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首页> 外文期刊>NeuroImage >Interplay between functional connectivity and scale-free dynamics in intrinsic fMRI networks
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Interplay between functional connectivity and scale-free dynamics in intrinsic fMRI networks

机译:内在fMRI网络中功能连接性与无标度动力学之间的相互作用

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Studies employing functional connectivity-type analyses have established that spontaneous fluctuations in functional magnetic resonance imaging (fMRI) signals are organized within large-scale brain networks. Meanwhile, fMRI signals have been shown to exhibit 1/f-type power spectra - a hallmark of scale-free dynamics. We studied the interplay between functional connectivity and scale-free dynamics in fMRI signals, utilizing the fractal connectivity framework - a multivariate extension of the univariate fractional Gaussian noise model, which relies on a wavelet formulation for robust parameter estimation. We applied this framework to fMRI data acquired from healthy young adults at rest and while performing a visual detection task. First, we found that scale-invariance existed beyond univariate dynamics, being present also in bivariate cross-temporal dynamics. Second, we observed that frequencies within the scale-free range do not contribute evenly to inter-regional connectivity, with a systematically stronger contribution of the lowest frequencies, both at rest and during task. Third, in addition to a decrease of the Hurst exponent and inter-regional correlations, task performance modified cross-temporal dynamics, inducing a larger contribution of the highest frequencies within the scale-free range to global correlation. Lastly, we found that across individuals, a weaker task modulation of the frequency contribution to inter-regional connectivity was associated with better task performance manifesting as shorter and less variable reaction times. These findings bring together two related fields that have hitherto been studied separately -resting-state networks and scale-free dynamics, and show that scale-free dynamics of human brain activity manifest in cross-regional interactions as well.
机译:使用功能连接类型分析的研究已经确定,功能磁共振成像(fMRI)信号的自发波动是在大型大脑网络内组织的。同时,fMRI信号已显示出1 / f型功率谱-无标度动力学的标志。我们利用分形连接框架-单变量分数高斯噪声模型的多变量扩展,研究了功能连通性与fMRI信号中无标度动力学之间的相互作用,分形连通性框架依靠小波公式进行鲁棒的参数估计。我们将此框架应用于从健康的年轻成年人休息和执行视觉检测任务时获得的fMRI数据。首先,我们发现尺度不变性不仅存在于单变量动力学中,而且还存在于双变量跨时态动力学中。其次,我们观察到无标度范围内的频率对区域间连通性的贡献不均,在静止和任务期间最低频率的系统性较强。第三,除了降低赫斯特(Hurst)指数和区域间相关性外,任务执行还修改了跨时间动态,从而导致无标度范围内的最高频率对全局相关性的贡献更大。最后,我们发现在个体之间,对区域间连接频率贡献的较弱任务调制与更好的任务性能相关,表现为更短和更少的可变反应时间。这些发现汇集了迄今已分别研究的两个相关领域-静止状态网络和无标度动力学,并表明人脑活动的无标度动力学也表现在跨区域相互作用中。

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