Schuecker Jannis, Schmidt Maximilian, van Albada Sacha J, Diesmann Markus, Helias Moritz
Institute of Neuroscience and Medicine (INM-6) and Institute for Advanced Simulation (IAS-6) and JARA BRAIN Institute I, Jülich Research Centre, Jülich, Germany.
Department of Psychiatry, Psychotherapy and Psychosomatics, Medical Faculty, RWTH Aachen University, Aachen, Germany.
PLoS Comput Biol. 2017 Feb 1;13(2):e1005179. doi: 10.1371/journal.pcbi.1005179. eCollection 2017 Feb.
The continuous integration of experimental data into coherent models of the brain is an increasing challenge of modern neuroscience. Such models provide a bridge between structure and activity, and identify the mechanisms giving rise to experimental observations. Nevertheless, structurally realistic network models of spiking neurons are necessarily underconstrained even if experimental data on brain connectivity are incorporated to the best of our knowledge. Guided by physiological observations, any model must therefore explore the parameter ranges within the uncertainty of the data. Based on simulation results alone, however, the mechanisms underlying stable and physiologically realistic activity often remain obscure. We here employ a mean-field reduction of the dynamics, which allows us to include activity constraints into the process of model construction. We shape the phase space of a multi-scale network model of the vision-related areas of macaque cortex by systematically refining its connectivity. Fundamental constraints on the activity, i.e., prohibiting quiescence and requiring global stability, prove sufficient to obtain realistic layer- and area-specific activity. Only small adaptations of the structure are required, showing that the network operates close to an instability. The procedure identifies components of the network critical to its collective dynamics and creates hypotheses for structural data and future experiments. The method can be applied to networks involving any neuron model with a known gain function.
将实验数据持续整合到连贯的大脑模型中,是现代神经科学日益面临的一项挑战。此类模型在结构与活动之间搭建了一座桥梁,并确定了产生实验观测结果的机制。然而,即便已尽我们所知纳入了关于大脑连通性的实验数据,尖峰神经元的结构逼真网络模型仍必然受到的约束不足。因此,在生理学观测的指导下,任何模型都必须在数据的不确定性范围内探索参数范围。然而,仅基于模拟结果,稳定且符合生理实际的活动背后的机制往往仍不明确。我们在此采用动力学的平均场约简方法,这使我们能够将活动约束纳入模型构建过程。我们通过系统地优化其连通性,塑造了猕猴皮层视觉相关区域多尺度网络模型的相空间。对活动的基本约束,即禁止静止并要求全局稳定性,已证明足以获得逼真的层特异性和区域特异性活动。仅需对结构进行微小调整,这表明该网络运行在接近不稳定的状态。该过程确定了对其集体动力学至关重要的网络组件,并为结构数据和未来实验提出了假设。该方法可应用于涉及任何具有已知增益函数的神经元模型的网络。