基于锁相值和弹性测试的癫痫脑频率依赖网络灵活性分析——基于复杂网络的频率依赖信息集成分析

Yan He, Jue Wang
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引用次数: 1

摘要

频率成分是大脑通过电信号的协同作用来执行认知功能的关键。复杂网络可以基于图论对神经系统进行定量、客观的可视化。本文将以宽带脑电图记录为研究重点,结合锁相值和弹性测试来揭示癫痫脑网络的频率依赖性网络灵活性。锁相值结合小波变换有效地检测了窄频带脑电波的相位关系。弹性测试通过随机和有序地剔除单个节点及其链路来评估网络的脆弱性。然后将这些方法应用于从患有四种癫痫疾病的人类大脑中记录的脑电图信号。结果表明,不同类型癫痫患者网络特征指标的层次顺序不同;此外,在这些病理脑网络中,网络的弹性是频率敏感的。这些工具可以揭示频率相关的信息转换和集成。进一步的研究应关注这些依赖频率的脑网络的演化原理,从而促进这些脑电信号在大脑中的潜在工作机制。
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Frequency dependent network flexibility analysis in epileptic brain based on phase locking value and resilience test: Analysis of frequency dependent information integration based on complex network
Frequency component is critical for the brain to execute cognitive function by way of and cooperation of electrical signals. Complex network could visualize the neural system quantitatively and objectively based on graph theory. In this paper, we would focus on the study of broadband electroencephalogram recordings and combine phase locking value with resilience test to uncover frequency dependent network flexibility in the epileptic brain network. Phase locking value is efficient in detecting phase relationships in narrow band EEG waves by incorporating wavelet transform. Resilience test plays a role in the evaluating network's fragility by eliminating single node and its links randomly as well as in order. These methods are then applied on EEG signals recorded from the brain of human beings with four kinds of epilepsy disease. Results demonstrated that hierarchical order of network characteristic metrics are different in distinctive types of epilepsy disease; besides, the network's resilience are frequency sensitive in these pathological brain networks. Frequency dependent information transition and integration could be uncovered by these tools. Further research should pay attention to the evolution principle of these frequency reliance brain network, thereby promoting underlying working mechanism of these EEG signals in the brain.
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