International Burch University, Faculty of Engineering and Information Technologies, Sarajevo, Bosnia and Herzegovina.
Comput Biol Med. 2012 Aug;42(8):806-15. doi: 10.1016/j.compbiomed.2012.06.004. Epub 2012 Jul 2.
The motor unit action potentials (MUAPs) in an electromyographic (EMG) signal provide a significant source of information for the assessment of neuromuscular disorders. In this work, different types of machine learning methods were used to classify EMG signals and compared in relation to their accuracy in classification of EMG signals. The models automatically classify the EMG signals into normal, neurogenic or myopathic. The best averaged performance over 10 runs of randomized cross-validation is also obtained by different classification models. Some conclusions concerning the impacts of features on the EMG signal classification were obtained through analysis of the classification techniques. The comparative analysis suggests that the fuzzy support vector machines (FSVM) modelling is superior to the other machine learning methods in at least three points: slightly higher recognition rate; insensitivity to overtraining; and consistent outputs demonstrating higher reliability. The combined model with discrete wavelet transform (DWT) and FSVM achieves the better performance for internal cross validation (External cross validation) with the area under the receiver operating characteristic (ROC) curve (AUC) and accuracy equal to 0.996 (0.970) and 97.67% (93.5%), respectively. These results show that the proposed model have the potential to obtain a reliable classification of EMG signals, and to assist the clinicians for making a correct diagnosis of neuromuscular disorders.
肌电图(EMG)信号中的运动单位动作电位(MUAP)为评估神经肌肉疾病提供了重要的信息来源。在这项工作中,使用了不同类型的机器学习方法对 EMG 信号进行分类,并比较了它们在 EMG 信号分类中的准确性。这些模型可以自动将 EMG 信号分为正常、神经源性或肌源性。通过不同分类模型的随机交叉验证的 10 次运行的平均性能也获得了最佳结果。通过对分类技术的分析,得出了关于特征对 EMG 信号分类影响的一些结论。对比分析表明,模糊支持向量机(FSVM)模型在至少三个方面优于其他机器学习方法:略高的识别率、对过拟合的不敏感性以及一致的输出表现出更高的可靠性。与离散小波变换(DWT)和 FSVM 相结合的模型在内部交叉验证(外部交叉验证)中表现出更好的性能,接收器工作特征(ROC)曲线下的面积(AUC)和准确性分别为 0.996(0.970)和 97.67%(93.5%)。这些结果表明,所提出的模型具有对 EMG 信号进行可靠分类的潜力,并有助于临床医生对神经肌肉疾病做出正确的诊断。