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A Model-Free Computer-Assisted Handwriting Analysis Exploiting Optimal Topology ANNs on Biometric Signals in Parkinson's Disease Research

机译:一种无模型的计算机辅助手写分析利用帕金森病研究中的生物识别信号的最佳拓扑ANN

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In this paper, we propose a novel model-free technique for differentiating both Parkinson's Disease (PD) patients from healthy subjects and mild PD patients from moderate ones by using a handwriting analysis tool. The tool is based on the analysis of biometric signals and the application of Artificial Neural Network (ANN)-based classifier. Experimental tests have been carried on with both healthy and PD subjects to identify the most representative features and to assess the accuracy and repeatability of classification performances achieved through optimal topology ANNs. Finally, the obtained results are reported and discussed to infer some important properties on classification approaches and the role of muscular activities on the handwriting analysis applied to neurodegenerative disease research.
机译:在本文中,我们提出了一种新的无模型技术,用于将来自健康受试者和轻度PD患者的患者区分了帕金森病(Pd)患者通过使用手写分析工具。该工具基于生物识别信号的分析和人工神经网络(ANN)的应用程序。对健康和PD受试者进行了实验测试,以确定最具代表性的特征,并评估通过最佳拓扑ANN实现的分类性能的准确性和可重复性。最后,据报道并讨论了所得结果,以推断出对分类方法的一些重要性质以及肌肉活动对应用于神经变性疾病研究的笔迹分析的作用。

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