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Assessment and manipulation of the computational capacity of in vitro neuronal networks through criticality in neuronal avalanches

机译:通过神经元雪崩界定度的体外神经网络计算能力的评估和操纵

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In this work, we report the preliminary analysis of the electrophysiological behavior of in vitro neuronal networks to identify when the networks are in a critical state based on the size distribution of network-wide avalanches of activity. The results presented here demonstrate the importance of selecting appropriate parameters in the evaluation of the size distribution and indicate that it is possible to perturb networks showing highly synchronized—or supercritical—behavior into the critical state by increasing the level of inhibition in the network. The classification of critical versus non-critical networks is valuable in identifying networks that can be expected to perform well on computational tasks, as criticality is widely considered to be the state in which a system is best suited for computation. In addition to enabling the identification of networks that are well-suited for computation, this analysis is expected to aid in the classification of networks as perturbed or healthy. This study is part of a larger research project, the overarching aim of which is to develop computational models that are able to reproduce target behaviors observed in in vitro neuronal networks. These models will ultimately be used to aid in the realization of these behaviors in nanomagnet arrays to be used in novel computing hardwares.
机译:在这项工作中,我们报告了对体外神经元网络的电生理学行为的初步分析,以确定网络在基于网络宽雪崩的尺寸分布的临界状态时。这里提出的结果证明了在评估尺寸分布中选择适当参数的重要性,并表明通过增加网络中的抑制水平,可以对临界状态表示高度同步或超临界行为的扰动网络。临界相对于非关键网络的分类是鉴定可预期到在计算任务执行井网有价值的,为临界被广泛认为是在其中一个系统最适合于计算的状态。除了能够识别适合计算的网络之外,该分析预计将有助于扰动或健康的网络分类。本研究是更大的研究项目的一部分,其总体目的是开发能够在体外神经元网络中观察到的目标行为的计算模型。这些模型最终将用于帮助实现纳米磁磁块阵列中的这些行为,以用于新颖的计算硬件。

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