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Sentence Writing Test for Parkinson Disease Modeling: Comparing Predictive Ability of Classifiers

机译:帕金森病建模的句子写作测试:比较分类器的预测能力

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The present paper is devoted to the modeling of the sentence writing test to support diagnostics of Parkinson's disease. Combination of the digitalized fine motor tests and machine learning based analysis frequently lead the results of very high accuracy. Nevertheless, in many cases, such results do not allow proper interpretation and are not fully understood by a human practitioner. One of the distinctive properties of the proposed approach is that the set of features consists of parameters that may be easily interpreted. Features that represent size, kinematics, duration and fluency of writing are calculated for each individual letter. Furthermore, proposed approach is language agnostic and may be used for any language based either on Latin or Cyrillic alphabets. Finally, the feature set describing the test results contains the parameters showing the amount and smoothness of the fine motions which in turn allows to precisely pin down rigidity and unpurposeful motions.
机译:本文致力于句子写作测试的建模,以支持帕金森氏病的诊断。数字化精细电机测试与基于机器学习的分析相结合,经常会导致非常高精度的结果。然而,在许多情况下,这样的结果不能适当地解释,并且从业者也不能完全理解。所提出的方法的独特特性之一是,特征集由可以容易解释的参数组成。计算每个字母的代表大小,运动学,持续时间和流利程度的特征。此外,所提出的方法与语言无关,并且可以用于基于拉丁字母或西里尔字母的任何语言。最后,描述测试结果的特征集包含一些参数,这些参数显示了精细运动的数量和平滑度,从而可以精确地确定刚度和无用的运动。

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