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A novel three-band orthogonal wavelet filter bank method for an automated identification of alcoholic EEG signals

机译:一种用于自动识别酒精脑电图信号的新型三频正交小波滤波器方法

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摘要

Alcoholism is a critical disorder related to the central nervous system, caused due to repeated and excessive consumption of alcohol. The electroencephalogram (EEG) signals are used to depict brain activities. It can also be employed for diagnosis of subjects consuming excessive alcohol. In this study, we have developed an automated system for the classification of alcoholic and normal EEG signals using a recently designed duration-bandwidth product (DBP), optimized three-band orthogonal wavelet filter bank (TBOWFB), and log-energy (LE). First, we obtain sub-bands (SBs) of EEG signals using the TBOWFB. Then, we use logarithms of the energies of the SBs as the discriminating features which are fed to the least square support vector machine (LS-SVM) for the discrimination of normal and alcoholic EEG signals. We have achieved a classification accuracy (CA) of 97.08%, with ten-fold cross validation strategy. The proposed model presents a promising performance, and therefore it can be used in a practical setup to assist the medical professionals in the diagnosis of alcoholism using EEG signals automatically.
机译:酗酒是一种与中枢神经系统相关的关键疾病,由于重复和过量消耗醇而导致的醇。脑电图(EEG)信号用于描绘大脑活动。它还可以用于诊断消耗过量的酒精的受试者。在这项研究中,我们开发了一种用于使用最近设计的持续时间带宽产品(DBP)的酗酒和正常EEG信号的自动化系统,优化的三频道正交小波滤波器(TBOWB)和Log-Energy(Le) 。首先,我们使用TBOBFB获取EEG信号的子带(SBS)。然后,我们使用SBS的能量的Logarithms作为馈送到最小二乘支持向量机(LS-SVM)的判别特征,用于判断正常和醇的EEG信号。我们已经实现了97.08%的分类准确性(CA),交叉验证策略为10倍。该拟议的模型提出了一个有希望的性能,因此它可以在实际设置中使用,以帮助医疗专业人员在脑电图中自动使用EEG信号诊断酗酒。

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