Brain and eye movement dynamics track the transition from learning to memory-guided action.

IF 8.1 1区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Current Biology Pub Date : 2024-11-04 Epub Date: 2024-10-21 DOI:10.1016/j.cub.2024.09.063
Philipp K Büchel, Janina Klingspohr, Marcel S Kehl, Bernhard P Staresina
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引用次数: 0

Abstract

Learning never stops. As we navigate life, we continuously acquire and update knowledge to optimize memory-guided action, with a gradual shift from the former to the latter as we master our environment. How are these learning dynamics expressed in the brain and in behavioral patterns? Here, we devised a spatiotemporal image learning task ("Memory Arena") in which participants learn a set of 50 items to criterion across repeated exposure blocks. Critically, brief task-free periods between successive image presentations allowed us to assess multivariate electroencephalogram (EEG) patterns representing the previous and/or upcoming image identity, as well as anticipatory eye movements toward the upcoming image location. As expected, participants eventually met the performance criterion, albeit with different learning rates. During task-free periods, we were able to readily decode representations of both previous and upcoming image identities. Importantly though, decoding strength followed opposing slopes for previous vs. upcoming images across time, with a gradual decline of evidence for the previous image and a gradual increase of evidence for the upcoming image. Moreover, the ratio of upcoming vs. previous image evidence directly followed behavioral learning rates. Finally, eye movement data revealed that participants increasingly used the task-free period to anticipate upcoming image locations, with target-precision slopes paralleling both behavioral performance measures as well as EEG decodability of the upcoming image across time. Together, these results unveil the neural and behavioral dynamics underlying the gradual transition from learning to memory-guided action.

大脑和眼球运动动态追踪从学习到记忆引导行动的过渡。
学习永不停歇。我们在生活中不断获取和更新知识,优化以记忆为导向的行动,并在掌握环境的过程中逐渐从前者转向后者。这些学习动态是如何在大脑和行为模式中表现出来的呢?在这里,我们设计了一个时空图像学习任务("记忆竞技场"),让参与者在重复的暴露区块中学习一组 50 个项目的标准。重要的是,在连续图像呈现之间的短暂无任务期间,我们可以评估代表先前和/或即将出现的图像特征的多变量脑电图(EEG)模式,以及对即将出现的图像位置的预期眼动。不出所料,参与者最终都达到了成绩标准,只是学习速度有所不同。在无任务期间,我们能够很容易地解码之前和即将出现的图像特征。但重要的是,解码强度随着时间的推移,先前图像与即将出现图像的解码强度呈相反的斜率,先前图像的证据逐渐减少,而即将出现图像的证据逐渐增加。此外,即将出现的图像与之前图像的证据比例直接与行为学习率相关。最后,眼动数据显示,参与者越来越多地利用无任务期来预测即将出现的图像位置,其目标精确度斜率与行为表现测量以及即将出现图像的脑电图解码性在时间上是平行的。这些结果共同揭示了从学习到记忆指导行动逐渐过渡的神经和行为动态过程。
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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来源期刊
Current Biology
Current Biology 生物-生化与分子生物学
CiteScore
11.80
自引率
2.20%
发文量
869
审稿时长
46 days
期刊介绍: Current Biology is a comprehensive journal that showcases original research in various disciplines of biology. It provides a platform for scientists to disseminate their groundbreaking findings and promotes interdisciplinary communication. The journal publishes articles of general interest, encompassing diverse fields of biology. Moreover, it offers accessible editorial pieces that are specifically designed to enlighten non-specialist readers.
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