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在颞叶癫痫大鼠模型中,动态功能连接和图论指标显示出对具有较低功能连接、分离和整合的脑状态的偏好。

Dynamic functional connectivity and graph theory metrics in a rat model of temporal lobe epilepsy reveal a preference for brain states with a lower functional connectivity, segregation and integration.

机构信息

MEDISIP, Department of Electronics and Information Systems, Ghent University, Ghent, Belgium.

4Brain Team, Department of Head and Skin, Ghent University, Ghent, Belgium.

出版信息

Neurobiol Dis. 2020 Jun;139:104808. doi: 10.1016/j.nbd.2020.104808. Epub 2020 Feb 19.

Abstract

Epilepsy is a neurological disorder characterized by recurrent epileptic seizures. The involvement of abnormal functional brain networks in the development of epilepsy and its comorbidities has been demonstrated by electrophysiological and neuroimaging studies in patients with epilepsy. This longitudinal study investigated changes in dynamic functional connectivity (dFC) and network topology during the development of epilepsy using the intraperitoneal kainic acid (IPKA) rat model of temporal lobe epilepsy (TLE). Resting state functional magnetic resonance images (rsfMRI) of 20 IPKA animals and 7 healthy control animals were acquired before and 1, 3, 6, 10 and 16 weeks after status epilepticus (SE) under medetomidine anaesthesia using a 7 T MRI system. Starting from 17 weeks post-SE, hippocampal EEG was recorded to determine the mean daily seizure frequency of each animal. Dynamic FC was assessed by calculating the correlation matrices between fMRI time series of predefined regions of interest within a sliding window of 50 s using a step length of 2 s. The matrices were classified into 6 FC states, each characterized by a correlation matrix, using k-means clustering. In addition, several time-variable graph theoretical network metrics were calculated from the time-varying correlation matrices and classified into 6 states of functional network topology, each characterized by a combination of network metrics. Our results showed that FC states with a lower mean functional connectivity, lower segregation and integration occurred more often in IPKA animals compared to control animals. Functional connectivity also became less variable during epileptogenesis. In addition, average daily seizure frequency was positively correlated with percentage dwell time (i.e. how often a state occurs) in states with high mean functional connectivity, high segregation and integration, and with the number of transitions between states, while negatively correlated with percentage dwell time in states with a low mean functional connectivity, low segregation and low integration. This indicates that animals that dwell in states of higher functional connectivity, higher segregation and higher integration, and that switch more often between states, have more seizures.

摘要

癫痫是一种以反复发作性癫痫发作为特征的神经系统疾病。电生理学和神经影像学研究已经证实,异常功能脑网络参与了癫痫及其共病的发生发展。本纵向研究采用腹腔注射海人酸(IPKA)颞叶癫痫(TLE)大鼠模型,探讨了癫痫发生过程中动态功能连接(dFC)和网络拓扑结构的变化。20 只 IPKA 动物和 7 只健康对照动物在 SE 后 1、3、6、10 和 16 周,在美托咪定麻醉下使用 7T MRI 系统采集 rsfMRI 数据。从 SE 后 17 周开始,记录海马 EEG,以确定每个动物的平均每日发作频率。通过在 50s 的滑动窗口内计算 fMRI 时间序列之间的相关矩阵,使用 2s 的步长,来评估动态 FC。使用 k-means 聚类将矩阵分类为 6 种 FC 状态,每种状态由一个相关矩阵特征。此外,还从时变相关矩阵计算了几个时变图论网络指标,并将其分类为 6 种功能网络拓扑状态,每种状态由网络指标的组合特征。我们的结果表明,与对照动物相比,IPKA 动物的 FC 状态具有较低的平均功能连接、较低的分离和整合,出现的频率更高。在癫痫发生过程中,功能连接的可变性也降低了。此外,平均每日发作频率与高平均功能连接、高分离和高整合状态的百分比停留时间(即状态发生的频率)呈正相关,与状态间转换次数呈正相关,与低平均功能连接、低分离和低整合状态的百分比停留时间呈负相关。这表明,处于更高功能连接、更高分离和更高整合状态且更频繁转换状态的动物,发作次数更多。

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