Nikolaou F, Orphanidou C, Murphy K, Wise R G, Mitsis G D
Annu Int Conf IEEE Eng Med Biol Soc. 2018 Jul;2018:1019-1023. doi: 10.1109/EMBC.2018.8512465.
The blood oxygen level dependent (BOLD) fMRI signal is influenced not only by neuronal activity but also by fluctuations in physiological signals, including respiration, arterial CO2 and heart rate/ heart rate variability (HR/HRV). Even spontaneous physiological signal fluctuations have been shown to influence the BOLD fMRI signal in a regionally specific manner. Consequently, estimates of functional connectivity between different brain regions, performed when the subject is at rest, may be confounded by the effects of physiological signal fluctuations. In addition, resting functional connectivity has been shown to vary with respect to time (dynamic functional connectivity - DFC), with the sources of this variation not fully elucidated. The effect of physiological factors on dynamic (time-varying) resting-state functional connectivity has not been studied extensively, to our knowledge. In our previous study, we investigated the effect of heart rate (HR) and end-tidal CO2 (PETCO2) on the time-varying network degree of three well-described RSNs (DMN, SMN and Visual Network) using mask-based and seed-based analysis, and we identified brain-heart interactions which were more pronounced in specific frequency bands. Here, we extend this work, by estimating DFC and its corresponding network degree for the RSNs, employing a data-driven approach to extract the RSNs (low-and high-dimensional Independent Component Analysis (ICA)), which we subsequently correlate with the characteristics of simultaneously collected physiological signals. The results confirm that physiological signals have a modulatory effect on resting-state, fMRI-based DFC.
血氧水平依赖(BOLD)功能磁共振成像信号不仅受神经元活动影响,还受生理信号波动的影响,包括呼吸、动脉血二氧化碳和心率/心率变异性(HR/HRV)。甚至自发的生理信号波动也已被证明以区域特异性方式影响BOLD功能磁共振成像信号。因此,在受试者静息时进行的不同脑区之间功能连接性的估计可能会受到生理信号波动影响的干扰。此外,静息功能连接性已被证明会随时间变化(动态功能连接性 - DFC),而这种变化的来源尚未完全阐明。据我们所知,生理因素对动态(随时间变化)静息态功能连接性的影响尚未得到广泛研究。在我们之前的研究中,我们使用基于掩码和基于种子的分析方法,研究了心率(HR)和呼气末二氧化碳(PETCO2)对三个已充分描述的静息态网络(默认模式网络、躯体感觉网络和视觉网络)随时间变化的网络度的影响,并且我们确定了在特定频段更明显的脑 - 心相互作用。在这里,我们扩展这项工作,通过估计静息态网络的DFC及其相应的网络度,采用数据驱动方法提取静息态网络(低维和高维独立成分分析(ICA)),随后我们将其与同时采集的生理信号特征进行关联。结果证实生理信号对基于功能磁共振成像的静息态DFC具有调节作用。