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Automatic diagnosis of alcohol use disorder using EEG features

机译:使用EEG功能自动诊断酒精使用障碍

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摘要

Alcohol use disorder (AUD) has been considered as a social and health issue worldwide. More importantly, the screening of AUD patients has been challenging due to the subjectivity imparted by self-test reports. Automated methods involving neuroimaging modality such as quantitative electroencephalography (QEEG) have shown promising research results. However, the QEEG methods were developed only for alcohol dependents (AD) and healthy controls. Therefore, this study sought to propose a machine learning (ML) method to classify 1) between alcohol abusers and healthy controls, and 2) among healthy controls, alcohol abusers, and alcoholics. The proposed ML method involved QEEG feature "extraction, selection of most relevant features, and classification of the study participants into their relevant groups. The study participants such as 12 alcohol abusers (mean age 56.70 +/- 15.33 years), 18 alcoholics (mean age 46.80 +/- 9.29 years), and 15 healthy controls (mean 42.67 +/- 15.90 years) were recruited to acquire EEG data. The data were recorded during 10 minutes of eyes closed (EC) and eyes open (EO) conditions. Furthermore, the EEG data were utilized to extract QEEG features such as absolute power (AP) and relative power (RP). Methods such as t-test and principal component analysis (PCA) were employed to select most relevant QEEG features. Finally, the discriminant QEEG features were used as inputs to the classification models: Linear Discriminant Analysis (LDA), Support Vector Machine (SVM), Multilayer back-Propagation Network (MLP), and Logistic Model Trees (LMT), supported by 10-fold cross validation. As results, the LMT has achieved best performance rendering a classification accuracy (96%), sensitivity (97%) and specificity (93%). In addition, a further classification for each subgroup of AUD patients has achieved accuracy (> 90%). In conclusion, the results implicated significant neurophysiological differences among alcohol abusers, alcoholics, and controls. Moreover, the AUD patients exhibited significantly decreased theta as compared with the healthy controls. (C) 2016 Elsevier B.V. All rights reserved.
机译:酒精使用障碍(AUD)已被视为世界范围内的社会和健康问题。更重要的是,由于自测报告的主观性,对AUD患者的筛查一直具有挑战性。涉及神经影像形态的自动化方法,例如定量脑电图(QEEG),已显示出令人鼓舞的研究成果。但是,仅针对酒精依赖者(AD)和健康对照者开发了QEEG方法。因此,本研究试图提出一种机器学习(ML)方法,以对1)酗酒者和健康对照者之间进行分类,以及2)健康对照者,酗酒者和酗酒者之间进行分类。拟议的ML方法涉及QEEG特征“提取,最相关特征的选择以及将研究参与者分类为相关人群。研究参与者包括12名酗酒者(平均年龄56.70 +/- 15.33岁),18名酗酒者(平均年龄为46.80 +/- 9.29岁)和15名健康对照(平均42.67 +/- 15.90岁)被收集来获取EEG数据,这些数据记录在10分钟闭眼(EC)和睁眼(EO)的情况下。此外,利用脑电数据提取诸如绝对功率(AP)和相对功率(RP)之类的QEEG特征,采用t检验和主成分分析(PCA)等方法选择最相关的QEEG特征。判别式QEEG功能被用作分类模型的输入:线性判别分析(LDA),支持向量机(SVM),多层反向传播网络(MLP)和逻辑模型树(LMT),由10倍交叉验证支持结果,L MT取得了最佳性能,可实现分类准确度(96%),敏感性(97%)和特异性(93%)。此外,对AUD患者的每个亚组进行了进一步分类,均达到了准确度(> 90%)。总之,结果暗示了酗酒者,酗酒者和对照组之间存在明显的神经生理差异。而且,与健康对照相比,AUD患者表现出θ显着降低。 (C)2016 Elsevier B.V.保留所有权利。

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