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Performance evaluation of combined feature selection and classification methods in diagnosing parkinson disease based on voice feature

机译:基于语音特征的特征选择和分类组合方法在帕金森病诊断中的性能评估

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Parkinson is a disease attacking the nervous system and worsens the work of nervous system over time. This disease is incurable, the therapy existing today is only able to help to relieve the symptoms. Hence, an early diagnose is deemed essential to determine an accurate type of therapy. Parkinson disease can be diagnosed by examining the symptoms apparent to the patient. One of the symptoms is the existence of dysphonia (weakness in voice production) to the patients with Parkinson. This research purposely is to examine the diagnosis of Parkinson disease through the measurement of voice data obtained from UCI repository. The dataset of the voice was initially normalized before conducting the feature selection by means of a number of methods including Correlation-based Feature Selection (CFS), Principal Component Analysis (PCA), Wrapper and conducting without feature selection. The data that has been selected later was classified using four classifiers including Support Vector Machine (SVM), k-Nearest Neighbour (kNN), Bayesian Network and Multi Layer Perceptron (MLP). All of the processes conducted using WEKA 3.6. The result revealed that the highest accuracy was obtained at 98.97% with the sensitivity of 99.32% and specificity of 97.92% from the use of feature selection of Wrapper using kNN classifiers.
机译:帕金森病是一种攻击神经系统的疾病,随着时间的推移会恶化神经系统的工作。这种疾病是无法治愈的,当今存在的疗法只能帮助缓解症状。因此,早期诊断被认为对于确定准确的治疗类型至关重要。帕金森病可以通过检查患者明显的症状来诊断。症状之一是帕金森氏症患者存在发声障碍(发声弱)。这项研究的目的是通过测量从UCI存储库获得的语音数据来检查帕金森氏病的诊断。在进行特征选择之前,首先通过多种方法对语音数据集进行了归一化,这些方法包括基于相关的特征选择(CFS),主成分分析(PCA),包装和不进行特征选择的行为。随后使用四个分类器对后来选择的数据进行分类,包括支持向量机(SVM),k最近邻(kNN),贝叶斯网络和多层感知器(MLP)。所有过程均使用WEKA 3.6进行。结果表明,通过使用kNN分类器对Wrapper进行特征选择,可以达到98.97%的最高准确度,99.32%的灵敏度和97.92%的特异性。

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