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Time‐resolved detection of stimulus/task‐related networks via clustering of transient intersubject synchronization

机译:通过瞬态主体间同步的聚类来对时间进行刺激/任务相关网络的检测

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摘要

Several methods are available for the identification of functional networks of brain areas using functional magnetic resonance imaging (fMRI) time‐series. These typically assume a fixed relationship between the signal of the areas belonging to the same network during the entire time‐series (e.g., positive correlation between the areas belonging to the same network), or require a priori information about when this relationship may change (task‐dependent changes of connectivity). We present a fully data‐driven method that identifies transient network configurations that are triggered by the external input and that, therefore, include only regions involved in stimulus/task processing. Intersubject synchronization with short sliding time‐windows was used to identify if/when any area showed stimulus/task‐related responses. Next, a first clustering step grouped together areas that became engaged concurrently and repetitively during the time‐series (stimulus/task‐related networks). Finally, for each network, a second clustering step grouped together all the time‐windows with the same BOLD signal. The final output consists of a set of network configurations that show stimulus/task‐related activity at specific time‐points during the fMRI time‐series. We label these configurations: “brain modes” (bModes). The method was validated using simulated datasets and a real fMRI experiment with multiple tasks and conditions. Future applications include the investigation of brain functions using complex and naturalistic stimuli. Hum Brain Mapp 36:3404–3425, 2015. © >2015 The Authors Human Brain Mapping Published by Wiley Periodicals, Inc.
机译:有几种方法可以使用功能磁共振成像(fMRI)时间序列来识别大脑区域的功能网络。这些通常假设在整个时间序列内属于同一网络的区域的信号之间具有固定的关系(例如,属于同一网络的区域之间的正相关),或者需要有关该关系何时可能发生变化的先验信息(与任务有关的连接更改)。我们提出了一种完全由数据驱动的方法,该方法可以识别由外部输入触发的瞬态网络配置,因此仅包括与刺激/任务处理有关的区域。受试者间同步具有短的滑动时间窗口,用于识别是否/何时任何区域显示出与刺激/任务相关的响应。接下来,第一个聚类步骤将在时间序列(刺激/任务相关网络)中同时并反复参与的区域归为一组。最后,对于每个网络,第二个聚类步骤将所有时间窗口以相同的BOLD信号分组在一起。最终输出由一组网络配置组成,这些网络配置显示了功能磁共振成像时间序列中特定时间点的刺激/任务相关活动。我们将这些配置标记为:“大脑模式”(bModes)。该方法已使用模拟数据集和具有多个任务和条件的真实fMRI实验进行了验证。未来的应用包括使用复杂和自然的刺激研究脑功能。嗡嗡声大脑地图36:3404–3425,2015。©> 2015 The Authors Human Brain Mapping由Wiley Periodicals,Inc.发布

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