Valipour Fatemeh, Esteki Ali
MSc, Department of Biomedical Engineering and Medical Physics, Faculty of Medicine, Shahid Beheshti University of Medical Sciences, Tehran, Iran.
PhD, Department of Biomedical Engineering and Medical Physics, Faculty of Medicine, Shahid Beheshti University of Medical Sciences, Tehran, Iran.
J Biomed Phys Eng. 2022 Feb 1;12(1):21-30. doi: 10.31661/jbpe.v0i0.1028. eCollection 2022 Feb.
Hand tremor is one of the consequences of MS disease degrading quality of patient's life. Recently DBS is used as a prominent treatment to reduce this effect. Evaluation of this approach has significant importance because of the prevalence rate of disease.
The purpose of this study was the nonlinear analysis of tremor signal in order to evaluate the quantitative effect of DBS on reducing MS tremor and differentiating between them using pattern recognition algorithms.
In this analytical study, nine features were extracted from the tremor signal. Through statistical analysis, the significance level of each feature was examined. Finally, tremor signals were categorized by SVM, weighted KNN and NN classifiers. The performance of methods was compared with an ROC graph.
The results have demonstrated that dominant frequency, maximum amplitude and energy of the first IMF, deviation of the direct path, sample entropy and fuzzy entropy have the potential to create a significant difference between the tremor signals. The classification accuracy rate of tremor signals in three groups for Weighted KNN, NN and SVM with Gaussian and Quadratic kernels resulted in 95.1%, 93.2%, 91.3% and 88.3%, respectively.
Generally, nonlinear and nonstationary analyses have a high potential for a quantitative and objective measure of MS tremor. Weighted KNN has shown the best performance of classification with the accuracy of more than 95%. It has been indicated that DBS has a positive influence on reducing the MS tremor. Therefore, DBS can be used in the objective improvement of tremor in MS patients.
手部震颤是多发性硬化症导致患者生活质量下降的后果之一。近年来,深部脑刺激(DBS)被用作减轻这种影响的一种重要治疗方法。鉴于该疾病的患病率,对这种治疗方法进行评估具有重要意义。
本研究旨在对震颤信号进行非线性分析,以评估DBS减轻多发性硬化症震颤的定量效果,并使用模式识别算法对两者进行区分。
在这项分析研究中,从震颤信号中提取了九个特征。通过统计分析,检验了每个特征的显著性水平。最后,使用支持向量机(SVM)、加权K近邻(KNN)和神经网络(NN)分类器对震颤信号进行分类。通过ROC曲线比较了各方法的性能。
结果表明,优势频率、第一固有模态函数(IMF)的最大振幅和能量、直接路径偏差、样本熵和模糊熵有可能在震颤信号之间产生显著差异。加权KNN、NN以及具有高斯核和二次核的SVM对三组震颤信号的分类准确率分别为95.1%、93.2%、91.3%和88.3%。
一般来说,非线性和非平稳分析在定量和客观测量多发性硬化症震颤方面具有很大潜力。加权KNN表现出最佳的分类性能,准确率超过95%。研究表明,DBS对减轻多发性硬化症震颤有积极影响。因此,DBS可用于客观改善多发性硬化症患者的震颤症状。