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潜伏学习驱动不同CA1亚群中依赖睡眠的可塑性。

Latent learning drives sleep-dependent plasticity in distinct CA1 subpopulations.

作者信息

Guo Wei, Zhang Jie J, Newman Jonathan P, Wilson Matthew A

机构信息

Picower Institute of Learning and Memory, Massachusetts Institute of Technology, Cambridge, MA 02139, USA.

Picower Institute of Learning and Memory, Massachusetts Institute of Technology, Cambridge, MA 02139, USA.

出版信息

Cell Rep. 2024 Dec 24;43(12):115028. doi: 10.1016/j.celrep.2024.115028. Epub 2024 Nov 28.

Abstract

Latent learning is a process that enables the brain to transform experiences into "cognitive maps," a form of implicit memory, without requiring reinforced training. To investigate its neural mechanisms, we record from hippocampal neurons in mice during latent learning of spatial maps and observe that the high-dimensional neural state space gradually transforms into a low-dimensional manifold that closely resembles the physical environment. This transformation process is associated with the neural reactivation of navigational experiences during sleep. Additionally, we identify a subset of hippocampal neurons that, rather than forming place fields in a novel environment, maintain weak spatial tuning but gradually develop correlated activity with other neurons. The elevated correlation introduces redundancy into the ensemble code, transforming the neural state space into a low-dimensional manifold that effectively links discrete place fields of place cells into a map-like structure. These results suggest a potential mechanism for latent learning of spatial maps in the hippocampus.

摘要

潜伏学习是一种使大脑能够将经历转化为“认知地图”(一种内隐记忆形式)的过程,而无需强化训练。为了研究其神经机制,我们在小鼠对空间地图的潜伏学习过程中记录海马神经元的活动,并观察到高维神经状态空间逐渐转变为与物理环境非常相似的低维流形。这个转变过程与睡眠期间导航经历的神经重新激活有关。此外,我们识别出一部分海马神经元,它们在新环境中并不形成位置野,而是保持微弱的空间调谐,但逐渐与其他神经元发展出相关活动。这种增强的相关性在整体编码中引入了冗余,将神经状态空间转变为一个低维流形,有效地将位置细胞的离散位置野连接成类似地图的结构。这些结果提示了海马体中空间地图潜伏学习的一种潜在机制。

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