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Sleep EEG signal analysis based on correlation graph similarity coupled with an ensemble extreme machine learning algorithm

机译:基于相关图相似性的睡眠EEG信号分析与集合极限机器学习算法相互耦合

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Background: Sleep plays an essential role in repairing and healing human mental and physical health. Developing an efficient method for scoring electroencephalogram (EEG) sleep stages is expected to help medical specialists in the early diagnosis of sleep disorders.Method: In this paper, a novel technique is proposed for classifying sleep stages EEG signals using correlation graphs. First, each 30 s EEG segment is divided into a set of sub-segments. The dimensionality of each sub-segment is reduced by using a statistical model. Second, each EEG segment is transferred into a graph considering each sub-segment as a node in a graph, and a link between each pair of nodes is calculated based on their correlation coefficient. Graph's modularity is used as input features into an ensemble classifier.Results: Different community detection algorithm based correlation graph are investigated to discern the most effective features to reveal the differences between EEG sleep stages. A combination of various classification techniques: a least square vector machine (LS-SVM), k-means, Naive Bayes, Fuzzy C-means, k-nearest, and logistic regression are tested using multi criteria decision making (MCDM) to design an ensemble classifier. Based on the results of the MCDM, the best four: LS-SVM, Naive Bayes, logistic regression and k-nearest are integrated, to finally utilise as an ensemble classifier to categorise the graph's characteristics. The results obtained from the ensemble classifier are compared with those from the individual classifiers. The performance of the proposed method is compared with state of the art of sleep stages classification. The experimental results showed that the EEG sleep classification based on correlation graphs are able to achieve better recognition results than the existing state of the art techniques. (C) 2019 Elsevier Ltd. All rights reserved.
机译:背景:睡眠在修复和愈合人体心理健康方面发挥着重要作用。开发一种有效的评分脑电图(EEG)睡眠阶段的方法有望帮助医学专家在睡眠障碍的早期诊断中。在本文中,提出了一种使用相关图来分类睡眠阶段EEG信号的新技术。首先,每个30个eEG段分为一组子段。通过使用统计模型减少了每个子段的维度。其次,将每个EEG段传送到考虑每个子段作为图中的节点的图表,并且基于它们的相关系数计算每对节点之间的链路。图形的模块化用作Ensemble分类器中的输入功能。结果:研究了基于不同的社区检测算法的相关图,以辨别最有效的功能,以揭示脑电图睡眠阶段之间的差异。各种分类技术的组合:使用多标准决策(MCDM)来设计一个最小二乘矢量机(LS-SVM),K-mail,Naive贝叶斯,模糊C-均值,K离最近和逻辑回归合奏分类器。基于MCDM的结果,最佳四:LS-SVM,Naive Bayes,Logistic回归和K-Charemy集成,最终利用作为集合分类器来分类图形的特征​​。将从集合分类器获得的结果与来自各个分类器的那些进行比较。将所提出的方法的性能与睡眠阶段分类的艺术状态进行比较。实验结果表明,基于相关图的EEG睡眠分类能够实现比现有技术的现有技术更好的识别结果。 (c)2019 Elsevier Ltd.保留所有权利。

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