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帕金森病个性化康复中基于无监督学习的精细运动评估

Fine Motor Assessment With Unsupervised Learning For Personalized Rehabilitation in Parkinson Disease.

作者信息

Rovini E, Fiorini L, Esposito D, Maremmani C, Cavallo F

出版信息

IEEE Int Conf Rehabil Robot. 2019 Jun;2019:1167-1172. doi: 10.1109/ICORR.2019.8779543.

Abstract

Parkinson disease (PD) is a common neurodegenerative disorders characterized by motor and non-motor impairments. Since the quality of life of PD patients becomes poor while pathology develops, it is imperative to improve the identification of personalized rehabilitation and treatments approaches based on the level of the neurodegeneration process. Objective and precise assessment of the severity of the pathology is crucial to identify the most appropriate treatments. In this context, this paper proposes a wearable system able to measure the motor performance of PD subjects. Two inertial devices were used to capture the motion of the lower and upper limbs respectively, while performing six motor tasks. Forty-one kinematic features were extracted from the inertial signals to describe the performance of each subjects. Three unsupervised learning algorithms (k-Means, Self-organizing maps (SOM) and hierarchical clustering) were applied with a blind approach to group the motor performance. The results show that SOM was the best classifier since it reached accuracy equal to 0.950 to group the instances in two classes (mild vs advanced), and 0.817 considering three classes (mild vs moderate vs severe). Therefore, this system enabled objective assessment of the PD severity through motion analysis, allowing the evaluation of residual motor capabilities and fostering personalized paths for PD rehabilitation and assistance.

摘要

帕金森病(PD)是一种常见的神经退行性疾病,其特征为运动和非运动功能障碍。由于帕金森病患者的生活质量会随着病情发展而变差,因此必须根据神经退行性变过程的程度,改进个性化康复和治疗方法的识别。对病情严重程度进行客观、精确的评估对于确定最合适的治疗方法至关重要。在此背景下,本文提出了一种能够测量帕金森病患者运动表现的可穿戴系统。使用两个惯性设备分别捕捉下肢和上肢的运动,同时执行六项运动任务。从惯性信号中提取了41个运动学特征来描述每个受试者的表现。应用三种无监督学习算法(k均值、自组织映射(SOM)和层次聚类),采用盲法对运动表现进行分组。结果表明,SOM是最佳分类器,因为在将实例分为两类(轻度与重度)时,其准确率达到0.950,在考虑三类(轻度与中度与重度)时准确率为0.817。因此,该系统能够通过运动分析对帕金森病的严重程度进行客观评估,从而评估残余运动能力,并为帕金森病康复和辅助提供个性化路径。

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