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Detection of functional brain network reconfiguration during task-driven cognitive states

机译:在任务驱动的认知状态下检测功能性脑网络的重新配置

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摘要

Network science offers computational tools to elucidate the complex patterns of interactions evident in neuroimaging data. Recently, these tools have been used to detect dynamic changes in network connectivity that may occur at short time scales. The dynamics of fMRI connectivity, and how they differ across timescales, are far from understood. A simple way to interrogate dynamics at different timescales is to alter the size of the time window used to extract sequential (or rolling) measures of functional connectivity. Here, in n = 82 participants performing three distinct cognitive visual tasks in recognition memory and strategic attention, we subdivided regional BOLD time series into variable sized time windows and determined the impact of time window size on observed dynamics. Specifically, we applied a multilayer community detection algorithm to identify temporal communities and we calculated network flexibility to quantify changes in these communities over time. Within our frequency band of interest, large and small windows were associated with a narrow range of network flexibility values across the brain, while medium time windows were associated with a broad range of network flexibility values. Using medium time windows of size 75–100 s, we uncovered brain regions with low flexibility (considered core regions, and observed in visual and attention areas) and brain regions with high flexibility (considered periphery regions, and observed in subcortical and temporal lobe regions) via comparison to appropriate dynamic network null models. Generally, this work demonstrates the impact of time window length on observed network dynamics during task performance, offering pragmatic considerations in the choice of time window in dynamic network analysis. More broadly, this work reveals organizational principles of brain functional connectivity that are not accessible with static network approaches.
机译:网络科学提供了计算工具,以阐明神经影像数据中明显的相互作用的复杂模式。最近,这些工具已用于检测可能在短时间内发生的网络连接的动态变化。功能磁共振成像连接的动态性,以及它们在各个时间尺度上的差异,尚远未弄清。询问不同时间尺度上的动力学的一种简单方法是更改​​用于提取功能连接性的顺序(或滚动)度量的时间窗口的大小。在这里,在n = 82位参与者在识别记忆和战略注意力中执行三个不同的认知视觉任务时,我们将区域BOLD时间序列细分为可变大小的时间窗口,并确定了时间窗口大小对观察到的动力学的影响。具体来说,我们应用了多层社区检测算法来识别时间社区,并计算了网络灵活性以量化这些社区随时间的变化。在我们感兴趣的频段内,大窗口和小窗口与整个大脑的网络柔韧性值范围狭窄相关,而中等时间窗口与广泛的网络柔韧性值范围相关。使用大小为75–100 s的中等时间窗口,我们发现了柔韧性低的大脑区域(被认为是核心区域,并且在视觉和注意力区域中观察到)和柔韧性高的大脑区域(被认为是周边区域,并且在皮层和颞叶区域中观察到了) )与适当的动态网络空模型进行比较。通常,这项工作演示了任务执行期间时间窗长度对观察到的网络动态的影响,在动态网络分析中选择时间窗时提供了务实的考虑。从更广泛的意义上讲,这项工作揭示了大脑功能连接的组织原理,而静态网络方法无法访问这些原理。

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