A nonlinear decision tree based classification approach to predict the Parkinson's disease using different feature sets of voice data

S. Aich, K. Younga, Kueh Lee Hui, A. Al-Absi, M. Sain
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引用次数: 47

Abstract

In the past few years, lot of researchers are working to get some breakthrough for early detection of Parkinson's disease. As the old age population is increasing at a higher rate as well as it is predicted that the old age population will increase to a much higher total by 2050, it's a become a rising concern to the developed countries because the cost due to the healthcare service of these disease is really high. Parkinson's disease (PD) belongs to the group of neurological disorder, which directly affect the bra in cells and the effect is shown in terms of movement, voice and other cognitive disabilities. Researchers are keep working on different fields such as gait analysis as well as on speech analysis to find the predictors of the Parkinson's disease. Recently machine learning based approach has been used by many researchers across the field because of its accuracy on the complex data. Machine learning based approach has been used in many cases of Parkinson's disease using gait data as well as voice data. However, so far no body ha s compared the performance metrics using different feature sets by applying non-linear based classification approach based on the voice data. So in this paper we have proposed a new approach by comparing the performance metrics with different feature sets such as original feature sets as well as Principal component Analysis based feature reduction technique for selecting the feature sets. We have used non-linear based classification approach to compare the performance metrics. We have found an accuracy of 96.83% using random forest classifiers using PCA based feature sets. This analysis will help the clinicians to differentiate the PD group from healthy group based on the voice data.
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基于非线性决策树的分类方法,利用语音数据的不同特征集预测帕金森病
在过去的几年里,许多研究人员都在努力在帕金森病的早期检测方面取得一些突破。由于老年人口正在以更高的速度增长,而且据预测,到2050年,老年人口总数将增加到更高的水平,这已经成为发达国家日益关注的问题,因为这些疾病的医疗保健服务成本非常高。帕金森氏病(PD)属于神经系统疾病,直接影响细胞中的胸罩,其影响表现为运动、声音等认知障碍。研究人员一直在不同领域进行研究,如步态分析和语言分析,以寻找帕金森病的预测因素。近年来,基于机器学习的方法因其在复杂数据上的准确性而被广泛应用。基于机器学习的方法已被用于帕金森病的许多病例,使用步态数据和语音数据。然而,目前还没有人对基于语音数据的非线性分类方法在不同特征集下的性能指标进行比较。因此,本文提出了一种新的方法,通过比较不同特征集的性能指标,如原始特征集和基于主成分分析的特征约简技术来选择特征集。我们使用基于非线性的分类方法来比较性能指标。我们发现使用基于PCA的特征集的随机森林分类器的准确率为96.83%。该分析将有助于临床医生根据语音数据区分PD组和健康组。
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