Department of Mathematics, University of Houston, Houston, Texas 77204, Department of Mathematics, University of Pittsburgh, Pittsburgh, Pennsylvania 15260, and Center for the Neural Basis of Cognition, Pittsburgh, Pennsylvania 15213.
J Neurosci. 2013 Nov 27;33(48):18999-9011. doi: 10.1523/JNEUROSCI.1641-13.2013.
A neural correlate of parametric working memory is a stimulus-specific rise in neuron firing rate that persists long after the stimulus is removed. Network models with local excitation and broad inhibition support persistent neural activity, linking network architecture and parametric working memory. Cortical neurons receive noisy input fluctuations that cause persistent activity to diffusively wander about the network, degrading memory over time. We explore how cortical architecture that supports parametric working memory affects the diffusion of persistent neural activity. Studying both a spiking network and a simplified potential well model, we show that spatially heterogeneous excitatory coupling stabilizes a discrete number of persistent states, reducing the diffusion of persistent activity over the network. However, heterogeneous coupling also coarse-grains the stimulus representation space, limiting the storage capacity of parametric working memory. The storage errors due to coarse-graining and diffusion trade off so that information transfer between the initial and recalled stimulus is optimized at a fixed network heterogeneity. For sufficiently long delay times, the optimal number of attractors is less than the number of possible stimuli, suggesting that memory networks can under-represent stimulus space to optimize performance. Our results clearly demonstrate the combined effects of network architecture and stochastic fluctuations on parametric memory storage.
参数工作记忆的神经相关物是神经元发射率的刺激特异性升高,这种升高在刺激去除后会持续很长时间。具有局部兴奋和广泛抑制的网络模型支持持久的神经活动,将网络架构与参数工作记忆联系起来。皮质神经元接收噪声输入波动,导致持久活动在网络中扩散游走,随着时间的推移导致记忆退化。我们探讨了支持参数工作记忆的皮质结构如何影响持久神经活动的扩散。通过研究一个尖峰网络和一个简化的势阱模型,我们表明空间异质的兴奋耦合稳定了离散数量的持久状态,从而减少了网络中持久活动的扩散。然而,异质耦合也使刺激表示空间变得粗糙,限制了参数工作记忆的存储容量。由于粗粒化和扩散而导致的存储错误相互权衡,因此在固定的网络异质性下,初始刺激和回忆刺激之间的信息传递得到了优化。对于足够长的延迟时间,最优吸引子的数量小于可能的刺激数量,这表明记忆网络可以对刺激空间进行欠表示,以优化性能。我们的结果清楚地表明了网络架构和随机波动对参数记忆存储的综合影响。