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Correlations between prefrontal neurons form a small-world network that optimizes the generation of multineuron sequences of activity

机译:前额叶神经元之间的相关性形成了一个小世界网络该网络优化了多神经元活动序列的产生

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摘要

Sequential patterns of prefrontal activity are believed to mediate important behaviors, e.g., working memory, but it remains unclear exactly how they are generated. In accordance with previous studies of cortical circuits, we found that prefrontal microcircuits in young adult mice spontaneously generate many more stereotyped sequences of activity than expected by chance. However, the key question of whether these sequences depend on a specific functional organization within the cortical microcircuit, or emerge simply as a by-product of random interactions between neurons, remains unanswered. We observed that correlations between prefrontal neurons do follow a specific functional organization—they have a small-world topology. However, until now it has not been possible to directly link small-world topologies to specific circuit functions, e.g., sequence generation. Therefore, we developed a novel analysis to address this issue. Specifically, we constructed surrogate data sets that have identical levels of network activity at every point in time but nevertheless represent various network topologies. We call this method shuffling activity to rearrange correlations (SHARC). We found that only surrogate data sets based on the actual small-world functional organization of prefrontal microcircuits were able to reproduce the levels of sequences observed in actual data. As expected, small-world data sets contained many more sequences than surrogate data sets with randomly arranged correlations. Surprisingly, small-world data sets also outperformed data sets in which correlations were maximally clustered. Thus the small-world functional organization of cortical microcircuits, which effectively balances the random and maximally clustered regimes, is optimal for producing stereotyped sequential patterns of activity.
机译:据信前额活动的顺序模式可介导重要的行为,例如工作记忆,但目前尚不清楚它们是如何产生的。根据先前对皮质回路的研究,我们发现年轻成年小鼠中的前额叶微回路自发产生比偶然预期的活动更多的定型序列。然而,这些序列是否依赖于皮层微电路中特定的功能组织,还是仅仅作为神经元之间随机相互作用的副产物出现的关键问题,仍未得到解答。我们观察到前额叶神经元之间的相关性确实遵循特定的功能组织-它们具有小世界的拓扑结构。但是,到目前为止,尚不可能将小世界的拓扑结构直接链接到特定的电路功能,例如序列生成。因此,我们开发了一种新颖的分析方法来解决此问题。具体来说,我们构建了替代数据集,这些数据集在每个时间点的网络活动级别都相同,但是仍然代表了各种网络拓扑。我们称这种方法改组为重排相关性(SHARC)。我们发现,只有基于额叶前微电路的实际小世界功能组织的替代数据集才能再现实际数据中观察到的序列水平。不出所料,与具有随机排列相关性的替代数据集相比,小世界数据集包含的序列更多。令人惊讶的是,小世界数据集的性能也优于相关性最大的聚类数据集。因此,有效地平衡随机和最大聚类状态的皮质微电路的小世界功能组织对于产生定型的活动顺序模式是最佳的。

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