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首页> 外文期刊>International Journal of Neural Systems >Distinct Patterns of Functional Connectivity During the Comprehension of Natural, Narrative Speech
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Distinct Patterns of Functional Connectivity During the Comprehension of Natural, Narrative Speech

机译:在理解自然,叙事演讲过程中的功能性连接模式

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摘要

Recent continuous task studies, such as narrative speech comprehension, show that fluctuations in brain functional connectivity (FC) are altered and enhanced compared to the resting state. Here, we characterized the fluctuations in FC during comprehension of speech and time-reversed speech conditions. The correlations of Hilbert envelope of source-level EEG data were used to quantify FC between spatially separate brain regions. A symmetric multivariate leakage correction was applied to address the signal leakage issue before calculating FC. The dynamic FC was estimated based on a sliding time window. Then, principal component analysis (PCA) was performed on individually concatenated and temporally concatenated FC matrices to identify FC patterns. We observed that the mode of FC induced by speech comprehension can be characterized with a single principal component. The condition-specific FC demonstrated decreased correlations between frontal and parietal brain regions and increased correlations between frontal and temporal brain regions. The fluctuations of the condition-specific FC characterized by a shorter time demonstrated that dynamic FC also exhibited condition specificity over time. The FC is dynamically reorganized and FC dynamic pattern varies along a single mode of variation during speech comprehension. The proposed analysis framework seems valuable for studying the reorganization of brain networks during continuous task experiments.
机译:最近的持续任务研究,如叙述语音理解,表明与静止状态相比,脑功能连接(FC)的波动被改变和增强。在这里,我们在理解语音和时间反转的语音条件下表现了FC的波动。源级EEG数据的HILBERT包络的相关性用于量化空间分离的脑区之间的FC。应用对称多变量泄漏校正以在计算FC之前解决信号泄漏问题。基于滑动时间窗口估计动态FC。然后,对单独连接和时间级联的Fc矩阵进行主成分分析(PCA)以识别FC图案。我们观察到语音理解诱导的Fc模式可以用单个主要成分表征。特定情况特定的FC证明​​了额外脑区之间的相关性降低,并增加了正面和颞脑区之间的相关性。特异性特异性FC的波动表征较短的时间表明,动态Fc随着时间的推移也表现出条件特异性。 FC是动态重组的,并且FC动态模式在语音理解期间沿着单一变化模式变化。所提出的分析框架似乎有价值在持续任务实验期间研究脑网络的重组。

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