Center for Medical Physics and Biomedical Engineering, Medical University of Vienna, Vienna, Austria; MR Centre of Excellence, Medical University of Vienna, Vienna, Austria; Department of Statistics and Probability Theory, Vienna University of Technology, Vienna, Austria.
Department of Psychiatry and Psychotherapy, Medical University of Vienna, Vienna, Austria.
PLoS One. 2014 Apr 11;9(4):e93375. doi: 10.1371/journal.pone.0093375. eCollection 2014.
In order to assess whole-brain resting-state fluctuations at a wide range of frequencies, resting-state fMRI data of 20 healthy subjects were acquired using a multiband EPI sequence with a low TR (354 ms) and compared to 20 resting-state datasets from standard, high-TR (1800 ms) EPI scans. The spatial distribution of fluctuations in various frequency ranges are analyzed along with the spectra of the time-series in voxels from different regions of interest. Functional connectivity specific to different frequency ranges (<0.1 Hz; 0.1-0.25 Hz; 0.25-0.75 Hz; 0.75-1.4 Hz) was computed for both the low-TR and (for the two lower-frequency ranges) the high-TR datasets using bandpass filters. In the low-TR data, cortical regions exhibited highest contribution of low-frequency fluctuations and the most marked low-frequency peak in the spectrum, while the time courses in subcortical grey matter regions as well as the insula were strongly contaminated by high-frequency signals. White matter and CSF regions had highest contribution of high-frequency fluctuations and a mostly flat power spectrum. In the high-TR data, the basic patterns of the low-TR data can be recognized, but the high-frequency proportions of the signal fluctuations are folded into the low frequency range, thus obfuscating the low-frequency dynamics. Regions with higher proportion of high-frequency oscillations in the low-TR data showed flatter power spectra in the high-TR data due to aliasing of the high-frequency signal components, leading to loss of specificity in the signal from these regions in high-TR data. Functional connectivity analyses showed that there are correlations between resting-state signal fluctuations of distant brain regions even at high frequencies, which can be measured using low-TR fMRI. On the other hand, in the high-TR data, loss of specificity of measured fluctuations leads to lower sensitivity in detecting functional connectivity. This underlines the advantages of low-TR EPI sequences for resting-state and potentially also task-related fMRI experiments.
为了评估大范围频率的全脑静息状态波动,使用具有低 TR(354 ms)的多频带 EPI 序列获取 20 名健康受试者的静息状态 fMRI 数据,并将其与来自标准高 TR(1800 ms)EPI 扫描的 20 个静息状态数据集进行比较。分析了不同频率范围内的波动的空间分布以及来自不同感兴趣区域的体素的时间序列的谱。使用带通滤波器为低 TR 和(对于两个较低频率范围)高 TR 数据集计算了特定于不同频率范围(<0.1 Hz;0.1-0.25 Hz;0.25-0.75 Hz;0.75-1.4 Hz)的功能连接。在低 TR 数据中,皮质区域显示出低频波动的最高贡献和谱中的最明显的低频峰,而皮质下灰质区域和脑岛的时间过程则受到高频信号的强烈污染。白质和 CSF 区域具有最高的高频波动贡献和大部分平坦的功率谱。在高 TR 数据中,可以识别出低 TR 数据的基本模式,但信号波动的高频比例被折叠到低频范围内,从而模糊了低频动态。由于高频信号分量的混叠,低 TR 数据中高频振荡比例较高的区域在高 TR 数据中显示出更平坦的功率谱,从而导致这些区域在高 TR 数据中的信号特异性丧失。功能连接分析表明,即使在高频下,遥远脑区的静息状态信号波动之间也存在相关性,可以使用低 TR fMRI 进行测量。另一方面,在高 TR 数据中,测量波动的特异性丧失导致检测功能连接的灵敏度降低。这强调了低 TR EPI 序列在静息状态和潜在的任务相关 fMRI 实验中的优势。