Vecchio Fabrizio, Miraglia Francesca, Bramanti Placido, Rossini Paolo Maria
Brain Connectivity Laboratory, IRCCS San Raffaele Pisana, Rome, Italy.
IRCCS Centro Neurolesi Bonino-Pulejo, Messina, Italy.
J Alzheimers Dis. 2014;41(4):1239-49. doi: 10.3233/JAD-140090.
Modern analysis of electroencephalographic (EEG) rhythms provides information on dynamic brain connectivity. To test the hypothesis that aging processes modulate the brain connectivity network, EEG recording was conducted on 113 healthy volunteers. They were divided into three groups in accordance with their ages: 36 Young (15-45 years), 46 Adult (50-70 years), and 31 Elderly (>70 years). To evaluate the stability of the investigated parameters, a subgroup of 10 subjects underwent a second EEG recording two weeks later. Graph theory functions were applied to the undirected and weighted networks obtained by the lagged linear coherence evaluated by eLORETA on cortical sources. EEG frequency bands of interest were: delta (2-4 Hz), theta (4-8 Hz), alpha1 (8-10.5 Hz), alpha2 (10.5-13 Hz), beta1 (13-20 Hz), beta2 (20-30 Hz), and gamma (30-40 Hz). The spectral connectivity analysis of cortical sources showed that the normalized Characteristic Path Length (λ) presented the pattern Young > Adult>Elderly in the higher alpha band. Elderly also showed a greater increase in delta and theta bands than Young. The correlation between age and λ showed that higher ages corresponded to higher λ in delta and theta and lower in the alpha2 band; this pattern reflects the age-related modulation of higher (alpha) and decreased (delta) connectivity. The Normalized Clustering coefficient (γ) and small-world network modeling (σ) showed non-significant age-modulation. Evidence from the present study suggests that graph theory can aid in the analysis of connectivity patterns estimated from EEG and can facilitate the study of the physiological and pathological brain aging features of functional connectivity networks.
现代脑电图(EEG)节律分析可提供有关动态脑连接性的信息。为了验证衰老过程会调节脑连接网络这一假设,对113名健康志愿者进行了脑电图记录。根据年龄将他们分为三组:36名年轻人(15 - 45岁)、46名成年人(50 - 70岁)和31名老年人(>70岁)。为了评估所研究参数的稳定性,10名受试者组成的一个亚组在两周后进行了第二次脑电图记录。将图论函数应用于通过eLORETA在皮质源上评估的滞后线性相干性获得的无向加权网络。感兴趣的脑电频段为:δ(2 - 4Hz)、θ(4 - 8Hz)、α1(8 - 10.5Hz)、α2(10.5 - 13Hz)、β1(13 - 20Hz)、β2(20 - 30Hz)和γ(30 - 40Hz)。皮质源的频谱连接性分析表明,在较高α频段,归一化特征路径长度(λ)呈现出年轻人>成年人>老年人的模式。老年人在δ和θ频段的增加也比年轻人更大。年龄与λ之间的相关性表明,年龄越大,δ和θ频段的λ越高,而α2频段的λ越低;这种模式反映了与年龄相关的较高(α)连接性调制和较低(δ)连接性调制。归一化聚类系数(γ)和小世界网络建模(σ)显示出无显著的年龄调制。本研究的证据表明,图论有助于分析从脑电图估计的连接模式,并有助于研究功能连接网络的生理和病理脑老化特征。