Department of Experimental Psychology, University of Oxford, Oxford, United Kingdom.
PLoS Comput Biol. 2023 Oct 18;19(10):e1011555. doi: 10.1371/journal.pcbi.1011555. eCollection 2023 Oct.
When multiple items are held in short-term memory, cues that retrospectively prioritise one item over another (retro-cues) can facilitate subsequent recall. However, the neural and computational underpinnings of this effect are poorly understood. One recent study recorded neural signals in the macaque lateral prefrontal cortex (LPFC) during a retro-cueing task, contrasting delay-period activity before (pre-cue) and after (post-cue) retrocue onset. They reported that in the pre-cue delay, the individual stimuli were maintained in independent subspaces of neural population activity, whereas in the post-cue delay, the prioritised items were rotated into a common subspace, potentially allowing a common readout mechanism. To understand how such representational transitions can be learnt through error minimisation, we trained recurrent neural networks (RNNs) with supervision to perform an equivalent cued-recall task. RNNs were presented with two inputs denoting conjunctive colour-location stimuli, followed by a pre-cue memory delay, a location retrocue, and a post-cue delay. We found that the orthogonal-to-parallel geometry transformation observed in the macaque LPFC emerged naturally in RNNs trained to perform the task. Interestingly, the parallel geometry only developed when the cued information was required to be maintained in short-term memory for several cycles before readout, suggesting that it might confer robustness during maintenance. We extend these findings by analysing the learning dynamics and connectivity patterns of the RNNs, as well as the behaviour of models trained with probabilistic cues, allowing us to make predictions for future studies. Overall, our findings are consistent with recent theoretical accounts which propose that retrocues transform the prioritised memory items into a prospective, action-oriented format.
当多个项目被短期记忆持有时,回顾性地提示一个项目优先于另一个项目的线索(回溯线索)可以促进后续的回忆。然而,这种效应的神经和计算基础还知之甚少。最近的一项研究在猕猴外侧前额叶皮层(LPFC)中记录了回溯线索任务期间的神经信号,对比了回溯线索出现前后的延迟期活动(前线索和后线索)。他们报告说,在前线索延迟期,个体刺激被维持在神经群体活动的独立子空间中,而在后线索延迟期,优先的项目被旋转到一个共同的子空间中,这可能允许使用一个共同的读出机制。为了理解这种表示转换如何通过最小化错误来学习,我们使用监督训练递归神经网络(RNN)来执行等效的提示召回任务。RNN 接受两个输入,表示联合颜色-位置刺激,然后是前线索记忆延迟、位置回溯线索和后线索延迟。我们发现,在接受训练以执行任务的 RNN 中,自然出现了猕猴 LPFC 中观察到的正交到平行几何变换。有趣的是,只有当提示信息需要在几个循环中被短期记忆保持后才能读出时,平行几何才会发展,这表明它可能在保持期间提供鲁棒性。我们通过分析 RNN 的学习动态和连接模式,以及使用概率线索训练的模型的行为,扩展了这些发现,从而能够对未来的研究做出预测。总的来说,我们的发现与最近提出回溯线索将优先记忆项目转换为前瞻性、面向行动的格式的理论解释一致。