Rissanen Saara M, Kankaanpää Markku, Tarvainen Mika P, Meigal Alexander Yu, Nuutinen Juho, Tarkka Ina M, Airaksinen Olavi, Karjalainen Pasi A
Department of Physics, University of Kuopio, FI-70211 Kuopio, Finland.
IEEE Trans Biomed Eng. 2009 Sep;56(9):2280-8. doi: 10.1109/TBME.2009.2023795. Epub 2009 Jun 2.
A novel method for discrimination of dynamic muscle contractions between patients with Parkinson's disease (PD) and healthy controls on the basis of surface electromyography (EMG) and acceleration measurements is presented. In this method, dynamic EMG and acceleration measurements are analyzed using nonlinear methods and wavelets. Ten parameters capturing Parkinson's disease (PD) characteristic features in the measured signals are extracted. Each parameter is computed as time-varying, and for elbow flexion and extension movements separately. For discrimination between subjects, the dimensionality of the feature vectors formed from these parameters is reduced using a principal component approach. The cluster analysis of the low-dimensional feature vectors is then performed for flexion and extension movements separately. The EMG and acceleration data measured from 49 patients with PD and 59 healthy controls are used for analysis. According to clustering results, the method could discriminate 80 % of patient extension movements from 87 % of control extension movements, and 73 % of patient flexion movements from 82 % of control flexion movements. The results show that dynamic EMG and acceleration measurements can be informative for assessing neuromuscular dysfunction in PD, and furthermore, they may help in the objective clinical assessment of the disease.
提出了一种基于表面肌电图(EMG)和加速度测量来区分帕金森病(PD)患者与健康对照者动态肌肉收缩的新方法。在该方法中,使用非线性方法和小波分析动态EMG和加速度测量数据。提取测量信号中捕获帕金森病(PD)特征的十个参数。每个参数作为随时间变化的量进行计算,并且分别针对肘部屈伸运动进行计算。为了区分受试者,使用主成分方法降低由这些参数形成的特征向量的维度。然后分别对屈伸运动进行低维特征向量的聚类分析。从49例PD患者和59例健康对照者测量的EMG和加速度数据用于分析。根据聚类结果,该方法可以区分80%的患者伸展运动与87%的对照伸展运动,以及73%的患者屈曲运动与82%的对照屈曲运动。结果表明,动态EMG和加速度测量对于评估PD中的神经肌肉功能障碍具有参考价值,此外,它们可能有助于对该疾病进行客观的临床评估。