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结构度预测功能网络连接:一项多模态静息态 fMRI 和 MEG 研究。

Structural degree predicts functional network connectivity: a multimodal resting-state fMRI and MEG study.

机构信息

Department of Neurology, Neuroscience Campus Amsterdam, VU University Medical Center, Amsterdam, The Netherlands.

Department of Clinical Neurophysiology and Magnetoencephalography Center, Neuroscience Campus Amsterdam, VU University Medical Center, Amsterdam, The Netherlands.

出版信息

Neuroimage. 2014 Aug 15;97:296-307. doi: 10.1016/j.neuroimage.2014.04.038. Epub 2014 Apr 23.

Abstract

Communication between neuronal populations in the human brain is characterized by complex functional interactions across time and space. Recent studies have demonstrated that these functional interactions depend on the underlying structural connections at an aggregate level. Multiple imaging modalities can be used to investigate the relation between the structural connections between brain regions and their functional interactions at multiple timescales. We investigated if consistent modality-independent functional interactions take place between brain regions, and whether these can be accounted for by underlying structural properties. We used functional MRI (fMRI) and magnetoencephalography (MEG) recordings from a population of healthy adults together with a previously described structural network. A high overlap in resting-state functional networks was found in fMRI and especially alpha band MEG recordings. This overlap was characterized by a strongly interconnected functional core network in temporo-posterior brain regions. Anatomically realistically coupled neural mass models revealed that this strongly interconnected functional network emerges near the threshold for global synchronization. Most importantly, this functional core network could be explained by a trade-off between the product of the degrees of structurally-connected regions and the Euclidean distance between them. For both fMRI and MEG, the product of the degrees of connected regions was the most important predictor for functional network connectivity. Therefore, irrespective of the modality, these results indicate that a functional core network in the human brain is especially shaped by communication between high degree nodes of the structural network.

摘要

人脑神经元群体之间的通信以时间和空间上的复杂功能相互作用为特征。最近的研究表明,这些功能相互作用取决于在总体水平上的基础结构连接。多种成像方式可用于研究脑区之间的结构连接与其在多个时间尺度上的功能相互作用之间的关系。我们研究了脑区之间是否存在一致的、与模态无关的功能相互作用,以及这些功能相互作用是否可以用潜在的结构特性来解释。我们使用功能磁共振成像(fMRI)和脑磁图(MEG)记录了一群健康成年人的数据,同时还使用了之前描述的结构网络。在 fMRI 和特别是 alpha 波段 MEG 记录中,我们发现静息状态功能网络有很高的重叠。这种重叠的特点是颞后区具有强烈相互连接的功能核心网络。具有解剖学现实性的耦合神经质量模型表明,这种强烈相互连接的功能网络出现在全局同步的阈值附近。最重要的是,这个功能核心网络可以通过结构连接区域的度数的乘积与它们之间的欧几里得距离之间的权衡来解释。对于 fMRI 和 MEG,连接区域的度数的乘积是功能网络连通性的最重要预测因子。因此,无论模态如何,这些结果表明,人类大脑中的功能核心网络尤其受到结构网络中高度数节点之间的通信的影响。

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