Nathan Kline Institute for Psychiatric Research, Orangeburg, NY, USA.
Neuroimage. 2013 Aug 1;76:183-201. doi: 10.1016/j.neuroimage.2013.03.004. Epub 2013 Mar 15.
Functional connectomics is one of the most rapidly expanding areas of neuroimaging research. Yet, concerns remain regarding the use of resting-state fMRI (R-fMRI) to characterize inter-individual variation in the functional connectome. In particular, recent findings that "micro" head movements can introduce artifactual inter-individual and group-related differences in R-fMRI metrics have raised concerns. Here, we first build on prior demonstrations of regional variation in the magnitude of framewise displacements associated with a given head movement, by providing a comprehensive voxel-based examination of the impact of motion on the BOLD signal (i.e., motion-BOLD relationships). Positive motion-BOLD relationships were detected in primary and supplementary motor areas, particularly in low motion datasets. Negative motion-BOLD relationships were most prominent in prefrontal regions, and expanded throughout the brain in high motion datasets (e.g., children). Scrubbing of volumes with FD>0.2 effectively removed negative but not positive correlations; these findings suggest that positive relationships may reflect neural origins of motion while negative relationships are likely to originate from motion artifact. We also examined the ability of motion correction strategies to eliminate artifactual differences related to motion among individuals and between groups for a broad array of voxel-wise R-fMRI metrics. Residual relationships between motion and the examined R-fMRI metrics remained for all correction approaches, underscoring the need to covary motion effects at the group-level. Notably, global signal regression reduced relationships between motion and inter-individual differences in correlation-based R-fMRI metrics; Z-standardization (mean-centering and variance normalization) of subject-level maps for R-fMRI metrics prior to group-level analyses demonstrated similar advantages. Finally, our test-retest (TRT) analyses revealed significant motion effects on TRT reliability for R-fMRI metrics. Generally, motion compromised reliability of R-fMRI metrics, with the exception of those based on frequency characteristics - particularly, amplitude of low frequency fluctuations (ALFF). The implications of our findings for decision-making regarding the assessment and correction of motion are discussed, as are insights into potential differences among volume-based metrics of motion.
功能连接组学是神经影像学研究中发展最快的领域之一。然而,人们仍然对使用静息态 fMRI(R-fMRI)来描述功能连接组个体间的变化表示关注。特别是最近的研究发现,“微”头部运动会在 R-fMRI 指标中引入人为的个体间和组间差异,这引起了人们的关注。在这里,我们首先在前人对与给定头部运动相关的框架位移幅度的区域变化进行演示的基础上,对运动对 BOLD 信号的影响进行了全面的体素基检查(即运动-BOLD 关系)。在初级和辅助运动区检测到正的运动-BOLD 关系,特别是在低运动数据集。负的运动-BOLD 关系在额前区最为突出,并在高运动数据集(如儿童)中扩展到整个大脑。用 FD>0.2 清除卷可以有效地去除负相关,但不能去除正相关;这些发现表明,正相关可能反映了运动的神经起源,而负相关可能源于运动伪影。我们还检查了多种体素水平 R-fMRI 指标的运动校正策略,以消除个体间和组间与运动相关的人为差异。对于所有的校正方法,运动与所检查的 R-fMRI 指标之间的剩余关系仍然存在,这突显了在组水平上对运动效应进行共变的必要性。值得注意的是,全局信号回归减少了运动与基于相关性的 R-fMRI 指标个体间差异之间的关系;在组水平分析之前,对 R-fMRI 指标的主体水平图进行 Z 标准化(均值中心化和方差标准化),显示出类似的优势。最后,我们的测试-再测试(TRT)分析显示,运动对 R-fMRI 指标的 TRT 可靠性有显著影响。一般来说,运动降低了 R-fMRI 指标的可靠性,除了基于频率特征的指标(特别是低频波动的幅度)。我们讨论了这些发现对运动评估和校正决策的影响,以及对基于体积的运动指标之间潜在差异的认识。