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Performance of machine learning methods in diagnosing Parkinson’s disease based on dysphonia measures

机译:机器学习方法在基于声s测量方法诊断帕金森氏病中的性能

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摘要

Parkinson’s disease (PD) is a widespread degenerative syndrome that affects the nervous system. Its early appearing symptoms include tremor, rigidity, and vocal impairment (dysphonia). Consequently, speech indicators are important in the identification of PD based on dysphonic signs. In this regard, computer-aided-diagnosis systems based on machine learning can be useful in assisting clinicians in identifying PD patients. In this work, we evaluate the performance of machine learning based techniques for PD diagnosis based on dysphonia symptoms. Several machine learning techniques were considered and trained with a set of twenty-two voice disorder measurements to classify healthy and PD patients. These machine learning methods included linear discriminant analysis (LDA), k nearest-neighbors (k-NN), naïve Bayes (NB), regression trees (RT), radial basis function neural networks (RBFNN), support vector machine (SVM), and Mahalanobis distance classifier. We evaluated the performance of these methods by means of a tenfold cross validation protocol. Experimental results show that the SVM classifier achieved higher average performance than all other classifiers in terms of overall accuracy, G-mean, and area under the curve of the receiver operating characteristic plot. The SVM classifier achieved higher performance measures than the majority of the other classifiers also in terms of sensitivity, specificity, and F-measure statistics. The LDA, k-NN and RT achieved the highest average precision. The RBFNN method yielded the highest F-measure.; however, it performed poorly in terms of other performance metrics. Finally, t tests were performed to evaluate statistical significance of the results, confirming that the SVM outperformed most of the other classifiers on the majority of performance measures. SVM is a promising method for identifying PD patients based on classification of dysphonia measurements.
机译:帕金森氏病(PD)是一种广泛的变性综合征,会影响神经系统。其早期出现的症状包括震颤,僵硬和声音障碍(声音障碍)。因此,语音指示符对于基于语音符号的PD识别非常重要。在这方面,基于机器学习的计算机辅助诊断系统可用于帮助临床医生识别PD患者。在这项工作中,我们评估基于语音障碍症状的基于机器学习的PD诊断技术的性能。考虑了几种机器学习技术,并通过一组22种语音障碍测量值对其进行了训练,以对健康和PD患者进行分类。这些机器学习方法包括线性判别分析(LDA),k个最近邻(k-NN),朴素贝叶斯(NB),回归树(RT),径向基函数神经网络(RBFNN),支持向量机(SVM),和Mahalanobis距离分类器。我们通过十倍交叉验证协议评估了这些方法的性能。实验结果表明,SVM分类器在总体精度,G均值和接收器工作特性图曲线下面积方面均比其他所有分类器均具有更高的平均性能。在敏感性,特异性和F度量统计方面,SVM分类器比大多数其他分类器获得了更高的性能指标。 LDA,k-NN和RT实现了最高的平均精度。 RBFNN方法产生最高的F测度。但是,就其他性能指标而言,它的效果很差。最后,进行了t检验以评估结果的统计显着性,从而证实了SVM在大多数性能指标上均胜过大多数其他分类器。 SVM是一种基于听觉障碍测量分类来识别PD患者的有前途的方法。

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