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首页> 外文期刊>The Journal of Neuroscience: The Official Journal of the Society for Neuroscience >Network analysis reveals increased integration during emotional and motivational processing
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Network analysis reveals increased integration during emotional and motivational processing

机译:网络分析表明,在情感和动机处理过程中集成度不断提高

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In recent years, a large number of human studies have investigated large-scale network properties of the brain, typically during the resting state. A critical gap in the knowledge base concerns the understanding of network properties of a focused set of brain regions during task conditions engaging these regions. Although emotion and motivation recruit many brain regions, it is currently unknown how they affect network-level properties of inter-region interactions. In the present study, we sought to characterize network structure during "mini-states" engendered by emotional and motivational cues investigated in separate studies. To do so, we used graph-theoretic network analysis to probe network-, community-, and node-level properties of the trial-by-trial functional connectivity between regions of interest. We used methods that operate on weighted graphs that make use of the continuous information of connectivity strength. In both the emotion and motivation datasets, global efficiency increased and decomposability decreased. Thus, processing became less segregated with the context signaled by the cue (potential shock or potential reward). Our findings also revealed several important features of inter-community communication, including notable contributions of the bed nucleus of the stria terminalis, anterior insula, and thalamus during threat and of the caudate and nucleus accumbens during reward. Together, the results suggest that one way in which emotional and motivational processing affect brain responses is by enhancing signal communication between regions, especially between cortical and subcortical ones.
机译:近年来,大量的人体研究已经研究了大脑的大规模网络特性,通常是在静止状态下。知识库中的一个重要缺口涉及在与这些区域接合的任务条件下对集中的大脑区域集合的网络属性的理解。尽管情绪和动机会吸引许多大脑区域,但目前尚不清楚它们如何影响区域间交互作用的网络级属性。在本研究中,我们试图表征在单独研究中研究的情绪和动机线索引起的“迷你状态”下的网络结构。为此,我们使用了图论网络分析来探究感兴趣区域之间逐项功能连接的网络,社区和节点级别的属性。我们使用对加权图进行操作的方法,这些方法利用了连接强度的连续信息。在情绪和动机数据集中,整体效率提高,可分解性下降。因此,处理变得与线索提示的上下文(潜在的冲击或潜在的奖励)更加分离。我们的发现还揭示了社区间交流的几个重要特征,包括在威胁时纹状体末梢,前岛和丘脑的床核以及在奖励时尾状核和伏隔核的显着贡献。总之,结果表明,情绪和动机处理影响大脑反应的一种方式是增强区域之间,尤其是皮质和皮质下区域之间的信号交流。

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