Division of Psychiatry, University of Edinburgh, Edinburgh EH10 5HF, UK.
Cereb Cortex. 2012 Jul;22(7):1530-41. doi: 10.1093/cercor/bhr221. Epub 2011 Aug 30.
The characterization of gray matter morphology of individual brains is an important issue in neuroscience. Graph theory has been used to describe cortical morphology, with networks based on covariation of gray matter volume or thickness between cortical areas across people. Here, we extend this research by proposing a new method that describes the gray matter morphology of an individual cortex as a network. In these large-scale morphological networks, nodes represent small cortical regions, and edges connect regions that have a statistically similar structure. The method was applied to a healthy sample (n = 14, scanned at 2 different time points). For all networks, we described the spatial degree distribution, average minimum path length, average clustering coefficient, small world property, and betweenness centrality (BC). Finally, we studied the reproducibility of all these properties. The networks showed more clustering than random networks and a similar minimum path length, indicating that they were "small world." The spatial degree and BC distributions corresponded closely to those from group-derived networks. All network property values were reproducible over the 2 time points examined. Our results demonstrate that intracortical similarities can be used to provide a robust statistical description of individual gray matter morphology.
个体大脑灰质形态的特征化是神经科学中的一个重要问题。图论已被用于描述皮质形态,其网络基于跨人群的皮质区域之间的灰质体积或厚度的协变。在这里,我们通过提出一种新的方法来扩展这项研究,该方法将个体皮质的灰质形态描述为一个网络。在这些大规模的形态网络中,节点代表小的皮质区域,而边缘连接具有统计学相似结构的区域。该方法应用于一个健康样本(n=14,在 2 个不同时间点扫描)。对于所有网络,我们描述了空间度分布、平均最短路径长度、平均聚类系数、小世界特性和介数中心性(BC)。最后,我们研究了所有这些特性的可重复性。与随机网络相比,这些网络的聚类程度更高,最短路径长度相似,表明它们是“小世界”。空间度和 BC 分布与从群组衍生的网络中的分布非常吻合。在检查的 2 个时间点上,所有网络特性值均具有可重复性。我们的结果表明,皮质内的相似性可用于对个体灰质形态进行稳健的统计描述。