Schirmer Markus D, Chung Ai Wern, Grant P Ellen, Rost Natalia S
Stroke Division & Massachusetts General Hospital, J. Philip Kistler Stroke Research Center, Harvard Medical School, Boston, MA, USA.
Fetal-Neonatal Neuroimaging & Developmental Science Center, Division of Newborn Medicine, Boston Children's Hospital, Harvard Medical School, Boston, MA, USA.
Netw Neurosci. 2019 Jul 1;3(3):792-806. doi: 10.1162/netn_a_00081. eCollection 2019.
Principles of network topology have been widely studied in the human connectome. Of particular interest is the modularity of the human brain, where the connectome is divided into subnetworks from which changes with development, aging or disease can be investigated. We present a weighted network measure, the Network Dependency Index (NDI), to identify an individual region's importance to the global functioning of the network. Importantly, we utilize NDI to differentiate four subnetworks (Tiers) in the human connectome following Gaussian mixture model fitting. We analyze the topological aspects of each subnetwork with respect to age and compare it to rich club-based subnetworks (rich club, feeder, and seeder). Our results first demonstrate the efficacy of NDI to identify more consistent, central nodes of the connectome across age groups, when compared with the rich club framework. Stratifying the connectome by NDI led to consistent subnetworks across the life-span, revealing distinct patterns associated with age where, for example, the key relay nuclei and cortical regions are contained in a subnetwork with highest NDI. The divisions of the human connectome derived from our data-driven NDI framework have the potential to reveal topological alterations described by network measures through the life-span.
网络拓扑原理在人类连接组学中得到了广泛研究。特别令人感兴趣的是人类大脑的模块化,其中连接组被划分为子网,通过这些子网可以研究随着发育、衰老或疾病而发生的变化。我们提出了一种加权网络度量,即网络依赖指数(NDI),以确定个体区域对网络全局功能的重要性。重要的是,我们利用NDI在高斯混合模型拟合后区分人类连接组中的四个子网(层级)。我们分析了每个子网相对于年龄的拓扑特征,并将其与基于富俱乐部的子网(富俱乐部、馈线和种子)进行比较。我们的结果首先证明,与富俱乐部框架相比,NDI能够在不同年龄组中识别出连接组中更一致、更核心的节点。通过NDI对连接组进行分层,可在整个生命周期内得到一致的子网,揭示出与年龄相关的不同模式,例如,关键中继核和皮质区域包含在NDI最高的子网中。我们的数据驱动型NDI框架得出的人类连接组划分,有可能揭示网络度量在整个生命周期中描述的拓扑变化。