Department of Clinical Neurophysiology and Magnetoencephalography, VU University Medical Center, Amsterdam, The Netherlands.
Brain Connect. 2012;2(2):45-55. doi: 10.1089/brain.2011.0043. Epub 2012 Jun 11.
In Alzheimer's disease (AD), structural and functional brain network organization is disturbed. However, many of the present network analysis measures require a priori assumptions and methodological choices that influence outcomes and interpretations. Graph spectral analysis (GSA) is a more direct algebraic method that describes network properties, which might lead to more reliable results. In this study, GSA was applied to magnetoencephalography (MEG) data to explore functional network integrity in AD. Sensor-level resting-state MEG was performed in 18 Alzheimer patients (age 67 ± 9, 6 women) and 18 healthy controls (age 66 ± 9, 11 women). Weighted, undirected graphs were constructed based on functional connectivity analysis using the Synchronization likelihood, and GSA was performed with a focus on network connectivity, synchronizability, and node centrality. The main outcomes were a global loss of network connectivity and altered synchronizability in most frequency bands. Eigenvector centrality mapping confirmed the hub status of the parietal areas, and demonstrated a low centrality of the left temporal region in the theta band in AD patients that was strongly related to the mini mental state examination (global cognitive function test) score (r=0.67, p=0.001). Summarizing, GSA is a theoretically solid approach that is able to detect the disruption of functional network topology in AD. In addition to the previously reported overall connectivity losses and parietal area hub status, impaired network synchronizability and a clinically relevant left temporal centrality loss were found in AD patients. Our findings imply that GSA is valuable for the purpose of studying altered brain network topology and dynamics in AD.
在阿尔茨海默病(AD)中,大脑结构和功能网络的组织受到干扰。然而,许多现有的网络分析方法需要先验假设和方法选择,这些假设和方法会影响结果和解释。图谱分析(GSA)是一种更直接的代数方法,可用于描述网络特性,这可能会导致更可靠的结果。在这项研究中,我们应用 GSA 对脑磁图(MEG)数据进行分析,以探索 AD 中的功能网络完整性。对 18 名阿尔茨海默病患者(年龄 67±9 岁,6 名女性)和 18 名健康对照者(年龄 66±9 岁,11 名女性)进行了静息状态 MEG 传感器水平测量。使用同步似然性进行功能连接分析,构建了加权无向图,然后进行 GSA,重点关注网络连接、同步能力和节点中心性。主要结果是大多数频带中的网络连接整体丧失和同步能力改变。特征向量中心性映射证实了顶叶区域的枢纽地位,并在 AD 患者的θ频段中显示了左侧颞区的低中心性,这与简易精神状态检查(全面认知功能测试)评分强烈相关(r=0.67,p=0.001)。总之,GSA 是一种理论上可靠的方法,能够检测 AD 中功能网络拓扑的破坏。除了先前报道的整体连接损失和顶叶区域枢纽地位外,还发现 AD 患者的网络同步能力受损和左侧颞区的临床相关中心性丧失。我们的研究结果表明,GSA 对于研究 AD 中改变的大脑网络拓扑和动力学非常有价值。