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Developmental Emergence of Sparse Coding: A Dynamic Systems Approach

机译:稀疏编码的发展出现:一种动态系统方法

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摘要

During neocortical development, network activity undergoes a dramatic transition from largely synchronized, so-called cluster activity, to a relatively sparse pattern around the time of eye-opening in rodents. Biophysical mechanisms underlying this sparsification phenomenon remain poorly understood. Here, we present a dynamic systems modeling study of a developing neural network that provides the first mechanistic insights into sparsification. We find that the rest state of immature networks is strongly affected by the dynamics of a transient, unstable state hidden in their firing activities, allowing these networks to either be silent or generate large cluster activity. We address how, and which, specific developmental changes in neuronal and synaptic parameters drive sparsification. We also reveal how these changes refine the information processing capabilities of an in vivo developing network, mainly by showing a developmental reduction in the instability of network’s firing activity, an effective availability of inhibition-stabilized states, and an emergence of spontaneous attractors and state transition mechanisms. Furthermore, we demonstrate the key role of GABAergic transmission and depressing glutamatergic synapses in governing the spatiotemporal evolution of cluster activity. These results, by providing a strong link between experimental observations and model behavior, suggest how adult sparse coding networks may emerge developmentally.
机译:在新皮层发育期间,网络活动经历了从很大程度上同步的所谓簇活动到啮齿类动物大开眼时的相对稀疏模式的急剧转变。稀疏现象背后的生物物理机制仍然知之甚少。在这里,我们提出了一个正在发展的神经网络的动态系统建模研究,该研究为稀疏化提供了第一个机理见解。我们发现,未成熟网络的静止状态受隐藏在其触发活动中的瞬态,不稳定状态的动态影响很大,从而使这些网络保持沉默或生成大型群集活动。我们探讨了神经元和突触参数的具体发育变化如何以及哪些驱动了稀疏化。我们还揭示了这些变化如何改善体内正在发展的网络的信息处理能力,主要是通过显示网络射击活动的不稳定性的发展减少,抑制稳定状态的有效可用性以及自发吸引子和状态转变的出现机制。此外,我们证明了GABA能传递和抑制谷氨酸能突触在控制簇活动的时空演变中的关键作用。通过提供实验观察结果与模型行为之间的紧密联系,这些结果表明成人稀疏编码网络可能会如何发展。

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