单通道表面肌电信号肌肉疲劳预测:使用最小二乘支持向量机的实现

N. S. Ahmad Sharawardi, Y. Choo, S. Chong, A. Muda, O. Goh
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引用次数: 14

摘要

表面肌电图(sEMG)信号是临床康复研究中常用的肌肉疲劳分析方法。基于表面肌电信号的预测结果很有前景,因为表面肌电信号可以很容易地表征肌肉矛盾。然而,当数据采集过程中存在噪声时,预测结果往往会严重恶化。噪声的产生有很多原因,从硬件、软件到程序缺陷。本研究旨在评估使用单通道表面肌电信号的最小二乘支持向量机模型预测肌肉疲劳的性能。从多裂肌(用于腰痛)和桡侧腕屈肌(用于前臂肌肉疲劳)捕获的两组原始肌电信号中提取均方根、中位数频率和平均频率特征。采用所提出的LS-SVM技术分别对两个数据集建立预测规则库。在Matlab环境下进行了实现、测试和验证。使用k近邻和人工神经网络作为基准技术对结果进行比较和分析。LS-SVM技术在分类精度和ROC曲线下面积方面均优于基准测试技术。采用方差分析和Tukey HSD事后检验进一步验证比较结果在准确性和AUC测量上的显著性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Single channel sEMG muscle fatigue prediction: An implementation using least square support vector machine
Surface electromyogram (sEMG) signal is commonly used for muscle fatigue analysis in clinical rehabilitation studies. Prediction results based on sEMG signals are promising because muscle contradiction can be easily characterized using sEMG signals. However, the prediction results usually deteriorate significantly when noise exist during data acquisition. Noise happens due to many factors ranging from hardware, software to procedure flaws. This investigation is aimed to assess the performance of the Least Square SVM model in predicting muscle fatigue using single channel sEMG signal. The root mean square, median frequency, and mean frequency features were extracted from two sets of raw sEMG signals captured at the multifidus (for low back pain) and flexor carpi radialis (for forearm muscle fatigue) muscles. The proposed LS-SVM technique were used to build the prediction rule-base separately for both the datasets. The implementation, testing and verification were performed in Matlab environment. The k-nearest neighbour and artificial neural network were used as the benchmarking techniques in results comparison and analysis. LS-SVM technique is proven good against the benchmarking techniques on classification accuracy and area under ROC curve. The ANOVA and Tukey HSD post hoc test were used to further validate the significant of the comparison results on both accuracy and AUC measurements.
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