Model-agnostic neural mean field with a data-driven transfer function.

Neuromorphic computing and engineering Pub Date : 2024-09-01 Epub Date: 2024-09-17 DOI:10.1088/2634-4386/ad787f
Alex Spaeth, David Haussler, Mircea Teodorescu
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Abstract

As one of the most complex systems known to science, modeling brain behavior and function is both fascinating and extremely difficult. Empirical data is increasingly available from ex vivo human brain organoids and surgical samples, as well as in vivo animal models, so the problem of modeling the behavior of large-scale neuronal systems is more relevant than ever. The statistical physics concept of a mean-field model offers a tractable way to bridge the gap between single-neuron and population-level descriptions of neuronal activity, by modeling the behavior of a single representative neuron and extending this to the population. However, existing neural mean-field methods typically either take the limit of small interaction sizes, or are applicable only to the specific neuron models for which they were derived. This paper derives a mean-field model by fitting a transfer function called Refractory SoftPlus, which is simple yet applicable to a broad variety of neuron types. The transfer function is fitted numerically to simulated spike time data, and is entirely agnostic to the underlying neuronal dynamics. The resulting mean-field model predicts the response of a network of randomly connected neurons to a time-varying external stimulus with a high degree of accuracy. Furthermore, it enables an accurate approximate bifurcation analysis as a function of the level of recurrent input. This model does not assume large presynaptic rates or small postsynaptic potential size, allowing mean-field models to be developed even for populations with large interaction terms.

具有数据驱动传递函数的模式识别神经均值场。
作为科学界已知的最复杂系统之一,大脑行为和功能建模既迷人又极其困难。从体外人脑器官组织和手术样本以及体内动物模型中获得的经验数据越来越多,因此大规模神经元系统的行为建模问题比以往任何时候都更加重要。均值场模型的统计物理学概念为弥合神经元活动的单神经元和群体水平描述之间的差距提供了一种可行的方法,即对单个代表性神经元的行为建模,并将其扩展到群体。然而,现有的神经均值场方法通常要么以较小的交互作用规模为极限,要么只适用于它们所推导的特定神经元模型。本文通过拟合一个名为 Refractory SoftPlus 的传递函数,推导出了一个均值场模型,该模型既简单又适用于多种类型的神经元。该传递函数以数值方式拟合模拟的尖峰时间数据,与神经元的底层动力学完全无关。由此产生的均场模型能高精度地预测随机连接的神经元网络对时变外部刺激的反应。此外,它还能根据递归输入水平的函数进行精确的近似分叉分析。该模型不假定突触前速率大或突触后电位小,因此即使对具有较大交互项的群体也能建立均场模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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