University of Genova, Dept. of Informatics, Bioengineering, Robotics and System Engineering, Genova, Italy.
3Brain gmbh, Wädenswil, Switzerland.
PLoS Comput Biol. 2018 Aug 27;14(8):e1006381. doi: 10.1371/journal.pcbi.1006381. eCollection 2018 Aug.
Functional-effective connectivity and network topology are nowadays key issues for studying brain physiological functions and pathologies. Inferring neuronal connectivity from electrophysiological recordings presents open challenges and unsolved problems. In this work, we present a cross-correlation based method for reliably estimating not only excitatory but also inhibitory links, by analyzing multi-unit spike activity from large-scale neuronal networks. The method is validated by means of realistic simulations of large-scale neuronal populations. New results related to functional connectivity estimation and network topology identification obtained by experimental electrophysiological recordings from high-density and large-scale (i.e., 4096 electrodes) microtransducer arrays coupled to in vitro neural populations are presented. Specifically, we show that: (i) functional inhibitory connections are accurately identified in in vitro cortical networks, providing that a reasonable firing rate and recording length are achieved; (ii) small-world topology, with scale-free and rich-club features are reliably obtained, on condition that a minimum number of active recording sites are available. The method and procedure can be directly extended and applied to in vivo multi-units brain activity recordings.
功能有效连接和网络拓扑结构是当前研究大脑生理功能和病理的关键问题。从电生理记录推断神经元连接存在开放性挑战和未解决的问题。在这项工作中,我们提出了一种基于互相关的方法,可以通过分析来自大规模神经元网络的多单位尖峰活动,可靠地估计不仅是兴奋性的,而且是抑制性的连接。该方法通过对大规模神经元群体的现实模拟进行验证。通过与体外神经群体耦合的高密度和大规模(即 4096 个电极)微传声器阵列的实验电生理记录获得了与功能连接估计和网络拓扑识别相关的新结果。具体来说,我们表明:(i)在体外皮质网络中可以准确识别功能抑制连接,只要达到合理的发射率和记录长度;(ii)只要有足够的活动记录点,就可以可靠地获得具有无标度和丰富俱乐部特征的小世界拓扑结构。该方法和步骤可以直接扩展并应用于体内多单位脑活动记录。