Mertens Nathalie, Sunaert Stefan, Van Laere Koen, Koole Michel
Nuclear Medicine and Molecular Imaging, Department of Imaging and Pathology, KU Leuven, Leuven, Belgium.
Translational MRI, Department of Imaging and Pathology, KU Leuven, Leuven, Belgium.
Front Aging Neurosci. 2022 Feb 9;13:798410. doi: 10.3389/fnagi.2021.798410. eCollection 2021.
Contrary to group-based brain connectivity analyses, the aim of this study was to construct individual brain metabolic networks to determine age-related effects on brain metabolic connectivity. Static 40-60 min [F]FDG positron emission tomography (PET) images of 67 healthy subjects between 20 and 82 years were acquired with an integrated PET-MR system. Network nodes were defined by brain parcellation using the Schaefer atlas, while connectivity strength between two nodes was determined by comparing the distribution of PET uptake values within each node using a Kullback-Leibler divergence similarity estimation (KLSE). After constructing individual brain networks, a linear and quadratic regression analysis of metabolic connectivity strengths within- and between-networks was performed to model age-dependency. In addition, the age dependency of metrics for network integration (characteristic path length), segregation (clustering coefficient and local efficiency), and centrality (number of hubs) was assessed within the whole brain and within predefined functional subnetworks. Overall, a decrease of metabolic connectivity strength with healthy aging was found within the whole-brain network and several subnetworks except within the somatomotor, limbic, and visual network. The same decrease of metabolic connectivity was found between several networks across the whole-brain network and the functional subnetworks. In terms of network topology, a less integrated and less segregated network was observed with aging, while the distribution and the number of hubs did not change with aging, suggesting that brain metabolic networks are not reorganized during the adult lifespan. In conclusion, using an individual brain metabolic network approach, a decrease in metabolic connectivity strength was observed with healthy aging, both within the whole brain and within several predefined networks. These findings can be used in a diagnostic setting to differentiate between age-related changes in brain metabolic connectivity strength and changes caused by early development of neurodegeneration.
与基于群体的脑连接性分析不同,本研究的目的是构建个体脑代谢网络,以确定年龄对脑代谢连接性的影响。使用集成式PET-MR系统获取了67名年龄在20至82岁之间的健康受试者40 - 60分钟的静态[F]FDG正电子发射断层扫描(PET)图像。网络节点通过使用Schaefer图谱对脑进行分区来定义,而两个节点之间的连接强度则通过使用库尔贝克-莱布勒散度相似性估计(KLSE)比较每个节点内PET摄取值的分布来确定。构建个体脑网络后,对网络内部和网络之间的代谢连接强度进行线性和二次回归分析,以模拟年龄依赖性。此外,还在全脑和预定义的功能子网内评估了网络整合(特征路径长度)、分离(聚类系数和局部效率)和中心性(枢纽数量)指标的年龄依赖性。总体而言,在全脑网络和几个子网中发现,除了躯体运动、边缘和视觉网络外,随着健康衰老,代谢连接强度降低。在全脑网络和功能子网的几个网络之间也发现了相同的代谢连接性降低情况。在网络拓扑方面,随着年龄增长,观察到网络的整合性和分离性降低,而枢纽的分布和数量并未随年龄变化,这表明脑代谢网络在成年期不会重新组织。总之,使用个体脑代谢网络方法,在全脑和几个预定义网络中均观察到随着健康衰老代谢连接强度降低。这些发现可用于诊断环境,以区分脑代谢连接强度的年龄相关变化和神经退行性变早期发展引起的变化。