真实肌电数据中自动对肌肉激活进行分类并创建肌肉起始偏移剖面图(MOOPs),这使得能够客观比较在不同条件下执行的运动任务或不同人群获得的MOOPs。TKEO有助于提高突发检测器的性能和鲁棒性。