Queensland Brain Institute, University of Queensland, St Lucia, Queensland, Australia.
School of Mathematics and Physics, University of Queensland, St Lucia, Queensland, Australia.
PLoS Comput Biol. 2018 Sep 28;14(9):e1006421. doi: 10.1371/journal.pcbi.1006421. eCollection 2018 Sep.
Spontaneous activity is a fundamental characteristic of the developing nervous system. Intriguingly, it often takes the form of multiple structured assemblies of neurons. Such assemblies can form even in the absence of afferent input, for instance in the zebrafish optic tectum after bilateral enucleation early in life. While the development of neural assemblies based on structured afferent input has been theoretically well-studied, it is less clear how they could arise in systems without afferent input. Here we show that a recurrent network of binary threshold neurons with initially random weights can form neural assemblies based on a simple Hebbian learning rule. Over development the network becomes increasingly modular while being driven by initially unstructured spontaneous activity, leading to the emergence of neural assemblies. Surprisingly, the set of neurons making up each assembly then continues to evolve, despite the number of assemblies remaining roughly constant. In the mature network assembly activity builds over several timesteps before the activation of the full assembly, as recently observed in calcium-imaging experiments. Our results show that Hebbian learning is sufficient to explain the emergence of highly structured patterns of neural activity in the absence of structured input.
自发性活动是发育中神经系统的基本特征。有趣的是,它通常采取多个神经元的结构化集合的形式。即使在没有传入输入的情况下,例如在生命早期双侧眼球摘除后的斑马鱼视顶盖中,也可以形成这种集合。虽然基于结构化传入输入的神经集合的发展在理论上得到了很好的研究,但在没有传入输入的系统中,它们如何产生还不太清楚。在这里,我们表明,具有初始随机权重的二进制阈值神经元的递归网络可以基于简单的赫布学习规则形成神经集合。在发展过程中,网络变得越来越模块化,同时受到最初无结构的自发性活动的驱动,导致神经集合的出现。令人惊讶的是,尽管集合的数量大致保持不变,但组成每个集合的神经元随后继续进化。在成熟的网络中,集合活动在激活整个集合之前会在几个时间步长上累积,这与最近在钙成像实验中观察到的情况一致。我们的结果表明,赫布学习足以解释在没有结构化输入的情况下高度结构化的神经活动模式的出现。