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脑网络动力学遵循幂律。

Brain Network Dynamics Adhere to a Power Law.

作者信息

Tomasi Dardo G, Shokri-Kojori Ehsan, Volkow Nora D

机构信息

National Institute on Alcohol Abuse and Alcoholism Bethesda, MD, USA.

National Institute on Alcohol Abuse and AlcoholismBethesda, MD, USA; National Institute on Drug AbuseBethesda, MD, USA.

出版信息

Front Neurosci. 2017 Feb 14;11:72. doi: 10.3389/fnins.2017.00072. eCollection 2017.

Abstract

The temporal dynamics of complex networks such as the Internet are characterized by a power scaling between the temporal mean and dispersion of signals at each network node. Here we tested the hypothesis that the temporal dynamics of the brain networks are characterized by a similar power law. This realization could be useful to assess the effects of randomness and external modulators on the brain network dynamics. Simulated data using a well-stablished random diffusion model allowed us to predict that the temporal dispersion of the amplitude of low frequency fluctuations (ALFF) and that of the local functional connectivity density (FCD) scale with their temporal means. We tested this hypothesis in open-access resting-state functional magnetic resonance imaging datasets from 66 healthy subjects. A robust power law emerged from the temporal dynamics of ALFF and FCD metrics, which was insensitive to the methods used for the computation of the metrics. The scaling exponents (ALFF: 0.8 ± 0.1; FCD: 1.1 ± 0.1; mean ± SD) decreased with age and varied significantly across brain regions; multimodal cortical areas exhibited lower scaling exponents, consistent with a stronger influence of external inputs, than limbic and subcortical regions, which exhibited higher scaling exponents, consistent with a stronger influence of internal randomness. Findings are consistent with the notion that external inputs govern neuronal communication in the brain and that their relative influence differs between brain regions. Further studies will assess the potential of this metric as biomarker to characterize neuropathology.

摘要

诸如互联网这样的复杂网络的时间动态特性,表现为每个网络节点处信号的时间均值与离散度之间的幂律缩放关系。在此,我们检验了一个假设,即大脑网络的时间动态特性也具有类似的幂律特征。这一认识可能有助于评估随机性和外部调节因素对大脑网络动态的影响。使用成熟的随机扩散模型生成的模拟数据,使我们能够预测低频波动幅度(ALFF)和局部功能连接密度(FCD)的时间离散度与其时间均值呈比例关系。我们在来自66名健康受试者的公开静息态功能磁共振成像数据集中检验了这一假设。从ALFF和FCD指标的时间动态中出现了一个稳健的幂律,该幂律对用于计算这些指标的方法不敏感。缩放指数(ALFF:0.8±0.1;FCD:1.1±0.1;均值±标准差)随年龄增长而降低,且在不同脑区有显著差异;多模态皮层区域的缩放指数较低,这与外部输入的更强影响一致,而边缘和皮层下区域的缩放指数较高,这与内部随机性的更强影响一致。这些发现与以下观点一致,即外部输入控制大脑中的神经元通信,且它们在不同脑区的相对影响有所不同。进一步的研究将评估这一指标作为生物标志物来表征神经病理学的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3df1/5306388/2d1e5acc4213/fnins-11-00072-g0001.jpg

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