Effect of network topology on neuronal encoding based on spatiotemporal patterns of spikes.

Hfsp Journal Pub Date : 2010-06-01 Epub Date: 2010-05-07 DOI:10.2976/1.3386761
Petra E Vertes, Thomas Duke
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引用次数: 19

Abstract

Despite significant progress in our understanding of the brain at both microscopic and macroscopic scales, the mechanisms by which low-level neuronal behavior gives rise to high-level mental processes such as memory still remain unknown. In this paper, we assess the plausibility and quantify the performance of polychronization, a newly proposed mechanism of neuronal encoding, which has been suggested to underlie a wide range of cognitive phenomena. We then investigate the effect of network topology on the reliability with which input stimuli can be distinguished based on their encoding in the form of so-called polychronous groups or spatiotemporal patterns of spikes. We find that small-world networks perform an order of magnitude better than random ones, enabling reliable discrimination between inputs even when prompted by increasingly incomplete recall cues. Furthermore, we show that small-world architectures operate at significantly reduced energetic costs and that their memory capacity scales favorably with network size. Finally, we find that small-world topologies introduce biologically realistic constraints on the optimal input stimuli, favoring especially the topographic inputs known to exist in many cortical areas. Our results suggest that mammalian cortical networks, by virtue of being both small-world and topographically organized, seem particularly well-suited to information processing through polychronization. This article addresses the fundamental question of encoding in neuroscience. In particular, evidence is presented in support of an emerging model of neuronal encoding in the neocortex based on spatiotemporal patterns of spikes.

Abstract Image

Abstract Image

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基于脉冲时空模式的网络拓扑对神经元编码的影响。
尽管我们在微观和宏观尺度上对大脑的理解取得了重大进展,但低级神经元行为产生高级心理过程(如记忆)的机制仍然未知。在本文中,我们评估了多时变的合理性,并量化了多时变的性能,多时变是一种新提出的神经元编码机制,已被认为是广泛认知现象的基础。然后,我们研究了网络拓扑对输入刺激的可靠性的影响,输入刺激可以根据所谓的多时群或峰值的时空模式的编码来区分。我们发现,小世界网络的表现比随机网络好一个数量级,即使在越来越不完整的回忆线索提示下,也能在输入之间进行可靠的区分。此外,我们还表明,小世界架构以显著降低的能量成本运行,并且它们的内存容量随着网络规模的扩大而扩大。最后,我们发现小世界拓扑结构引入了对最佳输入刺激的生物学现实约束,特别是存在于许多皮质区域的已知地形输入。我们的研究结果表明,哺乳动物皮层网络由于具有小世界和地形组织的特点,似乎特别适合通过多时化进行信息处理。这篇文章讨论了神经科学编码的基本问题。特别是,证据提出了支持一个新兴的模型的神经元编码在新皮层基于时空模式的尖峰。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Hfsp Journal
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