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Measurement and Evaluation of Finger Tapping Movements Using Log-linearized Gaussian Mixture Networks

机译:使用对数线性高斯混合网络对手指敲击运动进行测量和评估

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摘要

This paper proposes a method to quantitatively measure and evaluate finger tapping movements for the assessment of motor function using log-linearized Gaussian mixture networks (LLGMNs). First, finger tapping movements are measured using magnetic sensors, and eleven indices are computed for evaluation. After standardizing these indices based on those of normal subjects, they are input to LLGMNs to assess motor function. Then, motor ability is probabilistically discriminated to determine whether it is normal or not using a classifier combined with the output of multiple LLGMNs based on bagging and entropy. This paper reports on evaluation and discrimination experiments performed on finger tapping movements in 33 Parkinson’s disease (PD) patients and 32 normal elderly subjects. The results showed that the patients could be classified correctly in terms of their impairment status with a high degree of accuracy (average rate: 93.1 ± 3.69%) using 12 LLGMNs, which was about 5% higher than the results obtained using a single LLGMN.
机译:本文提出了一种使用对数线性高斯混合网络(LLGMN)定量测量和评估手指敲击运动以评估运动功能的方法。首先,使用磁传感器测量手指的敲击运动,并计算十一个指标以进行评估。在根据正常受试者的指标对这些指标进行标准化后,将它们输入到LLGMN中以评估运动功能。然后,基于分类和熵,使用分类器结合多个LLGMN的输出,概率地区分运动能力以确定其是否正常。本文报告了对33名帕金森氏病(PD)患者和32名正常老年人的敲击动作进行的评估和辨别实验。结果表明,使用12个LLGMN,可以以较高的准确度(平均率:93.1±3.69%)对患者进行正确的损伤分类,这比使用单个LLGMN获得的结果高约5%。

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