Center for Functional MRI, University of California San Diego, 9500 Gilman Drive MC 0677, La Jolla, CA, 92093, USA; Department of Electrical and Computer Engineering, University of California San Diego, 9500 Gilman Drive, La Jolla, CA, 92093, USA.
Department of Electrical and Computer Engineering, University of California San Diego, 9500 Gilman Drive, La Jolla, CA, 92093, USA.
Neuroimage. 2019 Jan 1;184:1005-1031. doi: 10.1016/j.neuroimage.2018.09.024. Epub 2018 Sep 14.
In resting-state fMRI, dynamic functional connectivity (DFC) measures are used to characterize temporal changes in the brain's intrinsic functional connectivity. A widely used approach for DFC estimation is the computation of the sliding window correlation between blood oxygenation level dependent (BOLD) signals from different brain regions. Although the source of temporal fluctuations in DFC estimates remains largely unknown, there is growing evidence that they may reflect dynamic shifts between functional brain networks. At the same time, recent findings suggest that DFC estimates might be prone to the influence of nuisance factors such as the physiological modulation of the BOLD signal. Therefore, nuisance regression is used in many DFC studies to regress out the effects of nuisance terms prior to the computation of DFC estimates. In this work we examined the relationship between seed-specific sliding window correlation-based DFC estimates and nuisance factors. We found that DFC estimates were significantly correlated with temporal fluctuations in the magnitude (norm) of various nuisance regressors. Strong correlations between the DFC estimates and nuisance regressor norms were found even when the underlying correlations between the nuisance and fMRI time courses were relatively small. We then show that nuisance regression does not necessarily eliminate the relationship between DFC estimates and nuisance norms, with significant correlations observed between the DFC estimates and nuisance norms even after nuisance regression. We present theoretical bounds on the difference between DFC estimates obtained before and after nuisance regression and relate these bounds to limitations in the efficacy of nuisance regression with regards to DFC estimates.
在静息态 fMRI 中,动态功能连接 (DFC) 测量用于描述大脑内在功能连接的时间变化。一种广泛使用的 DFC 估计方法是计算来自不同脑区的血氧水平依赖 (BOLD) 信号的滑动窗口相关。尽管 DFC 估计中时间波动的来源在很大程度上仍然未知,但越来越多的证据表明它们可能反映了功能脑网络之间的动态变化。同时,最近的研究结果表明,DFC 估计可能容易受到干扰因素的影响,例如 BOLD 信号的生理调制。因此,在许多 DFC 研究中,使用干扰回归来在计算 DFC 估计之前回归干扰项的影响。在这项工作中,我们研究了基于种子的滑动窗口相关 DFC 估计与干扰因素之间的关系。我们发现 DFC 估计与各种干扰回归量幅度(范数)的时间波动显著相关。即使在干扰和 fMRI 时间序列之间的潜在相关性相对较小的情况下,也发现了 DFC 估计与干扰回归量范数之间的强相关性。然后,我们表明干扰回归不一定消除 DFC 估计与干扰范数之间的关系,即使在干扰回归后,仍然观察到 DFC 估计与干扰范数之间的显著相关性。我们给出了干扰回归前后 DFC 估计之间差异的理论界限,并将这些界限与干扰回归对 DFC 估计的有效性限制联系起来。