Gong Yujing, Wu Huijun, Li Jingyuan, Wang Nizhuan, Liu Hanjun, Tang Xiaoying
Department of Electrical and Electronic Engineering, Southern University of Science and Technology, Shenzhen, China.
School of Biomedical Engineering, Health Science Center, Shenzhen University, Shenzhen, China.
Front Neurosci. 2018 Dec 12;12:942. doi: 10.3389/fnins.2018.00942. eCollection 2018.
In this work, we systematically analyzed the effects of various nodal definitions, as determined by a multi-granularity whole-brain segmentation scheme, upon the topological architecture of the human brain functional network using the resting-state functional magnetic resonance imaging data of 19 healthy, young subjects. A number of functional networks were created with their nodes defined according to two types of anatomical definitions (Type I and Type II) each of which consists of five granularity levels of whole brain segmentations with each level linked through ontology-based, hierarchical, structural relationships. Topological properties were computed for each network and then compared across levels within the same segmentation type as well as between Type I and Type II. Certain network architecture patterns were observed in our study: (1) As the granularity changes, the absolute values of each node's nodal degree and nodal betweenness change accordingly but the relative values within a single network do not change considerably; (2) The average nodal degree is generally affected by the sparsity level of the network whereas the other topological properties are more specifically affected by the nodal definitions; (3) Within the same ontology relationship type, as the granularity decreases, the network becomes more efficient at information propagation; (4) The small-worldness that we observe is an intrinsic property of the brain's resting-state functional network, independent of the ontology type and the granularity level. Furthermore, we validated the aforementioned conclusions and measured the reproducibility of this multi-granularity network analysis pipeline using another dataset of 49 healthy young subjects that had been scanned twice.
在这项研究中,我们使用19名健康年轻受试者的静息态功能磁共振成像数据,系统地分析了由多粒度全脑分割方案确定的各种节点定义对人类脑功能网络拓扑结构的影响。根据两种解剖学定义(I型和II型)创建了多个功能网络,每种定义都由全脑分割的五个粒度级别组成,每个级别通过基于本体的分层结构关系相连。计算每个网络的拓扑属性,然后在同一分割类型内的不同级别之间以及I型和II型之间进行比较。在我们的研究中观察到了某些网络架构模式:(1)随着粒度的变化,每个节点的节点度和节点介数的绝对值相应变化,但单个网络内的相对值变化不大;(2)平均节点度通常受网络稀疏程度的影响,而其他拓扑属性更具体地受节点定义的影响;(3)在相同的本体关系类型内,随着粒度的降低,网络在信息传播方面变得更高效;(4)我们观察到的小世界特性是脑静息态功能网络的固有属性,与本体类型和粒度级别无关。此外,我们验证了上述结论,并使用另一个对49名健康年轻受试者进行了两次扫描的数据集,测量了这种多粒度网络分析管道的可重复性。