Laboratory of Neural Computation, Center for Neuroscience and Cognitive Systems@UniTn, Istituto Italiano di Tecnologia, 38068 Rovereto, Italy.
Math Biosci Eng. 2019 Sep 4;16(6):8025-8059. doi: 10.3934/mbe.2019404.
Several mathematical approaches to studying analytically the dynamics of neural networks rely on mean-field approximations, which are rigorously applicable only to networks of infinite size. However, all existing real biological networks have finite size, and many of them, such as microscopic circuits in invertebrates, are composed only of a few tens of neurons. Thus, it is important to be able to extend to small-size networks our ability to study analytically neural dynamics. Analytical solutions of the dynamics of small-size neural networks have remained elusive for many decades, because the powerful methods of statistical analysis, such as the central limit theorem and the law of large numbers, do not apply to small networks. In this article, we critically review recent progress on the study of the dynamics of small networks composed of binary neurons. In particular, we review the mathematical techniques we developed for studying the bifurcations of the network dynamics, the dualism between neural activity and membrane potentials, cross-neuron correlations, and pattern storage in stochastic networks. Then, we compare our results with existing mathematical techniques for studying networks composed of a finite number of neurons. Finally, we highlight key challenges that remain open, future directions for further progress, and possible implications of our results for neuroscience.
几种用于分析研究神经网络动力学的数学方法依赖于平均场近似,这种方法仅在网络大小无穷大的情况下才严格适用。然而,所有现有的真实生物网络都具有有限的大小,其中许多网络,如无脊椎动物的微观电路,仅由几十个神经元组成。因此,能够将分析神经动力学的能力扩展到小尺寸网络是很重要的。几十年来,由于强大的统计分析方法(如中心极限定理和大数定律)不适用于小网络,因此小型神经网络动力学的解析解仍然难以捉摸。在本文中,我们批判性地回顾了最近关于由二进制神经元组成的小网络动力学研究的进展。特别是,我们回顾了我们为研究网络动力学的分岔、神经活动和膜电位之间的二元性、跨神经元相关性以及随机网络中的模式存储而开发的数学技术。然后,我们将我们的结果与现有的用于研究由有限数量神经元组成的网络的数学技术进行了比较。最后,我们强调了仍然存在的关键挑战、进一步取得进展的未来方向以及我们的结果对神经科学的可能影响。