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Investigation of EEG-Based Graph-Theoretic Analysis for Automatic Diagnosis of Alcohol Use Disorder

机译:基于EEG的图论分析用于酒精使用障碍自动诊断的研究

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Abnormal functional connectivity (FC) has been commonly observed during alcohol use disorder (AUD). In this work, FC analysis has been performed by incorporating EEG-based graph-theoretic analysis and a machine learning (ML) framework. Brain FC was quantified with synchronization likelihood (SL). Undirected graphs for each channel pair were constructed involving the SL measures. Furthermore, the graph-based features such as minimum spanning tree, distances between nodes, and maximum flow between the graph nodes were computed, termed as EEG data matrix. The matrix was used as input data to the ML framework to classify the study participants. The ML framework was validated with data acquired from 30 AUD patients and an age-matched group of 30 healthy controls. In this study, the classifiers such as SVM (accuracy = 98.7%), Naive Bayes (accuracy = 88.6%), and logistic regression (accuracy = 89%) have shown promising discrimination results. The method was compared with two existing methods that also involve resting-state EEG data. The first method reported a classification accuracy of 91.7% while utilizing the time-based features such as Approximate Entropy (ApEn), Largest Lyapunov Exponent (LLE), Sample Entropy (SampEn), and four other Higher Order Spectra (HOS) features [1]. The second method reported 95.8% accuracy involving wavelet-based signal energy [2]. Since the study has utilized a small sample size, the generalization could not be possible. The FC-based graph-theoretic analysis in combination with ML methods could be used as an endophenotype for screening AUD patients.
机译:在饮酒障碍(AUD)期间通常会观察到功能连接异常(FC)。在这项工作中,FC分析是通过结合基于EEG的图论分析和机器学习(ML)框架进行的。脑FC量化与同步可能性(SL)。每个通道对的无向图都涉及SL测度。此外,计算了基于图的特征,例如最小生成树,节点之间的距离以及图节点之间的最大流量,称为EEG数据矩阵。该矩阵用作ML框架的输入数据,以对研究参与者进行分类。 ML框架通过从30例AUD患者和年龄匹配的30例健康对照组中获得的数据进行了验证。在这项研究中,诸如SVM(准确度= 98.7%),朴素贝叶斯(准确度= 88.6%)和逻辑回归(准确度= 89%)等分类器已显示出令人鼓舞的判别结果。将该方法与还涉及静止状态EEG数据的两种现有方法进行了比较。第一种方法报告了分类精度为91.7%,同时利用了基于时间的特征,例如近似熵(ApEn),最大李雅普诺夫指数(LLE),样本熵(SampEn)和其他四个高阶光谱(HOS)特征[1 ]。第二种方法报告涉及基于小波的信号能量的准确度为95.8%[2]。由于该研究使用的样本量较小,因此无法进行概括。基于FC的图论分析与ML方法相结合可以用作筛选AUD患者的内表型。

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