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EEG Microstates Temporal Dynamics Differentiate Individuals with Mood and Anxiety Disorders From Healthy Subjects

机译:脑电图微状态时间动态区分具有健康受试者的情绪和焦虑症的个人

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Electroencephalography (EEG) measures the brain’s electrophysiological spatio-temporal activities with high temporal resolution. Multichannel and broadband analysis of EEG signals is referred to as EEG microstates (EEG-ms) and can characterize such dynamic neuronal activity. EEG-ms have gained much attention due to the increasing evidence of their association with mental activities and large-scale brain networks identified by functional magnetic resonance imaging (fMRI). Spatially independent EEG-ms are quasi-stationary topographies (e.g., stable, lasting a few dozen milliseconds) typically classified into four canonical classes (microstates A through D). They can be identified by clustering EEG signals around EEG global field power (GFP) maxima points. We examined the EEG-ms properties and the dynamics of cohorts of mood and anxiety (MA) disorders subjects ( n = 61) and healthy controls (HCs; n = 52). In both groups, we found four distinct classes of EEG-ms (A through D), which did not differ among cohorts. This suggests a lack of significant structural cortical abnormalities among cohorts, which would otherwise affect the EEG-ms topographies. However, both cohorts’ brain network dynamics significantly varied, as reflected in EEG-ms properties. Compared to HC, the MA cohort features a lower transition probability between EEG-ms B and D and higher transition probability from A to D and from B to C, with a trend towards significance in the average duration of microstate C. Furthermore, we harnessed a recently introduced theoretical approach to analyze the temporal dependencies in EEG-ms. The results revealed that the transition matrices of MA group exhibit higher symmetrical and stationarity properties as compared to HC ones. In addition, we found an elevation in the temporal dependencies among microstates, especially in microstate B for the MA group. The determined alteration in EEG-ms temporal dependencies among the cohorts suggests that brain abnormalities in mood and anxiety disorders reflect aberrant neural dynamics and a temporal dwelling among ceratin brain states (i.e., mood and anxiety disorders subjects have a less dynamicity in switching between different brain states).
机译:脑电图(EEG)以高时间分辨率测量大脑的电生理时空活动。 EEG信号的多通道和宽带分析称为EEG微状态(EEG-ms),可以表征这种动态神经元活动。由于越来越多的证据表明脑电图与精神活动和功能磁共振成像(fMRI)所识别的大规模脑网络有关,因此脑电图已受到广泛关注。空间独立的EEG-ms是准静态地形(例如,稳定,持续几十毫秒),通常分为四个规范类别(微状态A到D)。可以通过在EEG全局场功率(GFP)最大值点附近聚集EEG信号来识别它们。我们检查了EEG-ms的特性以及情绪和焦虑(MA)疾病队列对象(n = 61)和健康对照(HCs; n = 52)的动态。在这两组中,我们发现了四个不同的EEG-ms类(A到D),这在不同人群中没有差异。这表明队列中缺乏明显的结构皮质异常,否则会影响EEG-ms地形。然而,这两个队列的大脑网络动态变化很大,这反映在EEG-ms属性上。与HC相比,MA队列的特征是EEG-ms B和D之间的转移概率较低,并且从A到D以及从B到C的转移概率更高,并且在微状态C的平均持续时间内有显着趋势。最近引入的一种理论方法来分析EEG-ms中的时间依赖性。结果表明,与HC相比,MA基团的跃迁矩阵具有更高的对称性和平稳性。此外,我们发现微状态之间的时间依赖性呈上升趋势,特别是在MA组的微状态B中。在队列中确定的脑电图-毫秒时间依赖性变化表明,情绪和焦虑症的脑部异常反映了异常的神经动力学,并且在ceratin脑部状态之间存在暂时性的居留状态(即,情绪和焦虑症的受试者在不同大脑之间切换的动力较小状态)。

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