Division of Pediatrics, Department of Neonatology, University Medical Centre Ljubljana, Ljubljana, Slovenia.
Department of Psychology, Faculty of Arts, University of Ljubljana, Ljubljana, Slovenia; Faculty of Computer and Information Sciences, University of Ljubljana, Ljubljana, Slovenia.
Clin Neurophysiol. 2023 Jun;150:216-226. doi: 10.1016/j.clinph.2023.03.357. Epub 2023 Apr 11.
The aim of this study was to explore functional network age-related changes and sex-related differences during the early lifespan with a high-density resting state electroencephalography (rs-EEG).
We analyzed two data sets of high-density rs-EEG in healthy children and adolescents. We recorded a 64-channel EEG and calculated functional connectomes in 27 participants aged 5-18 years. To validate our results, we used publicly available data and calculated functional connectomes in another 86 participants aged 6-18 years from a 128-channel rs-EEG. We were primarily interested in alpha frequency band, but we also analyzed theta and beta frequency bands.
We observed age-related increase of characteristic path, clustering coefficient and interhemispheric strength in the alpha frequency band of both data sets and in the beta frequency band of the larger validation data set. Age-related increase of global efficiency was seen in the theta band of the validation data set and in the alpha band of the test data set. Increase in small worldness was observed only in the alpha frequency band of the test data set. We also observed an increase of individual peak alpha frequency with age in both data sets. Sex-related differences were only observed in the beta frequency band of the larger validation data set, with females having higher values than same aged males.
Functional brain networks show indices of higher segregation, but also increasing global integration with maturation. Age-related changes are most prominent in the alpha frequency band.
To the best of our knowledge, our study was the first to analyze maturation related changes and sex-related differences of functional brain networks with a high-density EEG and to compare functional connectomes generated from two diverse high-density EEG data sets. Understanding the age-related changes and sex-related differences of functional brain networks in healthy children and adolescents is crucial for identifying network abnormalities in different neurologic and psychiatric conditions, with the aim to identify possible markers for prognosis and treatment.
本研究旨在利用高密度静息态脑电图(rs-EEG)探索生命早期功能网络的年龄相关性变化和性别差异。
我们分析了两组来自健康儿童和青少年的高密度 rs-EEG 数据。我们记录了 27 名 5-18 岁儿童的 64 通道脑电图,并计算了功能连接图。为了验证我们的结果,我们使用了公开可用的数据,并计算了来自另一个 128 通道 rs-EEG 的 86 名 6-18 岁参与者的功能连接图。我们主要关注阿尔法频段,但也分析了 theta 和 beta 频段。
我们观察到两个数据集的 alpha 频段以及较大验证数据集的 beta 频段中,特征路径、聚类系数和半球间强度随年龄增加而增加。在验证数据集的 theta 频段和测试数据集的 alpha 频段中,观察到与年龄相关的全局效率增加。仅在测试数据集的 alpha 频段中观察到小世界增加。我们还观察到两个数据集的个体 alpha 峰值频率都随年龄增加而增加。性别差异仅在较大验证数据集的 beta 频段中观察到,女性的数值高于同龄男性。
功能性脑网络显示出更高的分离度指数,但随着成熟度的提高,全局整合度也在增加。与年龄相关的变化在 alpha 频段最为明显。
据我们所知,我们的研究首次使用高密度 EEG 分析了功能脑网络的成熟相关变化和性别差异,并比较了来自两个不同高密度 EEG 数据集的功能连接图。了解健康儿童和青少年功能性脑网络的年龄相关性变化和性别差异对于识别不同神经和精神疾病条件下的网络异常至关重要,目的是确定可能的预后和治疗标志物。