论文标题
非线性耦合的神经波动自组织为协同种群代码
Self-organization of nonlinearly coupled neural fluctuations into synergistic population codes
论文作者
论文摘要
大脑中的神经活动表现出相关的波动,可能会强烈影响神经种群编码的特性。然而,这种相关的神经波动可能是由内在的神经回路动力学引起的,随后影响神经种群活性的计算特性仍然很少了解。主要困难在于解决与系统整体动力学相关的波动之间的非线性耦合。在这项研究中,我们研究了神经倾向模型中相关神经波动的固有动力学的协同神经种群代码的出现,从而捕获了峰值神经元的逼真的非线性噪声偶联。我们表明,在凹凸吸引力网络中自然出现了丰富的空间相关模式的曲目,并进一步揭示了动态状态,在这些动力学方面下,差异相关和噪声相关之间的相互作用会导致协同代码。此外,我们发现负相关可能会在两个颠簸之间引起稳定的结合状态,这是一种以前在点火速率模型中未观察到的现象。这些噪声引起的碰撞吸引子的效果导致了许多计算优势,包括增强的工作记忆能力和有效的时空多路复用,并可以说明与工作记忆有关的一系列认知和行为现象。这项研究提供了一种动力学方法,可以研究现实的相关神经波动和对其在皮质计算中的作用的见解。
Neural activity in the brain exhibits correlated fluctuations that may strongly influence the properties of neural population coding. However, how such correlated neural fluctuations may arise from the intrinsic neural circuit dynamics and subsequently affect the computational properties of neural population activity remains poorly understood. The main difficulty lies in resolving the nonlinear coupling between correlated fluctuations with the overall dynamics of the system. In this study, we investigate the emergence of synergistic neural population codes from the intrinsic dynamics of correlated neural fluctuations in a neural circuit model capturing realistic nonlinear noise coupling of spiking neurons. We show that a rich repertoire of spatial correlation patterns naturally emerges in a bump attractor network and further reveals the dynamical regime under which the interplay between differential and noise correlations leads to synergistic codes. Moreover, we find that negative correlations may induce stable bound states between two bumps, a phenomenon previously unobserved in firing rate models. These noise-induced effects of bump attractors lead to a number of computational advantages including enhanced working memory capacity and efficient spatiotemporal multiplexing and can account for a range of cognitive and behavioral phenomena related to working memory. This study offers a dynamical approach to investigating realistic correlated neural fluctuations and insights to their roles in cortical computations.