Rissanen Saara, Kankaanpää Markku, Tarvainen Mika P, Nuutinen Juho, Tarkka Ina M, Airaksinen Olavi, Karjalainen Pasi A
Department of Physical and Rehabilitation Medicine, Kuopio University Hospital, PO Box 1777, FI-70211 Kuopio, Finland.
Physiol Meas. 2007 Dec;28(12):1507-21. doi: 10.1088/0967-3334/28/12/005. Epub 2007 Oct 31.
A novel approach is presented for the analysis of surface electromyogram (EMG) morphology in Parkinson's disease (PD). The method is based on histogram and crossing rate (CR) analysis of the EMG signal. In the method, histograms and CR values are used as high-dimensional feature vectors. The dimensionality of them is then reduced using the Karhunen-Loève transform (KLT). Finally, the discriminant analysis of feature vectors is performed in low-dimensional eigenspace. Histograms and CR values were chosen for analysis, because Parkinsonian EMG signals typically involve patterns of EMG bursts. Traditional methods of EMG amplitude and spectral analysis are not effective in analyzing impulse-like signals. The method, which was tested with EMG signals measured from 25 patients with PD and 22 healthy controls, was promising for discriminating between these two groups of subjects. The ratio of correct discrimination by augmented KLT was 86% for the control group and 72% for the patient group. On the basis of these results, further studies are suggested in order to evaluate the usability of this method in early stage diagnostics of PD.
本文提出了一种分析帕金森病(PD)患者表面肌电图(EMG)形态的新方法。该方法基于EMG信号的直方图和交叉率(CR)分析。在该方法中,直方图和CR值被用作高维特征向量。然后使用卡尔胡宁-洛伊夫变换(KLT)降低其维度。最后,在低维特征空间中对特征向量进行判别分析。选择直方图和CR值进行分析,是因为帕金森病患者的EMG信号通常包含EMG爆发模式。传统的EMG幅度和频谱分析方法在分析脉冲样信号时效果不佳。该方法通过对25例PD患者和22例健康对照者测量的EMG信号进行测试,有望区分这两组受试者。增强KLT的正确判别率在对照组为86%,在患者组为72%。基于这些结果,建议进一步开展研究,以评估该方法在PD早期诊断中的可用性。