Costa Tommaso, Boccignone Giuseppe, Cauda Franco, Ferraro Mario
Focus Lab, Department of Psychology, University of Turin, Turin, Italy.
GCS-fMRI, Koelliker Hospital, Turin, Italy.
PLoS One. 2016 Sep 1;11(9):e0161702. doi: 10.1371/journal.pone.0161702. eCollection 2016.
In this research we have analyzed functional magnetic resonance imaging (fMRI) signals of different networks in the brain under resting state condition. To such end, the dynamics of signal variation, have been conceived as a stochastic motion, namely it has been modelled through a generalized Langevin stochastic differential equation, which combines a deterministic drift component with a stochastic component where the Gaussian noise source has been replaced with α-stable noise. The parameters of the deterministic and stochastic parts of the model have been fitted from fluctuating data. Results show that the deterministic part is characterized by a simple, linear decreasing trend, and, most important, the α-stable noise, at varying characteristic index α, is the source of a spectrum of activity modes across the networks, from those originated by classic Gaussian noise (α = 2), to longer tailed behaviors generated by the more general Lévy noise (1 ≤ α < 2). Lévy motion is a specific instance of scale-free behavior, it is a source of anomalous diffusion and it has been related to many aspects of human cognition, such as information foraging through memory retrieval or visual exploration. Finally, some conclusions have been drawn on the functional significance of the dynamics corresponding to different α values.
在本研究中,我们分析了静息状态下大脑不同网络的功能磁共振成像(fMRI)信号。为此,信号变化的动力学被视为一种随机运动,即通过广义朗之万随机微分方程进行建模,该方程将确定性漂移分量与随机分量相结合,其中高斯噪声源被α稳定噪声所取代。模型确定性部分和随机部分的参数已根据波动数据进行拟合。结果表明,确定性部分的特征是简单的线性下降趋势,最重要的是,不同特征指数α的α稳定噪声是跨网络一系列活动模式的来源,从经典高斯噪声(α = 2)产生的模式到更一般的 Lévy 噪声(1 ≤ α < 2)产生的长尾行为。Lévy 运动是无标度行为的一个具体实例,它是反常扩散的一个来源,并且与人类认知的许多方面有关,例如通过记忆检索或视觉探索进行信息搜寻。最后,得出了关于不同α值对应的动力学功能意义的一些结论。