Department of Experimental Psychology, University of Oxford, Oxford, United Kingdom.
Department of Experimental Psychology, University of Groningen, Groningen, the Netherlands.
PLoS Biol. 2020 Mar 2;18(3):e3000625. doi: 10.1371/journal.pbio.3000625. eCollection 2020 Mar.
Working memory (WM) is important to maintain information over short time periods to provide some stability in a constantly changing environment. However, brain activity is inherently dynamic, raising a challenge for maintaining stable mental states. To investigate the relationship between WM stability and neural dynamics, we used electroencephalography to measure the neural response to impulse stimuli during a WM delay. Multivariate pattern analysis revealed representations were both stable and dynamic: there was a clear difference in neural states between time-specific impulse responses, reflecting dynamic changes, yet the coding scheme for memorised orientations was stable. This suggests that a stable subcomponent in WM enables stable maintenance within a dynamic system. A stable coding scheme simplifies readout for WM-guided behaviour, whereas the low-dimensional dynamic component could provide additional temporal information. Despite having a stable subspace, WM is clearly not perfect-memory performance still degrades over time. Indeed, we find that even within the stable coding scheme, memories drift during maintenance. When averaged across trials, such drift contributes to the width of the error distribution.
工作记忆(WM)对于在短时间内保持信息以在不断变化的环境中提供一定的稳定性非常重要。然而,大脑活动本质上是动态的,这给维持稳定的心理状态带来了挑战。为了研究 WM 稳定性和神经动力学之间的关系,我们使用脑电图来测量 WM 延迟期间对冲动刺激的神经反应。多元模式分析显示,代表既稳定又动态:特定时间的冲动反应之间存在明显的神经状态差异,反映了动态变化,但记忆方向的编码方案是稳定的。这表明 WM 中的稳定子组件能够在动态系统中稳定地维持。稳定的编码方案简化了 WM 引导行为的读取,而低维动态组件可以提供额外的时间信息。尽管具有稳定的子空间,但 WM 显然并不完美——记忆性能仍然会随着时间的推移而下降。事实上,我们发现,即使在稳定的编码方案中,记忆在维持过程中也会漂移。在平均跨试验的情况下,这种漂移会导致误差分布变宽。