Maith Oliver, Dinkelbach Helge Ülo, Baladron Javier, Vitay Julien, Hamker Fred H
Department of Computer Science, Chemnitz University of Technology, Chemnitz, Germany.
Front Neuroinform. 2022 Mar 22;16:790966. doi: 10.3389/fninf.2022.790966. eCollection 2022.
Multi-scale network models that simultaneously simulate different measurable signals at different spatial and temporal scales, such as membrane potentials of single neurons, population firing rates, local field potentials, and blood-oxygen-level-dependent (BOLD) signals, are becoming increasingly popular in computational neuroscience. The transformation of the underlying simulated neuronal activity of these models to simulated non-invasive measurements, such as BOLD signals, is particularly relevant. The present work describes the implementation of a BOLD monitor within the neural simulator ANNarchy to allow an on-line computation of simulated BOLD signals from neural network models. An active research topic regarding the simulation of BOLD signals is the coupling of neural processes to cerebral blood flow (CBF) and cerebral metabolic rate of oxygen (CMRO2). The flexibility of ANNarchy allows users to define this coupling with a high degree of freedom and thus, not only allows to relate mesoscopic network models of populations of spiking neurons to experimental BOLD data, but also to investigate different hypotheses regarding the coupling between neural processes, CBF and CMRO2 with these models. In this study, we demonstrate how simulated BOLD signals can be obtained from a network model consisting of multiple spiking neuron populations. We first demonstrate the use of the Balloon model, the predominant model for simulating BOLD signals, as well as the possibility of using novel user-defined models, such as a variant of the Balloon model with separately driven CBF and CMRO2 signals. We emphasize how different hypotheses about the coupling between neural processes, CBF and CMRO2 can be implemented and how these different couplings affect the simulated BOLD signals. With the BOLD monitor presented here, ANNarchy provides a tool for modelers who want to relate their network models to experimental MRI data and for scientists who want to extend their studies of the coupling between neural processes and the BOLD signal by using modeling approaches. This facilitates the investigation and model-based analysis of experimental BOLD data and thus improves multi-scale understanding of neural processes in humans.
多尺度网络模型能够在不同的空间和时间尺度上同时模拟不同的可测量信号,比如单个神经元的膜电位、群体放电率、局部场电位以及血氧水平依赖(BOLD)信号,在计算神经科学领域正变得越来越流行。这些模型中潜在的模拟神经元活动向模拟非侵入性测量(如BOLD信号)的转换尤为重要。本研究描述了在神经模拟器ANNarchy中实现一个BOLD监测器,以便从神经网络模型在线计算模拟的BOLD信号。关于BOLD信号模拟的一个活跃研究主题是神经过程与脑血流量(CBF)和脑氧代谢率(CMRO2)的耦合。ANNarchy的灵活性允许用户高度自由地定义这种耦合,因此,它不仅能将脉冲发放神经元群体的介观网络模型与实验BOLD数据联系起来,还能利用这些模型研究关于神经过程、CBF和CMRO2之间耦合的不同假设。在本研究中,我们展示了如何从一个由多个脉冲发放神经元群体组成的网络模型中获得模拟的BOLD信号。我们首先展示了用于模拟BOLD信号的主要模型——球囊模型的使用,以及使用新颖的用户定义模型的可能性,比如一个具有独立驱动的CBF和CMRO2信号的球囊模型变体。我们强调了关于神经过程、CBF和CMRO2之间耦合的不同假设如何得以实现,以及这些不同的耦合如何影响模拟的BOLD信号。借助这里介绍的BOLD监测器,ANNarchy为那些希望将其网络模型与实验MRI数据联系起来的建模者以及那些希望通过建模方法扩展其对神经过程与BOLD信号之间耦合研究的科学家提供了一个工具。这有助于对实验BOLD数据进行研究和基于模型的分析,从而增进对人类神经过程的多尺度理解。