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添加剂和扩散耦合对神经群体动力学的作用。

The role of additive and diffusive coupling on the dynamics of neural populations.

机构信息

Cardiff University Brain Research Imaging Centre, School of Psychology, Cardiff University, Cardiff, CF24 4HQ, United Kingdom.

The Welsh Epilepsy Unit, Department of Neurology, University Hospital of Wales, Cardiff, CF14 4XW, United Kingdom.

出版信息

Sci Rep. 2023 Mar 13;13(1):4115. doi: 10.1038/s41598-023-30172-3.

Abstract

Dynamical models consisting of networks of neural masses commonly assume that the interactions between neural populations are via additive or diffusive coupling. When using the additive coupling, a population's activity is affected by the sum of the activities of neighbouring populations. In contrast, when using the diffusive coupling a neural population is affected by the sum of the differences between its activity and the activity of its neighbours. These two coupling functions have been used interchangeably for similar applications. In this study, we show that the choice of coupling can lead to strikingly different brain network dynamics. We focus on a phenomenological model of seizure transitions that has been used both with additive and diffusive coupling in the literature. We consider small networks with two and three nodes, as well as large random and scale-free networks with 64 nodes. We further assess resting-state functional networks inferred from magnetoencephalography (MEG) from people with juvenile myoclonic epilepsy (JME) and healthy controls. To characterize the seizure dynamics on these networks, we use the escape time, the brain network ictogenicity (BNI) and the node ictogenicity (NI), which are measures of the network's global and local ability to generate seizure activity. Our main result is that the level of ictogenicity of a network is strongly dependent on the coupling function. Overall, we show that networks with additive coupling have a higher propensity to generate seizures than those with diffusive coupling. We find that people with JME have higher additive BNI than controls, which is the hypothesized BNI deviation between groups, while the diffusive BNI provides opposite results. Moreover, we find that the nodes that are more likely to drive seizures in the additive coupling case are more likely to prevent seizures in the diffusive coupling case, and that these features correlate to the node's number of connections. Consequently, previous results in the literature involving such models to interrogate functional or structural brain networks could be highly dependent on the choice of coupling. Our results on the MEG functional networks and evidence from the literature suggest that the additive coupling may be a better modeling choice than the diffusive coupling, at least for BNI and NI studies. Thus, we highlight the need to motivate and validate the choice of coupling in future studies involving network models of brain activity.

摘要

由神经质量网络组成的动力学模型通常假设神经元群体之间的相互作用是通过加性或扩散耦合。当使用加性耦合时,一个群体的活动受到相邻群体活动总和的影响。相比之下,当使用扩散耦合时,一个神经元群体受到其活动与其邻居之间差异总和的影响。这两种耦合函数在类似的应用中可以互换使用。在这项研究中,我们表明,耦合的选择可能导致显著不同的大脑网络动力学。我们专注于一种癫痫发作转变的现象学模型,该模型在文献中既使用了加性耦合,也使用了扩散耦合。我们考虑了具有两个和三个节点的小网络,以及具有 64 个节点的大随机和无标度网络。我们进一步评估了从患有青少年肌阵挛性癫痫(JME)和健康对照者的脑磁图(MEG)推断出的静息状态功能网络。为了描述这些网络上的癫痫发作动力学,我们使用逃逸时间、脑网络致痫性(BNI)和节点致痫性(NI),这是衡量网络全局和局部产生癫痫发作活动能力的指标。我们的主要结果是,网络的致痫性水平强烈依赖于耦合函数。总的来说,我们表明,具有加性耦合的网络比具有扩散耦合的网络更容易产生癫痫发作。我们发现,患有 JME 的人比对照组具有更高的加性 BNI,这是假设的组间 BNI 偏差,而扩散性 BNI 则提供了相反的结果。此外,我们发现,在加性耦合情况下更有可能引发癫痫发作的节点在扩散性耦合情况下更有可能防止癫痫发作,并且这些特征与节点的连接数相关。因此,文献中涉及此类模型以探究功能或结构脑网络的先前结果可能高度依赖于耦合的选择。我们对 MEG 功能网络的研究结果以及来自文献的证据表明,至少对于 BNI 和 NI 研究,加性耦合可能是比扩散性耦合更好的建模选择。因此,我们强调在涉及大脑活动网络模型的未来研究中需要激发并验证耦合的选择。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ed3a/10011566/f00a46467ff9/41598_2023_30172_Fig1_HTML.jpg

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