Fractional Derivatives of Online Handwriting: A New Approach of Parkinsonic Dysgraphia Analysis

Jan Mucha, Vojtech Zvoncak, Z. Galaz, M. Faúndez-Zanuy, J. Mekyska, Tomas Kiska, Z. Smékal, L. Brabenec, I. Rektorová, K. L. D. Ipiña
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引用次数: 15

Abstract

Parkinson's disease (PD) is the second most frequent neurodegenerative disorder. One typical hallmark of PD is disruption in execution of practised skills such as handwriting. This paper introduces a new methodology of kinematic features calculation based on fractional derivatives applied on PD handwriting. Discrimination power of basic kinematic features (velocity, acceleration, jerk) was evaluated by classification analysis (using support vector machines and random forests). For this purpose, 30 PD patients and 36 healthy controls were enrolled. In comparison with results reported in other works, the newly designed features based on fractional derivatives increased classification accuracy by 8 % in univariate analysis and by 10 % when employing the multivariate one. This study reveals an impact of fractional derivatives based features in analysis of Parkinsonic dysgraphia.
在线书写的分数阶导数:帕金森症书写困难分析的新方法
帕金森病(PD)是第二常见的神经退行性疾病。PD的一个典型特征是练习技能(如书写)的执行中断。介绍了一种基于分数阶导数的PD手写体运动特征计算新方法。通过分类分析(使用支持向量机和随机森林)评估了基本运动特征(速度、加速度、加速度)的识别能力。为此,我们招募了30名PD患者和36名健康对照者。与其他工作报告的结果相比,新设计的基于分数导数的特征在单变量分析中提高了8%的分类精度,在采用多变量分析时提高了10%。本研究揭示了基于分数阶导数的特征在帕金森障碍性书写障碍分析中的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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