Parkinson's Disease Diagnostics Based on the Analysis of Digital Sentence Writing Test

A. Netšunajev, S. Nõmm, A. Toomela, Kadri Medijainen, P. Taba
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引用次数: 2

Abstract

Analysis of the sentence writing test is conducted in this paper to support diagnostics of the Parkinsons disease. Drawing and writing tests digitization has become a trend where synergy of machine learning techniques on the one side and knowledge base of the neurology and psychiatry on the other side leading sophisticated result in computer aided diagnostics. Such rapid progress has a drawback. In many cases, decisions made by machine learning algorithm are difficult to explain in a language human practitioner familiar with. The method proposed in this paper employs unsupervised learning techniques to segment the sentence into the individual characters. Then, feature engineering process is applied to describe writing of each letter using a set of kinematic and pressure parameters. Following feature selection process applicability of different machine learning classifiers is evaluated. To guarantee that achieved results may be interpreted by human, two major guidelines are established. The first one is to keep dimensionality of the feature set low. The second one is clear physical meaning of the features describing the writing process. Features describing amount and smoothness of the motion observed during the writing alongside with letter size are considered. Resulting algorithm does not take into account any semantic information or language particularities and therefore may be easily adopted to any language based on Latin or Cyrillic alphabets.
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基于数字句子写作测试分析的帕金森病诊断
本文对句子写作测试进行分析,以支持帕金森病的诊断。绘图和写作测试数字化已经成为一种趋势,一方面是机器学习技术的协同作用,另一方面是神经病学和精神病学的知识基础,导致计算机辅助诊断的复杂结果。如此迅速的进步有一个缺点。在许多情况下,机器学习算法做出的决定很难用人类从业者熟悉的语言来解释。本文提出的方法采用无监督学习技术将句子分割成单个字符。然后,使用一组运动学和压力参数,应用特征工程过程来描述每个字母的书写。在特征选择过程中,评估了不同机器学习分类器的适用性。为了保证取得的结果可以被人解释,建立了两个主要的指导方针。第一种方法是保持特征集的低维度。二是描述写作过程特征的明确物理意义。描述在书写过程中观察到的运动的数量和平滑度的特征与字母大小一起被考虑。所得到的算法不考虑任何语义信息或语言的特殊性,因此可以很容易地适用于任何基于拉丁或西里尔字母的语言。
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