Medina Nelson D, Margoliash Daniel
bioRxiv. 2025 Aug 4:2024.05.18.594825. doi: 10.1101/2024.05.18.594825.
Neuronal intrinsic excitability is a mechanism implicated in learning and memory that is distinct from synaptic plasticity. Prior work in songbirds established that intrinsic properties (IPs) of premotor basal-ganglia-projecting neurons (HVC ) relate to learned song. Here we find that temporal song structure is related to specific HVC IPs: HVC from birds who sang longer songs including longer invariant vocalizations (harmonic stacks) had IPs that reflected increased post-inhibitory rebound. This suggests a rebound excitation mechanism underlying the ability of HVC neurons to integrate over long periods of time throughout the song and represent sequence information. To explore this, we constructed a network model of realistic neurons showing how in-vivo HVC bursting properties link rebound excitation to network structure and behavior. These results demonstrate an explicit link between neuronal IPs and learned behavior. We propose that sequential behaviors exhibiting temporal regularity require IPs to be included in realistic network-level descriptions.
神经元内在兴奋性是一种与学习和记忆相关的机制,与突触可塑性不同。先前对鸣禽的研究表明,运动前基底神经节投射神经元(HVC )的内在特性(IPs)与习得的歌声有关。在这里,我们发现歌声的时间结构与特定的HVC IPs有关:来自唱出较长歌曲(包括较长的不变发声(和声堆叠))的鸟类的HVC 具有反映抑制后反弹增加的IPs。这表明存在一种反弹兴奋机制,是HVC 神经元在整首歌曲中长时间整合并表示序列信息能力的基础。为了探究这一点,我们构建了一个真实神经元的网络模型,展示了体内HVC 的爆发特性如何将反弹兴奋与网络结构和行为联系起来。这些结果证明了神经元IPs与习得行为之间存在明确的联系。我们提出,表现出时间规律性的序列行为需要将IPs纳入真实的网络层面描述中。