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Parkinson disease classification using one against all based data sampling with the acoustic features from the speech signals

机译:帕金森病用一个对阵所有基于数据采样的帕金森病分类,具有来自语音信号的声学特征

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Parkinson's disease (PD) is a long-term degenerative disease that primarily affects the motor system of the central nervous system. This disease is difficult to diagnose and is one of the common diseases in the public. In this paper, we have proposed a novel data sampling method for the classification of Parkinson disease based on the acoustic features from the speech signals. In the proposed data sampling method, the one against all (OGA) has been used to divide the dataset into five equal parts. With applying the OGA to the PD dataset having two classes (healthy and Parkinson disease), the minority and majority classes have been obtained. First of all, for healthy class in the dataset (first case), five equal partitions have been composed and then for PD class in the dataset (second case), five equal partitions have been composed. To classify the these all data partitions, we have used three different classifiers including the weighted k-NN (nearest neighbor), Logistic Regression (LR), and support vector machine with medium Gaussian kernel function. In order to evaluate the performance of the proposed hybrid models (the combination of classifiers and OGA based data sampling), the classification accuracy, the confusion matrix, and area under the Receiver Operating Characteristic (ROC) curve (AUC) have been used. While the LR, SVM with Gaussian, and weighted k-NN classifiers achieved the classification accuracies of 77.50%, 83.80%, and 82.10% in the classification of PD with the acoustic features, the combinations of classifiers and OGA based data sampling (first case) obtained the 79.04%, 87.36%, and 88.48% using the LR, SVM with Gaussian, and weighted k-NN classifiers, respectively. In the second case, the obtained classification accuracies are the 84.30%, 88.76%, and 89.46% using the LR, SVM with Gaussian, and weighted k-NN classifiers with the OGA based data sampling, respectively. The achieved results have shown that the proposed the one against all (OGA) based data sampling could be used in the combination of classifier algorithms as the data preprocessing method in the classification of Parkinson's disease with acoustic features.
机译:帕金森病(PD)是一种长期退行性疾病,主要影响中枢神经系统的电机系统。这种疾病难以诊断,是公众的常见疾病之一。在本文中,我们提出了一种基于来自语音信号的声学特征的帕金森病分类的新型数据采样方法。在所提出的数据采样方法中,针对所有(OGA)的一个用于将数据集分为五个相等的部分。通过将OGA应用于具有两类(健康和帕金森病)的PD数据集,已经获得了少数群体和多数课程。首先,对于DataSet中的健康类(第一个案例),已经组成了五个等分区,然后在数据集中的PD类(第二种情况),已组成五个等分区。为了对这些所有数据分区进行分类,我们使用了三种不同的分类器,包括加权k-nn(最近邻居),逻辑回归(LR),以及带有媒体高斯内核功能的支持向量机。为了评估所提出的混合模型的性能(分类器和基于OGA的数据采样的组合),已经使用了接收器操作特征(ROC)曲线(AUC)下的分类精度,混淆矩阵和面积。虽然LR,具有高斯和加权K-NN分类器的SVM在PD分类中实现了77.50%,83.80%和82.10%的分类精度,具有声学特征,分类器和oga基于数据采样的组合(第一次案例)使用LR,SVM与高斯和加权K-NN分类器获得79.04%,87.36%和88.48%。在第二种情况下,使用LR,SVM与高斯和加权K-NN分类器分别具有84.30%,88.76%和89.46%,分别具有基于OGA的数据采样的LR,SVM和加权K-NN分类器。所达到的结果表明,提出的基于(OGA)的数据采样的提出可以用于分类器算法的组合作为具有声学特征的帕金森病的分类中的数据预处理方法。

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