International Burch University, Faculty of Engineering and Information Technologies, Francuske Revolucije bb. Ilidza, Sarajevo, 71000, Bosnia and Herzegovina.
Comput Biol Med. 2013 Jun;43(5):576-86. doi: 10.1016/j.compbiomed.2013.01.020. Epub 2013 Feb 27.
Support vector machine (SVM) is an extensively used machine learning method with many biomedical signal classification applications. In this study, a novel PSO-SVM model has been proposed that hybridized the particle swarm optimization (PSO) and SVM to improve the EMG signal classification accuracy. This optimization mechanism involves kernel parameter setting in the SVM training procedure, which significantly influences the classification accuracy. The experiments were conducted on the basis of EMG signal to classify into normal, neurogenic or myopathic. In the proposed method the EMG signals were decomposed into the frequency sub-bands using discrete wavelet transform (DWT) and a set of statistical features were extracted from these sub-bands to represent the distribution of wavelet coefficients. The obtained results obviously validate the superiority of the SVM method compared to conventional machine learning methods, and suggest that further significant enhancements in terms of classification accuracy can be achieved by the proposed PSO-SVM classification system. The PSO-SVM yielded an overall accuracy of 97.41% on 1200 EMG signals selected from 27 subject records against 96.75%, 95.17% and 94.08% for the SVM, the k-NN and the RBF classifiers, respectively. PSO-SVM is developed as an efficient tool so that various SVMs can be used conveniently as the core of PSO-SVM for diagnosis of neuromuscular disorders.
支持向量机(SVM)是一种广泛使用的机器学习方法,在许多生物医学信号分类应用中都有应用。在本研究中,提出了一种新的 PSO-SVM 模型,该模型将粒子群优化(PSO)和 SVM 进行混合,以提高肌电信号分类的准确性。这种优化机制涉及 SVM 训练过程中的核参数设置,这对分类准确性有很大影响。实验是基于肌电信号进行的,以将其分类为正常、神经源性或肌源性。在提出的方法中,使用离散小波变换(DWT)将肌电信号分解为频带子带,并从这些子带中提取一组统计特征来表示小波系数的分布。获得的结果明显验证了 SVM 方法相对于传统机器学习方法的优越性,并表明通过提出的 PSO-SVM 分类系统可以进一步显著提高分类准确性。PSO-SVM 在从 27 个记录中选择的 1200 个肌电信号上的总体准确率为 97.41%,而 SVM、k-NN 和 RBF 分类器的准确率分别为 96.75%、95.17%和 94.08%。PSO-SVM 被开发为一种有效的工具,以便可以方便地将各种 SVM 用作 PSO-SVM 的核心,用于诊断神经肌肉疾病。