Pathological Voice Signal Analysis Using Machine Learning Based Approaches

Yahia Alemami, L. Almazaydeh
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引用次数: 2

Abstract

Voice signal analysis is becoming one of the most significant examination in clinical practice due to the importance of extracting related parameters to reflect the patient's health. In this regard, various acoustic studies have been revealed that the analysis of laryngeal, respiratory and articulatory function may be efficient as an early indicator in the diagnosis of Parkinson disease (PD). PD is a common chronic neurodegenerative disorder, which affects a central nervous system and it is characterized by progressive loss of muscle control. Tremor, movement and speech disorders are the main symptoms of PD. The diagnosis decision of PD is obtained by continued clinical observation which relies on expert human observer. Therefore, an additional diagnosis method is desirable for most comfortable and timely detection of PD as well as faster treatment is needed. In this study, we develop and validate automated classification algorithms, which are based on Naive Bayes and K- Nearest Neighbors (KNN) using voice signal measurements to predict PD. According to the results, the diagnostic performance provided by the automated classification algorithm using Naive Bayes was superior to that of the KNN and it is useful as a predictive tool for PD screening with a high degree of accuracy, approximately 93.3%.
基于机器学习的病理语音信号分析方法
由于提取相关参数反映患者健康状况的重要性,语音信号分析已成为临床实践中最重要的检查之一。在这方面,各种声学研究表明,喉、呼吸和发音功能的分析可能是帕金森病(PD)诊断的早期指标。PD是一种常见的慢性神经退行性疾病,它影响中枢神经系统,其特征是肌肉逐渐失去控制。震颤、运动和语言障碍是帕金森病的主要症状。PD的诊断决策是依靠专家观察者的持续临床观察得出的。因此,需要一种额外的诊断方法来最舒适和及时地检测PD,并需要更快的治疗。在本研究中,我们开发并验证了基于朴素贝叶斯和K近邻(KNN)的自动分类算法,该算法使用语音信号测量来预测PD。结果表明,基于朴素贝叶斯的自动分类算法的诊断性能优于KNN,可作为PD筛查的预测工具,准确率高达93.3%。
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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