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A Resilient Low-Frequency Small-World Human Brain Functional Network with Highly Connected Association Cortical Hubs

机译:具有高度连接的关联皮层集线器的弹性低频小世界人脑功能网络

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摘要

Small-world properties have been demonstrated for many complex networks. Here, we applied the discrete wavelet transform to functional magnetic resonance imaging (fMRI) time series, acquired from healthy volunteers in the resting state, to estimate frequency-dependent correlation matrices characterizing functional connectivity between 90 cortical and subcortical regions. After thresholding the wavelet correlation matrices to create undirected graphs of brain functional networks, we found a small-world topology of sparse connections most salient in the low-frequency interval 0.03–0.06 Hz. Global mean path length (2.49) was approximately equivalent to a comparable random network, whereas clustering (0.53) was two times greater; similar parameters have been reported for the network of anatomical connections in the macaque cortex. The human functional network was dominated by a neocortical core of highly connected hubs and had an exponentially truncated power law degree distribution. Hubs included recently evolved regions of the heteromodal association cortex, with long-distance connections to other regions, and more cliquishly connected regions of the unimodal association and primary cortices; paralimbic and limbic regions were topologically more peripheral. The network was more resilient to targeted attack on its hubs than a comparable scale-free network, but about equally resilient to random error. We conclude that correlated, low-frequency oscillations in human fMRI data have a small-world architecture that probably reflects underlying anatomical connectivity of the cortex. Because the major hubs of this network are critical for cognition, its slow dynamics could provide a physiological substrate for segregated and distributed information processing.
机译:对于许多复杂的网络,已经证明了小世界属性。在这里,我们将离散小波变换应用于功能性磁共振成像(fMRI)时间序列,该时间序列是从处于静止状态的健康志愿者那里获得的,以估计表征90个皮层和皮层下区域之间功能连通性的频率相关矩阵。在对小波相关矩阵进行阈值处理以创建大脑功能网络的无向图之后,我们发现了一个稀疏连接的小世界拓扑,在低频区间0.03–0.06 Hz中最显着。全局平均路径长度(2.49)大约等于可比较的随机网络,而聚类(0.53)则大两倍。对于猕猴皮层中的解剖学连接网络,已经报道了类似的参数。人体功能网络由高度连接的集线器的新皮质核心控制,并且幂律度分布呈指数级截断。枢纽包括最近发展的异峰联合皮层区域,与其他区域的长距离连接,以及单峰联合和初级皮层的更紧密连接的区域;上,下缘和边缘区域在拓扑上更外围。与类似的无标度网络相比,该网络在其集线器上的目标攻击方面更具弹性,但在随机错误方面同样具有弹性。我们得出的结论是,人类fMRI数据中的相关低频振荡具有小世界的结构,该结构可能反映了皮层的底层解剖结构连通性。由于该网络的主要枢纽对于认知至关重要,因此其缓慢的动态变化可以为分离和分布式信息处理提供生理基础。

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