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Characterizing the Complexity of Spontaneous Electrical Signals in Cultured Neuronal Networks Using Approximate Entropy

机译:使用近似熵表征培养的神经元网络中自发电信号的复杂性

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摘要

In this paper, neurons were cultured on a substrate above a multielectrode array, so the changes of electrophysiological activity patterns during development of the neuronal network or in response to environmental perturbations were monitored. But the complexity of these spontaneous activity patterns is not well understood. In order to solve the problem, a comprehensive method (approximate entropy (ApEn) in combination with a ldquosliding windowrdquo over the data) is introduced to quantify the complexity of four spontaneous activity patterns (sporadic spikes, tonic spikes, pseudobursts, and typical bursts) in cultured hippocampal neuronal networks. The results show that the dynamic curves of ApEn illustrate vivid differences between the four patterns and the values of ApEn fall into different ranges. Among these patterns, the complexity of tonic spikes is the highest while that of pseudobursts is the lowest. This suggests that the proposed method is a valid procedure for tracking the dynamic variation in neuronal signals and can distinguish the different firing patterns of neuronal networks in terms of their complexity.
机译:在本文中,将神经元培养在多电极阵列上方的基质上,因此可以监测神经元网络发育过程中或响应环境扰动时电生理活动模式的变化。但是,这些自发活动模式的复杂性还没有被很好地理解。为了解决该问题,引入了一种综合方法(结合数据上的“近似熵”(ApEn)和“滑动窗口”)来量化四个自发活动模式(偶发尖峰,强音尖峰,伪突发和典型突发)的复杂性。在培养的海马神经元网络中。结果表明,ApEn的动态曲线说明了四种模式之间的生动差异,ApEn的值落在不同的范围内。在这些模式中,进补尖峰的复杂度最高,而假爆发的最低。这表明所提出的方法是跟踪神经元信号动态变化的有效方法,并且可以根据其复杂性区分神经元网络的不同触发模式。

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