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On electrophysiological signal complexity during biological neuronal network development and maturation

机译:生物神经网络发展过程中的电生理信号复杂性研究

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Developing neuronal populations are assumed to increase their synaptic interactions and generate synchronized activity, such as bursting, during maturation. These effects may arise from increasing interactions of neuronal populations and increasing simultaneous intra-population activity in developing networks. In this paper, we investigated the neuronal network activity and its complexity by means of self-similarity during neuronal network development. We studied the phenomena using computational neuronal network models and actual in vitro microelectrode array data measured from a developing neuronal network of dissociated mouse cortical neurons. To achieve this, we assessed the spiking and bursting characteristics of the networks, and computed the signal complexity with Sample Entropy. The results show that we can relate increasing simultaneous activity in a neuronal population with decreasing entropy, and track the network development and maturation using this. We can conclude that the complexity of neuronal network signals decreases during the maturation. This can emerge from the fact that as networks mature, they exhibit more synchronous activity, thus decreasing the complexity of its signaling. However, increasing the number of interacting populations has lesser effect on the signal complexity. The entropy based measure provides a tool to assess the complexity of the neuronal network activity, and can be useful in the assessment of developing networks or the effects of drugs and toxins on their functioning.
机译:假设发育神经元群以增加其突触相互作用,并在成熟期间产生同步活动,例如爆裂。这些效果可能因增加神经元群体的相互作用以及在开发网络中提高同时群体的群体活动而产生。在本文中,我们通过神经网络开发期间通过自相似性研究了神经元网络活动及其复杂性。我们研究了使用计算神经元网络模型的现象和从解离小鼠皮质神经元的开发神经元网络中测量的实际体外微电极阵列数据。为此,我们评估了网络的尖峰和爆破特性,并计算了样本熵的信号复杂性。结果表明,我们可以通过减少熵的神经元群体越来越多的同时活动,并使用此跟踪网络开发和成熟。我们可以得出结论,在成熟期间神经元网络信号的复杂性降低。这可以从一个事实中出现,即网络成熟,它们表现出更多同步活动,从而降低了信号传导的复杂性。然而,增加交互群体的数量对信号复杂性的影响具有较小的影响。基于熵的措施提供了一种评估神经元网络活动的复杂性的工具,并且可以在评估发展网络或药物和毒素对其运作的影响中的作用。

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