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首页> 外文期刊>Medical and Biological Engineering and Computing >Surface EMG and acceleration signals in Parkinson’s disease: feature extraction and cluster analysis
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Surface EMG and acceleration signals in Parkinson’s disease: feature extraction and cluster analysis

机译:帕金森氏病的表面肌电图和加速度信号:特征提取和聚类分析

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摘要

We present an advanced method for feature extraction and cluster analysis of surface electromyograms (EMG) and acceleration signals in Parkinson’s disease (PD). In the method, 12 different EMG and acceleration signal features are extracted and used to form high-dimensional feature vectors. The dimensionality of these vectors is then reduced by using the principal component approach. Finally, the cluster analysis of feature vectors is performed in a low-dimensional eigenspace. The method was tested with EMG and acceleration data of 42 patients with PD and 59 healthy controls. The obtained discrimination between patients and controls was promising. According to clustering results, one cluster contained 90% of the healthy controls and two other clusters 76% of the patients. Seven patients with severe motor dysfunctions were distinguished in one of the patient clusters. In the future, the clinical value of the method should be further evaluated.
机译:我们为帕金森病(PD)中的表面肌电图(EMG)和加速度信号的特征提取和聚类分析提供了一种先进的方法。在该方法中,提取了12个不同的EMG和加速度信号特征,并用于形成高维特征向量。然后通过使用主成分方法来减小这些向量的维数。最后,在低维特征空间中进行特征向量的聚类分析。该方法通过EMG和42例PD患者和59例健康对照者的加速数据进行了测试。在患者和对照之间获得的区分是有希望的。根据聚类结果,一个聚类包含90%的健康对照,另外两个聚类包含76%的患者。在一组患者中区分出了7名严重运动功能障碍的患者。将来,该方法的临床价值应进一步评估。

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