通过神经元同步的工作记忆特征绑定

Joao Barbosa, Kartik K. Sreenivasan, A. Compte
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引用次数: 1

摘要

交换错误发生在工作记忆(WM)任务中,当错误的反应相对于非目标刺激实际上是准确的。这些错误反映了未能在内存中绑定定义一个对象的特征的连接,并且所涉及的机制仍然未知。在这里,我们测试了跨特征特定神经组件的同步机制。我们建立了WM的生物物理神经网络模型,该模型由两个一维WM吸引子网络组成,一个表示颜色,另一个表示位置。在每个网络中,通过快速循环激励和较慢反馈抑制的相互作用,在碰撞吸引子活动期间诱导伽马振荡。然后,这两个网络通过弱激励连接起来,通过网络上成对突起的选择性同步来完成颜色位置绑定。通过同时刺激每个网络中相应的凸点来实现关联编码,并通过用0.5 s脉冲刺激提示位置来实现特征解码,该脉冲强烈影响相应的锁相凸点。在一些模拟中,“颜色肿块”突然改变了它们与“位置肿块”的相位关系,从中我们得出了一个神经预测:交换错误与延迟期振荡活动的低相位一致性有关。最后,我们在n=30人的MEG记录中验证了这一预测。
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Feature-binding in working memory through neuronal synchronization
Swap-errors occur in working memory (WM) tasks when a wrong response is in fact accurate relative to a non-target stimulus. These errors reflect the failure to bind in memory the conjunction of features that define one object, and the mechanisms implicated remain unknown. Here, we tested the mechanism of synchrony across featurespecific neural assemblies. We built a biophysical neural network model for WM composed of two 1D attractor networks for WM, one representing colors and the other one locations. Within each network, gamma-oscillations were induced during bump-attractor activity through the interplay of fast recurrent excitation and slower feedback inhibition. These two networks are then connected via weak excitation, accomplishing color-location binding through the selective synchronization of pairs of bumps across the networks. Association-encoding was accomplished by stimulating simultaneously the corresponding bumps in each network, and feature-decoding by stimulating the cued location with a .5s pulse, which impacted strongly the corresponding phase-locked bump. In some simulations, “color bumps” abruptly changed their phase relationship with “location bumps” from which we derived a neural prediction: swap-errors are associated with a lower phase consistency of oscillatory activity in the delay period. Finally, we tested this prediction in MEG recorded from n=30 humans.
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