Faculty of Science and Technology, Norwegian University of Life Sciences, Ås, Norway.
Department of Physics, University of Oslo, Oslo, Norway.
PLoS Comput Biol. 2020 Mar 10;16(3):e1007725. doi: 10.1371/journal.pcbi.1007725. eCollection 2020 Mar.
Most modeling in systems neuroscience has been descriptive where neural representations such as 'receptive fields', have been found by statistically correlating neural activity to sensory input. In the traditional physics approach to modelling, hypotheses are represented by mechanistic models based on the underlying building blocks of the system, and candidate models are validated by comparing with experiments. Until now validation of mechanistic cortical network models has been based on comparison with neuronal spikes, found from the high-frequency part of extracellular electrical potentials. In this computational study we investigated to what extent the low-frequency part of the signal, the local field potential (LFP), can be used to validate and infer properties of mechanistic cortical network models. In particular, we asked the question whether the LFP can be used to accurately estimate synaptic connection weights in the underlying network. We considered the thoroughly analysed Brunel network comprising an excitatory and an inhibitory population of recurrently connected integrate-and-fire (LIF) neurons. This model exhibits a high diversity of spiking network dynamics depending on the values of only three network parameters. The LFP generated by the network was computed using a hybrid scheme where spikes computed from the point-neuron network were replayed on biophysically detailed multicompartmental neurons. We assessed how accurately the three model parameters could be estimated from power spectra of stationary 'background' LFP signals by application of convolutional neural nets (CNNs). All network parameters could be very accurately estimated, suggesting that LFPs indeed can be used for network model validation.
大多数系统神经科学中的建模都是描述性的,通过将神经活动与感觉输入进行统计相关,来发现诸如“感受野”之类的神经表示。在传统的物理建模方法中,假设通过基于系统基础构建块的机械模型来表示,候选模型通过与实验进行比较来验证。到目前为止,对机械皮层网络模型的验证一直基于与神经元尖峰的比较,这些尖峰是从细胞外电潜力的高频部分发现的。在这项计算研究中,我们研究了信号的低频部分,即局部场电位 (LFP),在多大程度上可以用于验证和推断机械皮层网络模型的特性。特别是,我们询问了 LFP 是否可以用于准确估计基础网络中的突触连接权重。我们考虑了经过彻底分析的 Brunel 网络,该网络由兴奋性和抑制性群体的递归连接的积分和发射 (LIF) 神经元组成。该模型仅取决于三个网络参数的值,表现出高度多样化的尖峰网络动力学。使用混合方案计算网络产生的 LFP,其中从点神经元网络计算的尖峰在生物物理详细的多腔神经元上重播。我们通过应用卷积神经网络 (CNN) 评估了如何从静止“背景”LFP 信号的功率谱中准确估计三个模型参数。所有网络参数都可以非常准确地估计,这表明 LFPs 确实可以用于网络模型验证。