使用各种分类模型预测帕金森病的发生

Shreerag Marar, Debabrata Swain, Vivek Hiwarkar, Nikhil Motwani, A. Awari
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引用次数: 8

摘要

帕金森氏症是一种直接降低中枢神经系统功能的疾病,更具体地说,是运动系统。如果在晚期诊断出来,这种疾病可能会变得无法治愈。因此,有必要在早期诊断这种疾病。语音频率在帕金森病的预测中起着至关重要的作用。本文通过从UCI存储库中获得的大量语音数据,介绍了使用各种机器学习算法诊断帕金森病的研究[1]。语音数据集包括31名早期帕金森氏症患者的语音频率,这些患者被招募参加为期六个月的远程监测设备试验,用于远程监测症状进展。在数据集上应用了各种机器学习算法,其中ANN的准确率最高(94.87%)。Random Forest是一种分类算法,准确率较高(87.17%),而Naïve Bayes准确率最低(71.79%)。我们用混淆矩阵总结了所有的结果。
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Predicting the occurrence of Parkinson’s Disease using various Classification Models
Parkinson is a disease that directly degrades the functioning of central nervous system, more specifically the motor system. If diagnosed in a later stage, this disease may become incurable. Hence, it is necessary to diagnose the disease at an early stage. Voice frequency plays a vital role in the prediction of Parkinson disease. This paper presents the study for the diagnosis of Parkinson disease using various machine learning algorithms through the amount of voice data attained from UCI repository [1]. The voice dataset consists of voice frequencies of 31 people with early-stage Parkinson's disease recruited to a six-month trial of a telemonitoring device for remote symptom progression monitoring. Various machine learning algorithms were applied on the dataset and among them ANN has shown highest accuracy (94.87%). Random Forest which is a Classification algorithm has shown good accuracy (87.17%) while Naïve Bayes has shown least accuracy (71.79%). We have summarized all the results using the confusion matrix.
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