Henningson Måns, Illes Sebastian
Division of Biological Physics, Department of Physics, Chalmers University of TechnologyGöteborg, Sweden.
Department of Physiology, Institute of Neuroscience and Physiology, Sahgrenska Academy, University of GothenburgGöteborg, Sweden.
Front Comput Neurosci. 2017 Apr 18;11:26. doi: 10.3389/fncom.2017.00026. eCollection 2017.
Multi-electrode arrays (MEA) are increasingly used to investigate spontaneous neuronal network activity. The recorded signals comprise several distinct components: Apart from artifacts without biological significance, one can distinguish between spikes (action potentials) and subthreshold fluctuations (local fields potentials). Here we aim to develop a theoretical model that allows for a compact and robust characterization of subthreshold fluctuations in terms of a Gaussian statistical field theory in two spatial and one temporal dimension. What is usually referred to as the driving noise in the context of statistical physics is here interpreted as a representation of the neural activity. Spatial and temporal correlations of this activity give valuable information about the connectivity in the neural tissue. We apply our methods on a dataset obtained from MEA-measurements in an acute hippocampal brain slice from a rat. Our main finding is that the empirical correlation functions indeed obey the logarithmic behavior that is a general feature of theoretical models of this kind. We also find a clear correlation between the activity and the occurrence of spikes. Another important insight is the importance of correctly separating out certain artifacts from the data before proceeding with the analysis.
多电极阵列(MEA)越来越多地用于研究自发神经元网络活动。记录的信号包含几个不同的成分:除了没有生物学意义的伪迹外,还可以区分尖峰(动作电位)和阈下波动(局部场电位)。在这里,我们旨在开发一种理论模型,该模型能够根据二维空间和一维时间的高斯统计场理论,对阈下波动进行紧凑而稳健的表征。在统计物理学背景下通常被称为驱动噪声的,在这里被解释为神经活动的一种表示。这种活动的空间和时间相关性提供了有关神经组织中连接性的有价值信息。我们将我们的方法应用于从大鼠急性海马脑片中的MEA测量获得的数据集。我们的主要发现是,经验相关函数确实遵循对数行为,这是这类理论模型的一个普遍特征。我们还发现活动与尖峰的出现之间存在明显的相关性。另一个重要的见解是在进行分析之前从数据中正确分离出某些伪迹的重要性。