CUBRIC, School of Psychology, College of Biomedical and Life Sciences, Cardiff University, Cardiff, UK.
Neuroimage. 2021 Feb 1;226:117551. doi: 10.1016/j.neuroimage.2020.117551. Epub 2020 Nov 10.
Recent studies have shown how MEG can reveal spatial patterns of functional connectivity using frequency-specific oscillatory coupling measures and that these may be modified in disease. However, there is a need to understand both how repeatable these patterns are across participants and how these measures relate to the moment-to-moment variability (or 'irregularity) of neural activity seen in healthy brain function. In this study, we used Multi-scale Rank-Vector Entropy (MRVE) to calculate the dynamic timecourses of signal variability over a range of temporal scales. The correlation of MRVE timecourses was then used to detect functional connections in resting state MEG recordings that were robust over 183 participants and varied with temporal scale. We compared these MRVE connectivity patterns to those derived using the more conventional method of oscillatory amplitude envelope correlation (AEC) using methods designed to quantify the consistency of these patterns across participants. Using AEC, the most consistent connectivity patterns, across the cohort, were seen in the alpha and beta frequency bands. At fine temporal scales (corresponding to 'scale frequencies, f = 30-150Hz), MRVE correlation detected mostly occipital and parietal connections. These showed high similarity with the networks identified by AEC in the alpha and beta frequency bands. The most consistent connectivity profiles between participants were given by MRVE correlation at f = 75Hz and AEC in the beta band. The physiological relevance of MRVE was also investigated by examining the relationship between connectivity strength and local variability. It was found that local activity at frequencies f≳ 10Hz becomes more regular when a region exhibits high levels of resting state connectivity, as measured by fine scale MRVE correlation (f∼ 30-150Hz) and by alpha and beta band AEC. Analysis of the EOG recordings also revealed that eye movement affected both connectivity measures. Higher levels of eye movement were associated with stronger frontal connectivity, as measured by MRVE correlation. More eye movement was also associated with reduced occipital and parietal connectivity strength for both connectivity measures, although this was not significant after correction for multiple comparisons.
最近的研究表明,MEG 可以通过频率特异性振荡耦合测量来揭示功能连接的空间模式,并且这些模式可能在疾病中发生改变。然而,需要了解这些模式在参与者之间的可重复性以及这些测量与健康大脑功能中观察到的神经活动的瞬间变化(或“不规则性”)之间的关系。在这项研究中,我们使用多尺度秩向量熵(MRVE)来计算信号变异性在一系列时间尺度上的动态时间历程。然后,使用 MRVE 时间历程的相关性来检测静息状态 MEG 记录中的功能连接,这些连接在 183 名参与者中是稳健的,并且随时间尺度而变化。我们将这些 MRVE 连接模式与使用更传统的振荡幅度包络相关(AEC)方法得出的模式进行了比较,这些方法旨在量化这些模式在参与者之间的一致性。使用 AEC,在整个队列中最一致的连接模式出现在 alpha 和 beta 频带中。在精细的时间尺度(对应于“尺度频率,f = 30-150Hz”)上,MRVE 相关性主要检测到枕部和顶叶连接。这些与 alpha 和 beta 频带中 AEC 识别的网络高度相似。参与者之间最一致的连接特征由 f = 75Hz 时的 MRVE 相关性和 beta 频带中的 AEC 提供。还通过检查连接强度与局部变异性之间的关系来研究 MRVE 的生理相关性。结果发现,当区域表现出高水平的静息状态连接时,频率为 f≳ 10Hz 的局部活动变得更加规则,如通过精细尺度 MRVE 相关性(f∼ 30-150Hz)和 alpha 和 beta 频带 AEC 测量。对 EOG 记录的分析还表明,眼球运动会影响这两种连接测量。更高水平的眼球运动与由 MRVE 相关性测量的额叶连接更强相关。眼球运动较多也与两种连接测量的枕叶和顶叶连接强度降低有关,尽管在进行多次比较校正后这并不显著。