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The impact of global signal regression on resting state correlations: are anti-correlated networks introduced?

机译:全局信号回归对静止状态相关性的影响:是否引入了反相关网络?

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Low-frequency fluctuations in fMRI signal have been used to map several consistent resting state networks in the brain. Using the posterior cingulate cortex as a seed region, functional connectivity analyses have found not only positive correlations in the default mode network but negative correlations in another resting state network related to attentional processes. The interpretation is that the human brain is intrinsically organized into dynamic, anti-correlated functional networks. Global variations of the BOLD signal are often considered nuisance effects and are commonly removed using a general linear model (GLM) technique. This global signal regression method has been shown to introduce negative activation measures in standard fMRI analyses. The topic of this paper is whether such a correction technique could be the cause of anti-correlated resting state networks in functional connectivity analyses. Here we show that, after global signal regression, correlation values to a seed voxel must sum toa negative value. Simulations also show that small phase differences between regions can lead to spurious negative correlation values. A combination breath holding and visual task demonstrates that the relative phase of global and local signals can affect connectivity measures and that, experimentally, global signal regression leads to bell-shaped correlation value distributions, centred on zero. Finally, analyses of negatively correlated networks in resting state data show that global signal regression is most likely the cause of anti-correlations. These results call into question the interpretation of negatively correlated regions in the brain when using global signal regression as an initial processing step.
机译:fMRI信号的低频波动已被用来绘制大脑中几个一致的静止状态网络。使用后扣带回皮层作为种子区域,功能连通性分析不仅发现默认模式网络中的正相关,而且还发现了另一个与注意力过程相关的静止状态网络中的负相关。解释是人脑本质上是组织成动态的,反相关的功能网络。 BOLD信号的全局变化通常被认为是令人讨厌的影响,通常使用通用线性模型(GLM)技术消除。已经表明,这种全局信号回归方法在标准fMRI分析中引入了负激活措施。本文的主题是在功能连通性分析中,这种校正技术是否可能成为反相关静止状态网络的原因。在这里,我们表明,在全局信号回归之后,与种子体素的相关值必须加和为负值。仿真还表明,区域之间的小相位差会导致虚假的负相关值。屏气和视觉任务的结合表明,全局信号和局部信号的相对相位会影响连通性度量,并且在实验上,全局信号回归会导致以零为中心的钟形相关值分布。最后,对静止状态数据中负相关网络的分析表明,全局信号回归最有可能是反相关的原因。当使用全局信号回归作为初始处理步骤时,这些结果令人质疑大脑中负相关区域的解释。

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