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Alcohol use disorder detection using EEG Signal features and flexible analytical wavelet transform

机译:利用EEG信号特征和灵活的分析小波变换检测酒精使用障碍

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The frequent excessive drinking of alcohol severely affects the neuronal composition and working of the brain and consequently developed Alcohol Use Disorder (AUD). Subjects suffering from AUD are prone to various diseases, psychological and cognitive issues if not identified and treated timely. Electroencephalogram (EEG) signals are used to record the internal structure and activity of the brain. The manual screening of EEG signals for AUD detection is complicated for practitioners because EEG signals are recorded in microvolts (mu v) and consists of the inherent internal complexity of the brain. Therefore, an automated computer-aided diagnosis (CAD) is used for assisting the medical practitioner in AUD screening process. The recorded EEG signals of a subject are nonlinear and oscillatory, and CAD methods examine these signals in their frequency sub-bands. In this paper, flexible analytical wavelets transform (FAWT) based machine learning models are proposed for automated alcoholism detection. In the proposed methodology, EEG signals are decomposed into approximate and detailed wavelet coefficients using FAWT. The statistical features such as mean, standard deviation, kurtosis, skewness, and Shannon entropy are extracted from the selected wavelet coefficients. The features are fed to the various machine learning models including Least Square-Support Vector Machine (LS-SVM), Support Vector Machine (SVM) and Naive Bayes learners for training. The training and testing are performed using 10-fold cross-validation. The performance of models is evaluated using all essential measures such as accuracy, sensitivity, specificity, F-measure, precision, Matthews correlation coefficient (MCC) and ROC. The results suggest that LS-SVM using polynomial kernel performed best with accuracy 99.17%, Sensitivity 99.17%, and Specificity as 99.44% using 10-fold cross-validation technique. (C) 2018 Elsevier Ltd. All rights reserved.
机译:经常过量饮酒会严重影响大脑的神经元组成和运作,并因此发展为酒精使用障碍(AUD)。如果不及时发现和治疗,患有AUD的受试者容易患上各种疾病,心理和认知问题。脑电图(EEG)信号用于记录大脑的内部结构和活动。对于从业者而言,手动筛选用于AUD检测的EEG信号非常复杂,因为EEG信号以微伏(mu v)记录,并且由大脑固有的内部复杂性组成。因此,自动计算机辅助诊断(CAD)用于协助医生进行AUD筛选过程。所记录的对象的EEG信号是非线性的并且是振荡的,并且CAD方法会在其子频带中检查这些信号。在本文中,提出了基于柔性分析小波变换(FAWT)的机器学习模型,用于自动酒精中毒检测。在提出的方法中,使用FAWT将EEG信号分解为近似和详细的小波系数。从所选的小波系数中提取统计特征,例如平均值,标准差,峰度,偏度和香农熵。这些功能被馈送到各种机器学习模型,包括最小二乘支持向量机(LS-SVM),支持向量机(SVM)和朴素贝叶斯学习者进行训练。训练和测试使用10倍交叉验证进行。使用所有基本指标(例如准确性,敏感性,特异性,F指标,精度,马修斯相关系数(MCC)和ROC)评估模型的性能。结果表明,使用10倍交叉验证技术,使用多项式核的LS-SVM表现最佳,准确度为99.17%,灵敏度为99.17%,特异性为99.44%。 (C)2018 Elsevier Ltd.保留所有权利。

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