Exploration of Various Fractional Order Derivatives in Parkinson's Disease Dysgraphia Analysis
Jan Mucha, Zoltan Galaz, Jiri Mekyska, Marcos Faundez-Zanuy, Vojtech, Zvoncak, Zdenek Smekal, Lubos Brabenec, Irena Rektorova

TL;DR
This study investigates the use of various fractional order derivatives to analyze handwriting abnormalities in Parkinson's disease, demonstrating that Caputo's derivative provides superior features for classifying disease severity.
Contribution
It explores and compares different fractional derivatives in PD dysgraphia analysis, highlighting Caputo's approach as most effective for clinical feature extraction and classification.
Findings
Caputo's fractional derivative features outperform others.
Significant correlation between velocity features and clinical state.
Classification accuracy reaches nearly 80% with Caputo's features.
Abstract
Parkinson's disease (PD) is a common neurodegenerative disorder with a prevalence rate estimated to 2.0% for people aged over 65 years. Cardinal motor symptoms of PD such as rigidity and bradykinesia affect the muscles involved in the handwriting process resulting in handwriting abnormalities called PD dysgraphia. Nowadays, online handwritten signal (signal with temporal information) acquired by the digitizing tablets is the most advanced approach of graphomotor difficulties analysis. Although the basic kinematic features were proved to effectively quantify the symptoms of PD dysgraphia, a recent research identified that the theory of fractional calculus can be used to improve the graphomotor difficulties analysis. Therefore, in this study, we follow up on our previous research, and we aim to explore the utilization of various approaches of fractional order derivative (FD) in the…
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