Department of Biomedical Engineering, Georgia Institute of Technology and Emory University, Atlanta, Georgia, USA.
School of Electrical and Computer Engineering, Georgia Institute of Technology, Atlanta, Georgia, USA.
Magn Reson Med. 2023 Dec;90(6):2486-2499. doi: 10.1002/mrm.29824. Epub 2023 Aug 15.
In resting-state fMRI (rs-fMRI), the global signal average captures widespread fluctuations related to unwanted sources of variance such as motion and respiration, as well as widespread neural activity; however, relative contributions of neural and non-neural sources to the global signal remain poorly understood. This study sought to tackle this problem through the comparison of the BOLD global signal to an adjacent non-brain tissue signal, where neural activity was absent, from the same rs-fMRI scan obtained from anesthetized rats. In this dataset, motion was minimal and ventilation was phase-locked to image acquisition to minimize respiratory fluctuations. Data were acquired using three different anesthetics: isoflurane, dexmedetomidine, and a combination of dexmedetomidine and light isoflurane.
A power spectral density estimate, a voxel-wise spatial correlation via Pearson's correlation, and a co-activation pattern analysis were performed using the global signal and the non-brain tissue signal. Functional connectivity was calculated using Pearson's linear correlation on default mode network (DMN) regions.
We report differences in the spectral composition of the two signals and show spatial selectivity within DMN structures that show an increased correlation to the global signal and decreased intra-network connectivity after global signal regression. All of the observed differences between the global signal and the non-brain tissue signal were maintained across anesthetics.
These results show that the global signal is distinct from the noise contained in the tissue signal, as support for a neural contribution. This study provides a unique perspective to the contents of the global signal and their origins.
在静息态功能磁共振成像(rs-fMRI)中,全局信号平均值捕获了与运动和呼吸等不受欢迎的方差源以及广泛的神经活动相关的广泛波动;然而,神经和非神经源对全局信号的相对贡献仍不清楚。本研究通过比较来自麻醉大鼠相同 rs-fMRI 扫描的相邻无脑组织信号与 BOLD 全局信号来解决这个问题,该信号中不存在神经活动。在这个数据集,运动最小化,通气与图像采集同步,以最小化呼吸波动。数据是使用三种不同的麻醉剂采集的:异氟烷、右美托咪定和右美托咪定和轻度异氟烷的组合。
使用全局信号和无脑组织信号进行了功率谱密度估计、体素间 Pearson 相关性的空间相关性以及共激活模式分析。使用默认模式网络(DMN)区域的 Pearson 线性相关计算功能连接。
我们报告了两个信号的光谱组成差异,并显示了 DMN 结构内的空间选择性,这些结构与全局信号的相关性增加,全局信号回归后内部网络连接减少。在所有麻醉剂中,全局信号与无脑组织信号之间的观察到的差异都得到了维持。
这些结果表明,全局信号与组织信号中包含的噪声不同,支持神经贡献。本研究为全局信号的内容及其来源提供了独特的视角。