Neuroengineering and Bio-nano Technology Group, Department of Biophysical and Electronic Engineering, University of Genova, Vai Opera Pia 11a, 16145 Genova, Italy.
J Neural Eng. 2010 Oct;7(5):056001. doi: 10.1088/1741-2560/7/5/056001. Epub 2010 Aug 18.
In this work, we investigate the spontaneous bursting behaviour expressed by in vitro hippocampal networks by using a high-resolution CMOS-based microelectrode array (MEA), featuring 4096 electrodes, inter-electrode spacing of 21 µm and temporal resolution of 130 µs. In particular, we report an original development of an adapted analysis method enabling us to investigate spatial and temporal patterns of activity and the interplay between successive network bursts (NBs). We first defined and detected NBs, and then, we analysed the spatial and temporal behaviour of these events with an algorithm based on the centre of activity trajectory. We further refined the analysis by using a technique derived from statistical mechanics, capable of distinguishing the two main phases of NBs, i.e. (i) a propagating and (ii) a reverberating phase, and by classifying the trajectory patterns. Finally, this methodology was applied to signal representations based on spike detection, i.e. the instantaneous firing rate, and directly based on voltage-coded raw data, i.e. activity movies. Results highlight the potentialities of this approach to investigate fundamental issues on spontaneous neuronal dynamics and suggest the hypothesis that neurons operate in a sort of 'team' to the perpetuation of the transmission of the same information.
在这项工作中,我们使用高分辨率基于 CMOS 的微电极阵列(MEA)研究了体外海马网络表达的自发爆发行为,该 MEA 具有 4096 个电极、21 µm 的电极间间距和 130 µs 的时间分辨率。特别是,我们报告了一种原始的改进分析方法的开发,使我们能够研究活动的时空模式以及连续网络爆发(NB)之间的相互作用。我们首先定义和检测 NB,然后使用基于活动轨迹中心的算法分析这些事件的时空行为。我们进一步通过使用源自统计力学的技术来改进分析,该技术能够区分 NB 的两个主要阶段,即(i)传播阶段和(ii)回荡阶段,并对轨迹模式进行分类。最后,该方法应用于基于尖峰检测的信号表示,即瞬时放电率,以及直接基于电压编码原始数据,即活动电影。结果突出了这种方法调查自发神经元动力学基本问题的潜力,并提出了神经元以某种“团队”方式运作以延续相同信息传递的假设。