Introducing weighted approaches to study network brain dynamics from EEG epilepsy measurements: The EigenBrain algorithm

Nantia D. Iakovidou, Manolis Christodoulakis, E. Papathanasiou, S. Papacostas, G. Mitsis
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引用次数: 1

Abstract

It is fairly established that dynamic recordings of functional activity maps can naturally and efficiently be represented by functional connectivity networks. In this article we study weighted and fully-connected brain networks, created from electroencephalographic (EEG) measurements that concern patients with focal and generalized epilepsy. We introduce a totally new methodology that has never been utilized before and that investigates weighted and fully-connected networks, which includes eigen-decomposition analysis, feature extraction and quantitative comparisons among entire graph datasets. Our goal is to establish epileptic seizure detection/prediction rules, by identifying repetitive EEG activity in patients before and after each seizure onset. In the present paper we treat each brain network as a weighted and full adjacency matrix, without cutting, binarizing or ignoring any values. In this way, it is the first time that the full structure of the connectivity weighing profile is exploited. Also apart from graph theory approaches, mathematical models such as eigen-decomposition analysis are used in our research, in order to study and analyze brain networks. Finally, we present and discuss the results and conclusions of our new method, which are in line with earlier EEG epilepsy findings and demonstrate a standard EEG behavior in both the postictal and preictal period.
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引入加权方法研究脑电图癫痫测量的网络脑动力学:特征脑算法
功能活动图的动态记录可以自然而有效地用功能连接网络表示。在本文中,我们研究加权和全连接的大脑网络,由脑电图(EEG)测量创建,涉及局灶性和全面性癫痫患者。我们介绍了一种全新的方法,以前从未使用过,并调查加权和全连接的网络,其中包括特征分解分析,特征提取和整个图数据集之间的定量比较。我们的目标是通过识别患者每次癫痫发作前后的重复脑电图活动,建立癫痫发作检测/预测规则。在本文中,我们将每个脑网络视为一个加权的和完全邻接矩阵,没有切割,二值化或忽略任何值。通过这种方式,这是第一次利用连通性称重剖面的完整结构。除了图论方法外,我们的研究还使用了特征分解分析等数学模型来研究和分析大脑网络。最后,我们提出并讨论了我们的新方法的结果和结论,这些结果和结论与早期的脑电图癫痫发现一致,并且在癫痫发作前后都表现出标准的脑电图行为。
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