统计学习和表征漂移:记忆的动态基础

IF 5.2 2区 医学 Q1 NEUROSCIENCES
Jens-Bastian Eppler , Matthias Kaschube , Simon Rumpel
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引用次数: 0

摘要

在许多大脑区域,即使在支持稳定的感知和行为时,神经元也会在几天内表现出其调谐特性的持续变化——这种现象被称为表征漂移。当神经元回路的组成元素不断变化时,它们如何保持稳定的功能?在这里,我们回顾了最近在相互联系水平上的理论和实验工作,从驱动单个神经元调谐漂移的突触的永久变化到群体水平上的紧急稳定性,保持与特定感知或行为相关的活动模式的相似性。我们认为,统计学习不仅在发展和适应新环境中发挥着重要作用,而且在稳定的行为和环境条件下,对于维护表征相似性的稳定性也至关重要。我们讨论了学习、记忆和遗忘的含义。这个框架调和了不稳定的神经活动和稳定的感知之间的明显矛盾,表明表征是通过动态过程而不是静态神经编码来维持的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical learning and representational drift: A dynamic substrate for memories
In many brain areas, neurons exhibit continuous changes in their tuning properties over days, even when supporting stable percepts and behaviors–a phenomenon termed representational drift. How do neuronal circuits maintain stable function when their constituent elements are in constant flux? Here, we review recent theoretical and experimental work on interconnected levels, ranging from perpetual changes in synapses driving drifts in tuning of individual neurons to emergent stability at the population level, preserving similarities of activity patterns associated to specific percepts or behaviors. We propose that statistical learning, beyond its well-established roles during development and adaptation to new contexts, is also essential under steady behavioral and environmental conditions to safeguard the stability of representational similarities. We discuss implications for learning, memory, and forgetting. This framework reconciles the apparent paradox between unstable neural activity and stable perception, suggesting that representations are maintained through dynamic processes rather than static neural codes.
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来源期刊
Current Opinion in Neurobiology
Current Opinion in Neurobiology 医学-神经科学
CiteScore
11.10
自引率
1.80%
发文量
130
审稿时长
4-8 weeks
期刊介绍: Current Opinion in Neurobiology publishes short annotated reviews by leading experts on recent developments in the field of neurobiology. These experts write short reviews describing recent discoveries in this field (in the past 2-5 years), as well as highlighting select individual papers of particular significance. The journal is thus an important resource allowing researchers and educators to quickly gain an overview and rich understanding of complex and current issues in the field of Neurobiology. The journal takes a unique and valuable approach in focusing each special issue around a topic of scientific and/or societal interest, and then bringing together leading international experts studying that topic, embracing diverse methodologies and perspectives. Journal Content: The journal consists of 6 issues per year, covering 8 recurring topics every other year in the following categories: -Neurobiology of Disease- Neurobiology of Behavior- Cellular Neuroscience- Systems Neuroscience- Developmental Neuroscience- Neurobiology of Learning and Plasticity- Molecular Neuroscience- Computational Neuroscience
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