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沿人类海马θ节律的竞争记忆的相分离。

Phase separation of competing memories along the human hippocampal theta rhythm.

机构信息

Centre for Human Brain Health, School of Psychology, University of Birmingham, Birmingham, United Kingdom.

Research Group Adaptive Memory and Decision Making, Max Planck Institute for Human Development, Berlin, Germany.

出版信息

Elife. 2022 Nov 17;11:e80633. doi: 10.7554/eLife.80633.

Abstract

Competition between overlapping memories is considered one of the major causes of forgetting, and it is still unknown how the human brain resolves such mnemonic conflict. In the present magnetoencephalography (MEG) study, we empirically tested a computational model that leverages an oscillating inhibition algorithm to minimise overlap between memories. We used a proactive interference task, where a reminder word could be associated with either a single image (non-competitive condition) or two competing images, and participants were asked to always recall the most recently learned word-image association. Time-resolved pattern classifiers were trained to detect the reactivated content of target and competitor memories from MEG sensor patterns, and the timing of these neural reactivations was analysed relative to the phase of the dominant hippocampal 3 Hz theta oscillation. In line with our pre-registered hypotheses, target and competitor reactivations locked to different phases of the hippocampal theta rhythm after several repeated recalls. Participants who behaviourally experienced lower levels of interference also showed larger phase separation between the two overlapping memories. The findings provide evidence that the temporal segregation of memories, orchestrated by slow oscillations, plays a functional role in resolving mnemonic competition by separating and prioritising relevant memories under conditions of high interference.

摘要

记忆重叠的竞争被认为是遗忘的主要原因之一,但人类大脑如何解决这种记忆冲突仍不清楚。在目前的脑磁图(MEG)研究中,我们实证检验了一种利用振荡抑制算法来最小化记忆重叠的计算模型。我们使用了一种前摄性干扰任务,其中一个提示词可以与一个单一的图像(非竞争条件)或两个竞争的图像相关联,并且要求参与者总是回忆起最近学到的词-图像关联。时间分辨的模式分类器被训练来从 MEG 传感器模式中检测目标和竞争记忆的重新激活内容,并且分析这些神经重新激活相对于主导海马体 3 Hzθ 振荡相位的时间。与我们预先注册的假设一致,在多次重复回忆后,目标和竞争的重新激活锁定在海马体θ节律的不同相位上。在行为上经历较低干扰水平的参与者在两个重叠记忆之间也表现出更大的相位分离。这些发现提供了证据,表明由慢波协调的记忆的时间分离在高干扰条件下通过分离和优先处理相关记忆在解决记忆竞争方面起着功能作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/74b1/9671495/60649b69a62d/elife-80633-fig1.jpg

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