Chang Catie, Glover Gary H
Department of Electrical Engineering, Stanford University, Stanford, CA 94305-5488, USA.
Neuroimage. 2009 Oct 1;47(4):1448-59. doi: 10.1016/j.neuroimage.2009.05.012. Epub 2009 May 14.
Previous studies have reported that the spontaneous, resting-state time course of the default-mode network is negatively correlated with that of the "task-positive network", a collection of regions commonly recruited in demanding cognitive tasks. However, all studies of negative correlations between the default-mode and task-positive networks have employed some form of normalization or regression of the whole-brain average signal ("global signal"); these processing steps alter the time series of voxels in an uninterpretable manner as well as introduce spurious negative correlations. Thus, the extent of negative correlations with the default mode network without global signal removal has not been well characterized, and it is has recently been hypothesized that the apparent negative correlations in many of the task-positive regions could be artifactually induced by global signal pre-processing. The present study aimed to examine negative and positive correlations with the default-mode network when model-based corrections for respiratory and cardiac noise are applied in lieu of global signal removal. Physiological noise correction consisted of (1) removal of time-locked cardiac and respiratory artifacts using RETROICOR (Glover, G.H., Li, T.Q., Ress, D., 2000. Image-based method for retrospective correction of physiological motion effects in fMRI: RETROICOR. Magn. Reson. Med. 44, 162-167), and (2) removal of low-frequency respiratory and heart rate variations by convolving these waveforms with pre-determined transfer functions (Birn et al., 2008; Chang et al., 2009) and projecting the resulting two signals out of the data. It is demonstrated that negative correlations between the default-mode network and regions of the task-positive network are present in the majority of individual subjects both with and without physiological noise correction. Physiological noise correction increased the spatial extent and magnitude of negative correlations, yielding negative correlations within task-positive regions at the group-level (p<0.05, uncorrected; no regions at the group level were significant at FDR=0.05). Furthermore, physiological noise correction caused region-specific decreases in positive correlations within the default-mode network, reducing apparent false positives. It was observed that the low-frequency respiratory volume and cardiac rate regressors used within the physiological noise correction algorithm displayed significant (but not total) shared variance with the global signal, and constitute a model-based alternative to correcting for non-neural global noise.
以往的研究报告称,默认模式网络的自发静息态时间进程与“任务积极网络”的时间进程呈负相关,“任务积极网络”是一组在要求较高的认知任务中通常会被激活的脑区。然而,所有关于默认模式网络与任务积极网络之间负相关的研究都采用了某种形式的全脑平均信号归一化或回归(“全局信号”);这些处理步骤以一种无法解释的方式改变了体素的时间序列,同时还引入了虚假的负相关。因此,在不去除全局信号的情况下,与默认模式网络的负相关程度尚未得到很好的描述,最近有人提出,许多任务积极区域中明显的负相关可能是由全局信号预处理人为诱导的。本研究旨在探讨在应用基于模型的呼吸和心脏噪声校正来替代全局信号去除时,与默认模式网络的负相关和正相关情况。生理噪声校正包括:(1)使用RETROICOR(Glover, G.H., Li, T.Q., Ress, D., 2000.基于图像的功能磁共振成像中生理运动效应的回顾性校正方法:RETROICOR.磁共振成像杂志.44, 162 - 167)去除与时间锁定的心脏和呼吸伪影,以及(2)通过将这些波形与预先确定的传递函数进行卷积(Birn等人,2008年;Chang等人,2009年)并从数据中投影出由此产生的两个信号,去除低频呼吸和心率变化。结果表明,无论是否进行生理噪声校正,大多数个体受试者的默认模式网络与任务积极网络区域之间都存在负相关。生理噪声校正增加了负相关的空间范围和幅度,在组水平上任务积极区域内产生了负相关(p < 0.05,未校正;在FDR = 0.05时,组水平上没有区域显著)。此外,生理噪声校正导致默认模式网络内正相关的区域特异性降低,减少了明显的假阳性。研究发现,生理噪声校正算法中使用的低频呼吸量和心率回归因子与全局信号显示出显著(但非完全)的共享方差,并构成了一种基于模型的校正非神经全局噪声的替代方法。