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Dependency Network Analysis (DEPNA) Reveals Context Related Influence of Brain Network Nodes

机译:依赖网络分析(DEPNA)揭示了与大脑网络节点相关的上下文影响

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摘要

Communication between and within brain regions is essential for information processing within functional networks. The current methods to determine the influence of one region on another are either based on temporal resolution, or require a predefined model for the connectivity direction. However these requirements are not always achieved, especially in fMRI studies, which have poor temporal resolution. We thus propose a new graph theory approach that focuses on the correlation influence between selected brain regions, entitled Dependency Network Analysis (DEPNA). Partial correlations are used to quantify the level of influence of each node during task performance. As a proof of concept, we conducted the DEPNA on simulated datasets and on two empirical motor and working memory fMRI tasks. The simulations revealed that the DEPNA correctly captures the network’s hierarchy of influence. Applying DEPNA to the functional tasks reveals the dynamics between specific nodes as would be expected from prior knowledge. To conclude, we demonstrate that DEPNA can capture the most influencing nodes in the network, as they emerge during specific cognitive processes. This ability opens a new horizon for example in delineating critical nodes for specific clinical interventions.
机译:大脑区域之间和内部的通信对于功能网络内的信息处理至关重要。确定一个区域对另一区域的影响的当前方法要么基于时间分辨率,要么需要针对连接方向的预定义模型。但是,这些要求并非总是能达到的,特别是在时间分辨力较差的fMRI研究中。因此,我们提出了一种新的图论方法,该方法关注于选定的大脑区域之间的相关影响,称为依赖网络分析(DEPNA)。偏相关用于量化任务执行过程中每个节点的影响程度。作为概念证明,我们在模拟数据集以及两个经验性运动和工作记忆功能性fMRI任务上进行了DEPNA。仿真显示,DEPNA正确地捕捉了网络的影响等级。将DEPNA应用于功能任务可以揭示特定节点之间的动态,这是现有知识所期望的。总之,我们证明DEPNA可以捕获网络中影响最大的节点,因为它们是在特定的认知过程中出现的。这种能力为例如划定特定临床干预的关键节点开辟了新的视野。

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