Department of Bioengineering, University of Pennsylvania, Philadelphia, PA, 19104, USA.
Oral & Maxillofacial Surgery, University of Pennsylvania School of Medicine, Philadelphia, PA, 19104, USA.
Ann Biomed Eng. 2018 Jul;46(7):1001-1012. doi: 10.1007/s10439-018-2022-x. Epub 2018 Apr 11.
Inter-subject networks are used to model correlations between brain regions and are particularly useful for metabolic imaging techniques, like 18F-2-deoxy-2-(18F)fluoro-D-glucose (FDG) positron emission tomography (PET). Since FDG PET typically produces a single image, correlations cannot be calculated over time. Little focus has been placed on the basic properties of inter-subject networks and if they are affected by group size and image normalization. FDG PET images were acquired from rats (n = 18), normalized by whole brain, visual cortex, or cerebellar FDG uptake, and used to construct correlation matrices. Group size effects on network stability were investigated by systematically adding rats and evaluating local network connectivity (node strength and clustering coefficient). Modularity and community structure were also evaluated in the differently normalized networks to assess meso-scale network relationships. Local network properties are stable regardless of normalization region for groups of at least 10. Whole brain-normalized networks are more modular than visual cortex- or cerebellum-normalized network (p < 0.00001); however, community structure is similar at network resolutions where modularity differs most between brain and randomized networks. Hierarchical analysis reveals consistent modules at different scales and clustering of spatially-proximate brain regions. Findings suggest inter-subject FDG PET networks are stable for reasonable group sizes and exhibit multi-scale modularity.
跨个体网络被用于建模脑区之间的相关性,对于代谢成像技术,如 18F-2-脱氧-2-(18F)氟代-D-葡萄糖(FDG)正电子发射断层扫描(PET),特别有用。由于 FDG PET 通常只生成一张图像,因此无法随时间计算相关性。很少有人关注跨个体网络的基本特性,以及它们是否受到组大小和图像归一化的影响。从大鼠(n=18)中获取 FDG PET 图像,通过全脑、视皮层或小脑 FDG 摄取进行归一化,并用于构建相关矩阵。通过系统地添加大鼠并评估局部网络连接(节点强度和聚类系数),研究了组大小对网络稳定性的影响。还评估了不同归一化网络中的模块性和社区结构,以评估中尺度网络关系。局部网络特性是稳定的,与归一化区域无关,对于至少 10 个组。全脑归一化网络比视皮层或小脑归一化网络更具有模块性(p<0.00001);然而,在模块性在脑和随机网络之间差异最大的网络分辨率下,社区结构是相似的。层次分析揭示了不同尺度上一致的模块和空间上邻近的脑区聚类。研究结果表明,跨个体 FDG PET 网络在合理的组大小下是稳定的,并表现出多尺度模块性。