首页> 外文会议>Biomedical Engineering and Biotechnology (iCBEB), 2012 International Conference on >Support Vector Machine Classification of Parkinson's Disease, Essential Tremor and Healthy Control Subjects Based on Upper Extremity Motion
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Support Vector Machine Classification of Parkinson's Disease, Essential Tremor and Healthy Control Subjects Based on Upper Extremity Motion

机译:基于上肢运动的帕金森病,原发性震颤和健康控制对象的支持向量机分类

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Patients with Parkinson''s disease (PD), a chronic progressive neurodegenerative disorder, can have symptoms similar to essential tremor (ET), a ''benign'' condition, making differential diagnoses sometimes challenging. In this paper we investigate the performance of a support vector machine classifier which may facilitate diagnosing PD and ET patients. Wireless inertial sensors were used to measure angular velocity and acceleration during multi-joint arm motion as well as during rest, postural and action tremor tasks from seven PD, seven ET and seven CO patients. Mean rest tremor was statistically significantly different between the PD and CO groups, while for the ET and CO groups mean postural tremor was statistically significantly different. Two SVMs were developed which operated on features extracted from the tremor acceleration signals. The misclassification rates of the SVMs were 9.5% for the tremor versus non-tremor SVM and 14.3% for the PD versus ET SVM.
机译:帕金森氏病(PD)是一种慢性进行性神经退行性疾病,患者的症状类似于原发性震颤(ET),属于“良性”疾病,因此有时进行鉴别诊断具有挑战性。在本文中,我们研究了支持向量机分类器的性能,该分类器可能有助于诊断PD和ET患者。无线惯性传感器用于测量多关节手臂运动期间以及来自7名PD,7名ET和7名CO患者的休息,姿势和动作震颤任务期间的角速度和加速度。 PD组和CO组之间的平均静息震颤在统计学上有显着差异,而ET和CO组的平均姿势性震颤在统计学上有显着差异。开发了两种支持向量机,它们可从震颤加速度信号中提取特征。对于震颤对非震颤SVM,SVM的错误分类率为9.5%;对于PD与ET SVM,SVM的错误分类率为14.3%。

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