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Alcoholism classification based on EEG data using Independent Component Analysis (ICA), Wavelet de-noising and Probabilistic Neural Network (PNN)

机译:使用独立成分分析(ICA),小波消噪和概率神经网络(PNN)基于EEG数据进行酒精中毒分类

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Alcoholism is a clinical symptom characterized by a tendency to drink more alcohol than planned or commonly called alcoholics. Alcoholics will suffer the damage in some parts of the body, including the brain. One way to detect alcoholics from the brain is to record the electrical activity of the brain through the scalp or called electroencephalography (EEG). EEG records are often disturbed by noise such as muscle movements, eye blinking and heartbeat. Therefore, this research suggests Independent Component Analysis (ICA), as noise removal, Stationary Wavelet Transform (SWT) as a feature extraction method and are classified into two classes, namely alcoholism and normal using Probabilistic Neural Network (PNN). In this research, the result obtained from the ICA noise removal, signal decomposition using Daubechies SWT at level 6 and Probabilistic Neural Network (PNN) is considered effective to extract features and classify the 64 channels alcoholism data. The data come from Neurodynamics Laboratory, State University of New York Health Center. The result of this research generate an accuracy of 85.00% from 100 random data trial using ICA, SWT decomposition level 6, Wavelet Daubechies type 4 and PNN deviation value of 0.6.
机译:酒精中毒是一种临床症状,其特征在于饮酒的趋势多于计划饮酒或通常称为饮酒的人。酗酒者将遭受包括大脑在内的身体某些部位的伤害。从大脑检测酒精中毒的一种方法是通过头皮或称为脑电图(EEG)记录大脑的电活动。脑电图记录通常会受到诸如肌肉运动,眨眼和心跳等噪音的干扰。因此,本研究建议使用独立成分分析(ICA)作为特征消除方法,并将固定小波变换(SWT)作为特征提取方法,并使用概率神经网络(PNN)将其分为酒精中毒和正常人两大类。在这项研究中,从ICA噪声去除,使用6级Daubechies SWT和概率神经网络(PNN)进行信号分解获得的结果被认为有效地提取了特征并分类了64通道酒精中毒数据。数据来自纽约州立大学健康中心神经动力学实验室。这项研究的结果使用ICA,SWT分解级别6,小波Daubechies 4型和PNN偏差值为0.6,通过100个随机数据试验产生了85.00%的准确性。

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