Hardy N F, Buonomano Dean V
Neuroscience Interdepartmental Program and Department of Neurobiology, University of California Los Angeles, Los Angeles, CA 90095, U.S.A.
Neuroscience Interdepartmental Program and Departments of Neurology and Psychology, University of California Los Angeles, Los Angeles, CA 90095, U.S.A.
Neural Comput. 2018 Feb;30(2):378-396. doi: 10.1162/neco_a_01041. Epub 2017 Nov 21.
Brain activity evolves through time, creating trajectories of activity that underlie sensorimotor processing, behavior, and learning and memory. Therefore, understanding the temporal nature of neural dynamics is essential to understanding brain function and behavior. In vivo studies have demonstrated that sequential transient activation of neurons can encode time. However, it remains unclear whether these patterns emerge from feedforward network architectures or from recurrent networks and, furthermore, what role network structure plays in timing. We address these issues using a recurrent neural network (RNN) model with distinct populations of excitatory and inhibitory units. Consistent with experimental data, a single RNN could autonomously produce multiple functionally feedforward trajectories, thus potentially encoding multiple timed motor patterns lasting up to several seconds. Importantly, the model accounted for Weber's law, a hallmark of timing behavior. Analysis of network connectivity revealed that efficiency-a measure of network interconnectedness-decreased as the number of stored trajectories increased. Additionally, the balance of excitation (E) and inhibition (I) shifted toward excitation during each unit's activation time, generating the prediction that observed sequential activity relies on dynamic control of the E/I balance. Our results establish for the first time that the same RNN can generate multiple functionally feedforward patterns of activity as a result of dynamic shifts in the E/I balance imposed by the connectome of the RNN. We conclude that recurrent network architectures account for sequential neural activity, as well as for a fundamental signature of timing behavior: Weber's law.
大脑活动随时间演变,形成活动轨迹,这些轨迹是感觉运动处理、行为以及学习和记忆的基础。因此,理解神经动力学的时间特性对于理解大脑功能和行为至关重要。体内研究表明,神经元的顺序性瞬时激活可以编码时间。然而,尚不清楚这些模式是源自前馈网络架构还是循环网络,此外,网络结构在计时中起什么作用。我们使用具有不同兴奋性和抑制性单元群体的循环神经网络(RNN)模型来解决这些问题。与实验数据一致,单个RNN可以自主产生多个功能上前馈的轨迹,从而有可能编码持续长达数秒的多个定时运动模式。重要的是,该模型符合韦伯定律,这是计时行为的一个标志。对网络连通性的分析表明,效率——一种网络互连性的度量——随着存储轨迹数量的增加而降低。此外,在每个单元的激活时间内,兴奋(E)和抑制(I)的平衡向兴奋方向转变,从而产生这样的预测:观察到的顺序活动依赖于E/I平衡的动态控制。我们的结果首次表明,由于RNN的连接组施加的E/I平衡的动态变化,同一个RNN可以产生多个功能上前馈的活动模式。我们得出结论,循环网络架构解释了顺序性神经活动以及计时行为的一个基本特征:韦伯定律。