Parkinson's disease patients classification based on the speech signals

M. Vadovský, Ján Paralič
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引用次数: 24

Abstract

Parkinson's disease is the second most frequent neurodegenerative disorder after Alzheimer's disease. There are numerous symptoms among the population suffering from the disease including tremor, slowed movement, impaired posture and balance, and rigid muscles, however dysphonia — changes in speech and articulation — is the most significant precursor. This is the reason why the article is focused on patients classification based on their speech signals. Algorithms C4.5, C5.0, RandomForest and CART were used to generate the decision trees in Rstudio interface. In addition, cut-off values of individual attributes were applied in order to classify the patients. The dataset in the article consists of 40 individuals' records, half of which were affected by Parkinson's disease. Each individual's coverage was represented by several records such as permanent vowels pronunciation, certain words, numbers and sentences. The objective was to determine the most accurate classification model (decision tree) using the individual types of speech signals. Cross-validation method was used for evaluation of models. The highest average model accuracy of 66.5% was obtained for data taken when individuals pronounced the numbers.
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帕金森氏症患者的分类基于语音信号
帕金森病是仅次于阿尔茨海默病的第二常见的神经退行性疾病。患有这种疾病的人群有许多症状,包括震颤、运动迟缓、姿势和平衡受损以及肌肉僵硬,然而言语和发音障碍是最重要的前兆。这也是本文重点研究基于语音信号的患者分类的原因。在Rstudio界面中使用C4.5、C5.0、RandomForest和CART算法生成决策树。此外,采用个体属性的截止值对患者进行分类。文章中的数据集由40个人的记录组成,其中一半受到帕金森病的影响。每个人的覆盖范围由几个记录表示,如固定元音发音,某些单词,数字和句子。目标是利用语音信号的各个类型确定最准确的分类模型(决策树)。采用交叉验证法对模型进行评价。当个人读出数字时,获得了最高的平均模型准确率66.5%。
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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