论文标题
揭示人类连接的不变结构组织
Uncovering the invariant structural organization of the human connectome
论文作者
论文摘要
为了理解人脑的复杂认知功能,必须研究结构连接组,即,通过轴突途径相互接线。但是,人大脑中的高度可塑性和交叉人口变化使得很难将结构联系起来,从而激发了连通性中寻找不变模式的搜索。同时,人群内的变异性可以提供有关生成机制的信息。在本文中,我们分析了从包含196个受试者的数据库获得的人类结构连接组的连接拓扑和链接重量分布。通过证明各个链接的发生频率与整个人群的平均体重之间的对应关系,我们表明大脑连线的过程并非独立于确定连接组的链路权重的过程。此外,使用在整个总体上与每个链接相关的权重的特定分布,我们表明,特定于链接的单个参数可以说明其发生的频率,以及其在不同受试者之间的权重变化。该参数为每个连接组中的链路权重提供了``重新恢复''的基础,从而使我们获得了代表人脑的通用网络,这与连接组上的简单平均值不同。我们通过在相应结构连接组的每个顶点上实现神经质量模型来获得功能连接。通过与经验功能性脑网络进行比较,我们证明了缩放过程产生了更紧密的结构功能对应关系。最后,我们表明代表网络可以分解为在整个人群中稳定和高度可变的上层建筑的基础组件。
In order to understand the complex cognitive functions of the human brain, it is essential to study the structural connectome, i.e., the wiring of different brain regions to each other through axonal pathways. However, the high degree of plasticity and cross-population variability in human brains makes it difficult to relate structure to function, motivating a search for invariant patterns in the connectivity. At the same time, variability within a population can provide information about generative mechanisms. In this paper we analyze the connection topology and link-weight distribution of human structural connectomes obtained from a database comprising 196 subjects. By demonstrating a correspondence between the occurrence frequency of individual links and their average weight across the population, we show that the process by which the brain is wired is not independent of the process by which the link weights of the connectome are determined. Furthermore, using the specific distribution of the weights associated with each link over the entire population, we show that a single parameter that is specific to a link can account for its frequency of occurrence, as well as, the variation in its weight across different subjects. This parameter provides a basis for ``rescaling'' the link weights in each connectome, allowing us to obtain a generic network representative of the human brain, distinct from a simple average over the connectomes. We obtain functional connectomes by implementing a neural mass model on each of the vertices of the corresponding structural connectomes. By comparing with the empirical functional brain networks, we demonstrate that the rescaling procedure yields a closer structure-function correspondence. Finally, we show that the representative network can be decomposed into a basal component that is stable across the population and a highly variable superstructure.