Comparative Study of Classification Algorithms for Early Identification of Parkinson’s Disease Based on Baseline Speech Features

Santhosh Kumar C, V. K. Kaliappan, Rajasekaran Thangaraj, Pandiyan P
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Abstract

- In recent years, there is need for early identification of Parkinson’s disease (PD) based on measuring the features that causes disorders in elderly people. Around 80% of Parkinson’s patients show signs of speech-based disorders in the early stages of the disorder. In this paper, early prediction of Parkinson’s disease based on machine learning is compared between different classification algorithms. The proposed comparative study composed of feature extraction, preprocessing, feature selection and three different classification processes. Baseline features and Iterative Feature selection methods were well thought-out for feature selection process. We compare the performance of classification algorithms used for early prediction of Parkinson’s patients with speech disorders. Naïve Bayes, Multilayer Perceptron, Random Forest and J48 Classification algorithms were used for the categorization of Parkinson's patients in the experimental study. Random Forest and Naïve Bayes classification shows better performance from other two classifiers. 94.1176 % accuracy was obtained from the PD dataset with the smaller number of speech features.
基于基线语音特征的帕金森病早期识别分类算法比较研究
-近年来,需要通过测量引起老年人疾病的特征来早期识别帕金森病(PD)。大约80%的帕金森氏症患者在疾病的早期阶段表现出语言障碍的迹象。本文对基于机器学习的帕金森病早期预测进行了不同分类算法之间的比较。所提出的对比研究由特征提取、预处理、特征选择和三种不同的分类过程组成。基线特征和迭代特征选择方法在特征选择过程中得到了很好的考虑。我们比较了用于早期预测帕金森患者语言障碍的分类算法的性能。Naïve实验研究中使用Bayes、Multilayer Perceptron、Random Forest和J48 Classification算法对帕金森患者进行分类。随机森林和Naïve贝叶斯分类器比其他两种分类器表现出更好的性能。在语音特征较少的PD数据集上,准确率达到94.1176 %。
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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