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A dynamic Bayesian network analysis of functional connectivity during a language listening comprehension task

机译:一种动态贝叶斯网络在语言听力理解中的功能连通性网络分析

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We aim to characterize functional connectivity during a listening comprehension task in terms of fit to common network topology models. The functional connectivity is expressed as a network structure which is reconstructed from cerebral blood volume measurements. The cerebral blood volume in the frontal lobe is measured using functional near-infrared spectroscopy (NIRS). Based on the reconstructed functional network structure, we discuss whether the functional connectivity has a scale-free or random graph structure. The feasibility of the reconstructed network is evaluated based on the distribution of the number of edges at nodes. In order to validate our proposed model, two language listening comprehension tasks were presented to subjects and the feasibility of the model structure is discussed. The experimental results suggest that the reconstructed functional connectivity network is more likely to be a scale-free network with an “ultra-small” world than a random network.
机译:我们的目标是在拟合到普通网络拓扑模型期间在听力理解任务中表征功能连接。功能连接表示为从脑血容量测量重建的网络结构。使用功能近红外光谱(NIRS)测量额叶中的脑血容量。基于重建的功能网络结构,我们讨论功能连接是否具有无垢或随机图结构。基于节点处的边缘数的分布评估重建网络的可行性。为了验证我们所提出的模型,向受试者提出了两种语言听力理解任务,讨论了模型结构的可行性。实验结果表明,重建的功能连接网络更有可能是无尺度的网络,其与随机网络的“超小”世界。

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