Cardiff University Brain Research Imaging Centre, School of Psychology, Cardiff University, Cardiff, CF10 3AT, UK.
Neuroimage. 2013 Oct 15;80:349-59. doi: 10.1016/j.neuroimage.2013.04.001. Epub 2013 Apr 6.
The goal of resting-state functional magnetic resonance imaging (fMRI) is to investigate the brain's functional connections by using the temporal similarity between blood oxygenation level dependent (BOLD) signals in different regions of the brain "at rest" as an indicator of synchronous neural activity. Since this measure relies on the temporal correlation of fMRI signal changes between different parts of the brain, any non-neural activity-related process that affects the signals will influence the measure of functional connectivity, yielding spurious results. To understand the sources of these resting-state fMRI confounds, this article describes the origins of the BOLD signal in terms of MR physics and cerebral physiology. Potential confounds arising from motion, cardiac and respiratory cycles, arterial CO₂ concentration, blood pressure/cerebral autoregulation, and vasomotion are discussed. Two classes of techniques to remove confounds from resting-state BOLD time series are reviewed: 1) those utilising external recordings of physiology and 2) data-based cleanup methods that only use the resting-state fMRI data itself. Further methods that remove noise from functional connectivity measures at a group level are also discussed. For successful interpretation of resting-state fMRI comparisons and results, noise cleanup is an often over-looked but essential step in the analysis pipeline.
静息态功能磁共振成像(fMRI)的目的是通过使用大脑不同区域的血氧水平依赖(BOLD)信号在“静息”状态下的时间相似性作为同步神经活动的指标来研究大脑的功能连接。由于这种测量依赖于大脑不同部位的 fMRI 信号变化之间的时间相关性,任何与非神经活动相关的过程都会影响功能连接的测量,从而产生虚假结果。为了了解这些静息态 fMRI 混杂因素的来源,本文从磁共振物理学和大脑生理学的角度描述了 BOLD 信号的起源。讨论了可能由运动、心脏和呼吸周期、动脉 CO₂浓度、血压/脑自动调节和血管运动引起的混杂因素。回顾了从静息态 BOLD 时间序列中去除混杂因素的两类技术:1)利用生理学的外部记录,2)仅使用静息态 fMRI 数据本身的数据驱动清理方法。还讨论了在组水平上从功能连接测量中去除噪声的进一步方法。对于成功解释静息态 fMRI 比较和结果,噪声清理是分析管道中经常被忽视但必不可少的步骤。