使用声音特征检测帕金森病:一种特征方法

Nakul S Pramod, L. Sajitha, Swathy Mohanlal, K. Thameem, S. M. Anzar
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引用次数: 2

摘要

帕金森氏症(PD)是一种人类中枢神经系统的退行性疾病,会引起震颤并影响运动。症状通常随着时间的推移逐渐出现。研究人员正在寻找帕金森氏症的生物标志物,希望能够更早发现和更有针对性的治疗,以减缓疾病的进展。现有的诊断方法包括血液检查、核磁共振扫描和PET扫描。然而,这些都非常耗时和消耗资源。PD还显示出一个人的声音模式有轻微的变化。因此,声音信号的声学分析可以指示PD的进展。这可以使用训练过的分类器模型进行分析,从而提供对疾病的简单诊断。本文分析了线性回归、支持向量机(SVM)、k近邻(KNN)、随机森林(random Forest)和XG Boost等AI-ML模型在使用声音特征集检测帕金森病中的性能。实验评估表明,随机森林模型产生了令人印象深刻的100%的准确率。对分类算法的正确率、精密度、查全率、f1得分和马修斯相关系数(MCC)进行了检验。随机森林分类器的准确率为100%,准确率为1.000,召回率为1.000,f1分数为1.000,MCC为1.000。使用特征方法(主成分分析)和数据集组合实现降维是报道的高精度的关键原因。这种方法的潜力是突出的,因为它可以用来诊断各种其他疾病,如哮喘、癌症和阿尔茨海默病。
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Detection of Parkinson's Disease Using Vocal Features: An Eigen Approach
Parkinson's disease (PD) is a degenerative disorder of the human central nervous system that causes tremors and affects movement. Symptoms usually appear gradually over time. Researchers are seeking biomarkers for Parkinson's disease in the hopes of allowing for earlier detection and more tailored treatments to slow the disease's progression. Existing methods of diagnosis include Blood tests, MRI scans, and PET scans. However, these are highly time and resource-consuming. PD also shows an amble change in the voice patterns of a person. Hence, acoustic analysis of voice signals can indicate the progression of PD. This can be analysed using a trained classifier model, which provides an easy diagnosis of the disease. This paper analyses the performance of AI-ML models viz- Linear regression, Support Vector Machine (SVM), K-Nearest Neighbourhood (KNN), Ran-dom Forest, and XG Boost for the detection of Parkinson's disease using vocal feature sets. Experimental evaluations show that the Random Forest model produced an impressive accuracy of 100%. The classification algorithms' accuracy, precision, recall, F1-score, and Mathews Correlation Coefficient (MCC) are all examined. The Random Forest classifiers are 100% accurate, with an accuracy of 1.000, recall of 1.000, F1-score of 1.000, and MCC of 1.000. Implementing dimensionality reduction using the Eigen approach (Principal Component Analysis) and the dataset combination are the critical reasons for the reported high accuracy. The potential of this methodology is prominent as it can be used to diagnose various other diseases, such as asthma, cancer, and Alzheimer's disease.
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