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Tunable Q wavelet transform based emotion classification in Parkinson’s disease using Electroencephalography

机译:可调谐Q小波在帕金森病的情感分类使用脑电图

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Parkinson’s disease (PD) is a severe incurable neurological disorder. It is mostly characterized by non-motor symptoms like fatigue, dementia, anxiety, speech and communication problems, depression, and so on. Electroencephalography (EEG) play a key role in the detection of the true emotional state of a person. Various studies have been proposed for the detection of emotional impairment in PD using filtering, Fourier transforms, wavelet transforms, and non-linear methods. However, these methods require a selection of basis and are confined in terms of accuracy. In this paper, tunable Q wavelet transform (TQWT) is proposed for the classification of emotions in PD and normal controls (NC). EEG signals of six emotional states namely happiness, sadness, fear, anger, surprise, and disgust are studied. Power, entropy, and statistical moments based features are elicited from the highpass and lowpass sub-bands of TQWT. Six features selected by statistical analysis are classified with a k-nearest neighbor, probabilistic neural network, random forest, decision tree, and extreme learning machine. Three performance measures are obtained, maximum mean accuracy, sensitivity, and specificity of 96.16%, 97.59%, and 88.51% for NC and 93.88%, 96.33%, and 81.67% for PD are achieved with a probabilistic neural network. The proposed method proved to be very effective such that it classifies emotions in PD and could be used as a potential tool for diagnosing emotional impairment in hospitals.
机译:帕金森病(PD)是一种严重的可治区神经障碍。它主要是疲劳,痴呆,焦虑,言论,抑郁等疲劳,痴呆,焦虑,言论,抑郁等的非运动症状。脑电图(EEG)在检测到一个人的真正情感状态方面发挥着关键作用。已经提出了使用滤波,傅里叶变换,小波变换和非线性方法检测PD中情绪损伤的各种研究。然而,这些方法需要选择基础,并且在准确性方面被限制。在本文中,提出了可调Q小波变换(TQWT),用于PD中的情绪和正常控制(NC)的分类。研究了六个情绪状态的脑电图,即幸福,悲伤,恐惧,愤怒,惊喜和厌恶。从TQWT的高通和低通分带引发了基于功率,熵和基于统计时刻的功能。通过统计分析选择的六个特征分为K-最近邻,概率神经网络,随机林,决策树和极端学习机。获得了三种性能措施,最大平均精度,灵敏度和96.16%,97.59%和88.51%的特异性,并且通过概率神经网络实现了PD的93.88%,96.33%和81.67%。所提出的方法证明是非常有效的,使其在PD中对情绪进行分类,可以用作诊断医院情绪损伤的潜在工具。

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