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Unsupervised learning for characterization of Arabic online handwriting of Parkinson’s disease patients

机译:无监督学习以表征帕金森氏病患者的阿拉伯文在线手写内容

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In this paper, we propose to characterize the on-line handwriting for the early detection of Parkinson’s disease. Thus,using kinematics, mechanical, and spatial features of handwriting, we are looking for the characterization of Parkinson’sdisease. This paper describes the phase of the data acquisition which is currently carried out with in the Neurologicaldepartment of UHC Hassan II of Fez. Following this paper, we have proposed an approach based on unsupervised learningtechniques for analyzing on-line handwriting of 34 Parkinson’s disease patients and 34 Healthy Controls accordingto quantitative and qualitative features. Based on 230 computed features for each participant, our study has uncoveredthree different types of writers. The results show that the complications of fine motor abilities in Parkinson’s diseasepatients is especially characterized by a significant degradation in handwriting kinematic features.
机译:在本文中,我们建议对在线手写进行表征,以早期发现帕金森氏病。从而,利用手写的运动学,机械和空间特征,我们正在寻找帕金森氏症的特征疾病。本文介绍了目前在Neuroologic中进行的数据采集阶段非斯的UHC哈桑二世大学部。在本文之后,我们提出了一种基于无监督学习的方法34位帕金森病患者和34位健康对照的在线笔迹分析技术具有定量和定性特征。根据每个参与者的230个计算特征,我们的研究已经发现三种不同类型的作家。结果表明,帕金森氏病的精细运动能力并发症患者的特征主要在于手写运动学特征的显着降低。

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