首页> 美国卫生研究院文献>Frontiers in Neuroscience >Detection of abnormal resting-state networks in individual patients suffering from focal epilepsy: an initial step toward individual connectivity assessment
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Detection of abnormal resting-state networks in individual patients suffering from focal epilepsy: an initial step toward individual connectivity assessment

机译:在患有局灶性癫痫的个体患者中检测异常休息状态网络:迈向个体连通性评估的第一步

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摘要

The spatial coherence of spontaneous slow fluctuations in the blood-oxygen-level dependent (BOLD) signal at rest is routinely used to characterize the underlying resting-state networks (RSNs). Studies have demonstrated that these patterns are organized in space and highly reproducible from subject to subject. Moreover, RSNs reorganizations have been suggested in pathological conditions. Comparisons of RSNs organization have been performed between groups of subjects but have rarely been applied at the individual level, a step required for clinical application. Defining the notion of modularity as the organization of brain activity in stable networks, we propose Detection of Abnormal Networks in Individuals (DANI) to identify modularity changes at the individual level. The stability of each RSN was estimated using a spatial clustering method: Bootstrap Analysis of Stable Clusters (BASC) (Bellec et al., ). Our contributions consisted in (i) providing functional maps of the most stable cores of each networks and (ii) in detecting “abnormal” individual changes in networks organization when compared to a population of healthy controls. DANI was first evaluated using realistic simulated data, showing that focussing on a conservative core size (50% most stable regions) improved the sensitivity to detect modularity changes. DANI was then applied to resting state fMRI data of six patients with focal epilepsy who underwent multimodal assessment using simultaneous EEG/fMRI acquisition followed by surgery. Only patient with a seizure free outcome were selected and the resected area was identified using a post-operative MRI. DANI automatically detected abnormal changes in 5 out of 6 patients, with excellent sensitivity, showing for each of them at least one “abnormal” lateralized network closely related to the epileptic focus. For each patient, we also detected some distant networks as abnormal, suggesting some remote reorganization in the epileptic brain.
机译:静止时血氧水平依赖性(BOLD)信号中自发缓慢波动的空间相干性通常用于表征潜在的静止状态网络(RSN)。研究表明,这些模式是在空间中组织的,并且在各个主题之间具有很高的可重复性。而且,已经提出在病理条件下进行RSNs重组。 RSNs组织的比较已在受试者的各组之间进行,但很少在个体水平上应用,这是临床应用所需的步骤。为了将模块化的概念定义为稳定网络中大脑活动的组织,我们提出了“检测个体中的异常网络(DANI)”以识别个体水平上的模块化变化。每个RSN的稳定性是使用空间聚类方法估算的:稳定簇的自举分析(BASC)(Bellec et al。,)。我们的贡献包括(i)提供每个网络最稳定核心的功能图,以及(ii)与健康对照组相比,检测网络组织中“异常”的个体变化。首先使用现实的模拟数据对DANI进行了评估,结果表明,专注于保守的核尺寸(最稳定区域的50%)可提高检测模块性变化的灵敏度。然后将DANI应用于6例局灶性癫痫患者的静息状态fMRI数据,这些患者通过同时进行EEG / fMRI采集和手术进行多模式评估。仅选择无癫痫预后的患者,并使用术后MRI识别切除区域。 DANI自动检测出6例患者中的5例异常变化,并具有出色的敏感性,为每个患者显示至少一个与癫痫病灶密切相关的“异常”分支网络。对于每位患者,我们还检测到一些遥远的网络异常,这表明癫痫大脑中存在一些远程重组。

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