Simões T S A N, Filho C I N Sampaio, Herrmann H J, Andrade J S, de Arcangelis L
Department of Mathematics and Physics, University of Campania "Luigi Vanvitelli", Viale Lincoln, 5, 81100, Caserta, Italy.
Departamento de Física, Fortaleza, Universidade Federal do Ceará, Ceará, 60451-970, Brazil.
Sci Rep. 2024 Apr 25;14(1):9480. doi: 10.1038/s41598-024-60117-3.
Recent results have evidenced that spontaneous brain activity signals are organized in bursts with scale free features and long-range spatio-temporal correlations. These observations have stimulated a theoretical interpretation of results inspired in critical phenomena. In particular, relying on maximum entropy arguments, certain aspects of time-averaged experimental neuronal data have been recently described using Ising-like models, allowing the study of neuronal networks under an analogous thermodynamical framework. This method has been so far applied to a variety of experimental datasets, but never to a biologically inspired neuronal network with short and long-term plasticity. Here, we apply for the first time the Maximum Entropy method to an Integrate-and-fire (IF) model that can be tuned at criticality, offering a controlled setting for a systematic study of criticality and finite-size effects in spontaneous neuronal activity, as opposed to experiments. We consider generalized Ising Hamiltonians whose local magnetic fields and interaction parameters are assigned according to the average activity of single neurons and correlation functions between neurons of the IF networks in the critical state. We show that these Hamiltonians exhibit a spin glass phase for low temperatures, having mostly negative intrinsic fields and a bimodal distribution of interaction constants that tends to become unimodal for larger networks. Results evidence that the magnetization and the response functions exhibit the expected singular behavior near the critical point. Furthermore, we also found that networks with higher percentage of inhibitory neurons lead to Ising-like systems with reduced thermal fluctuations. Finally, considering only neuronal pairs associated with the largest correlation functions allows the study of larger system sizes.
最近的研究结果表明,自发脑活动信号以具有无标度特征和长程时空相关性的爆发形式组织起来。这些观察结果激发了对受临界现象启发的结果的理论解释。特别是,基于最大熵原理,最近使用类伊辛模型描述了时间平均实验神经元数据的某些方面,从而能够在类似的热力学框架下研究神经网络。到目前为止,这种方法已应用于各种实验数据集,但从未应用于具有短期和长期可塑性的受生物启发的神经网络。在这里,我们首次将最大熵方法应用于一个可在临界状态下调节的积分发放(IF)模型,为系统研究自发神经元活动中的临界性和有限尺寸效应提供了一个可控的环境,这与实验情况不同。我们考虑广义伊辛哈密顿量,其局部磁场和相互作用参数根据单个神经元的平均活动以及临界状态下IF网络中神经元之间的相关函数来分配。我们表明,这些哈密顿量在低温下呈现自旋玻璃相,其固有场大多为负,相互作用常数呈双峰分布,对于更大的网络往往会变为单峰分布。结果表明,磁化强度和响应函数在临界点附近呈现出预期的奇异行为。此外,我们还发现,抑制性神经元比例较高的网络会导致类伊辛系统的热涨落减小。最后,仅考虑与最大相关函数相关的神经元对,就能研究更大的系统规模。