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具有瞬态连接的网络所编码的稳健空间记忆图。

Robust spatial memory maps encoded by networks with transient connections.

机构信息

Department of Computational and Applied Mathematics, Rice University, Houston, Texas, United States of America.

Lawrence Berkeley National Laboratory, Berkeley, California, United States of America.

出版信息

PLoS Comput Biol. 2018 Sep 18;14(9):e1006433. doi: 10.1371/journal.pcbi.1006433. eCollection 2018 Sep.

Abstract

The spiking activity of principal cells in mammalian hippocampus encodes an internalized neuronal representation of the ambient space-a cognitive map. Once learned, such a map enables the animal to navigate a given environment for a long period. However, the neuronal substrate that produces this map is transient: the synaptic connections in the hippocampus and in the downstream neuronal networks never cease to form and to deteriorate at a rapid rate. How can the brain maintain a robust, reliable representation of space using a network that constantly changes its architecture? We address this question using a computational framework that allows evaluating the effect produced by the decaying connections between simulated hippocampal neurons on the properties of the cognitive map. Using novel Algebraic Topology techniques, we demonstrate that emergence of stable cognitive maps produced by networks with transient architectures is a generic phenomenon. The model also points out that deterioration of the cognitive map caused by weakening or lost connections between neurons may be compensated by simulating the neuronal activity. Lastly, the model explicates the importance of the complementary learning systems for processing spatial information at different levels of spatiotemporal granularity.

摘要

哺乳动物海马体中的主细胞的尖峰活动编码了环境空间的内在神经元表示形式——认知图。一旦学习,这种地图便使动物能够在给定的环境中长时间导航。然而,产生这种地图的神经元基质是短暂的:海马体中的突触连接以及下游神经元网络中的突触连接从未停止以快速的速度形成和恶化。大脑如何使用不断改变其结构的网络来维持对空间的稳健可靠的表示?我们使用计算框架来解决这个问题,该框架可以评估模拟海马神经元之间衰减连接对认知图特性产生的影响。使用新颖的代数拓扑技术,我们证明了由具有短暂结构的网络产生的稳定认知图的出现是一种普遍现象。该模型还指出,由神经元之间的减弱或丢失连接引起的认知图的恶化可以通过模拟神经元活动来补偿。最后,该模型解释了互补学习系统在不同时空粒度级别处理空间信息的重要性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6ab4/6161922/6fc8f5874cf3/pcbi.1006433.g001.jpg

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