首页> 外文期刊>Journal of Neurophysiology >Systems-based analysis of dendritic nonlinearities reveals temporal feature extraction in mouse L5 cortical neurons
【24h】

Systems-based analysis of dendritic nonlinearities reveals temporal feature extraction in mouse L5 cortical neurons

机译:树枝状非线性的基于系统的分析显示了小鼠L5皮质神经元中的时间特征提取

获取原文
获取原文并翻译 | 示例
           

摘要

What do dendritic nonlinearities tell a neuron about signals injected into the dendrite? Linear and nonlinear dendritic components affect how time-varying inputs are transformed into action potentials (APs), but the relative contribution of each component is unclear. We developed a novel systems-identification approach to isolate the nonlinear response of layer 5 pyramidal neuron dendrites in mouse prefrontal cortex in response to dendritic current injections. We then quantified the nonlinear component and its effect on the soma, using functional models composed of linear filters and static nonlinearities. Both noise and waveform current injections revealed linear and nonlinear components in the dendritic response. The nonlinear component consisted of fast Na+ spikes that varied in amplitude 10-fold in a single neuron. A functional model reproduced the timing and amplitude of the dendritic spikes and revealed that they were selective to a preferred input dynamic (similar to 4.5 ms rise time). The selectivity of the dendritic spikes became wider in the presence of additive noise, which was also predicted by the functional model. A second functional model revealed that the dendritic spikes were weakly boosted before being linearly integrated at the soma. For both our noise and waveform dendritic input, somatic APs were dependent on the somatic integration of the stimulus, followed a subset of large dendritic spikes, and were selective to the same input dynamics preferred by the dendrites. Our results suggest that the amplitude of fast dendritic spikes conveys information about high-frequency features in the dendritic input, which is then combined with low-frequency somatic integration.
机译:树突非线性怎么告诉神经元关于注入树枝状的信号?线性和非线性树突组分影响时变输入如何变换为动作电位(AP),但每个组分的相对贡献尚不清楚。我们开发了一种新颖的系统识别方法,以响应树突式电流注射而在小鼠前额叶皮质中分离在小鼠前额叶皮质中的第5层金字塔神经元树枝状的非线性响应。然后,我们使用由线性滤波器和静态非线性组成的功能模型来量化非线性组分及其对SOMA的影响。噪声和波形电流喷射在树突响应中揭示了线性和非线性组分。非线性组分由快速Na +尖峰组成,其在单个神经元中的幅度10倍变化。功能模型再现树突尖峰的时序和幅度,并显示它们选择性地选择性输入动态(类似于4.5ms上升时间)。树突尖峰的选择性在存在加性噪声存在下变宽,这也被功能模型预测。第二功能模型显示,在线性整合在SOMA之前,树突状尖峰弱升高。对于我们的噪声和波形树枝状内部输入,体细胞APS依赖于刺激的体细胞集成,遵循大型树突状尖峰的子集,并选择性地对树枝状有关的相同输入动态。我们的研究结果表明,快速树突尖峰的幅度传达了树枝状输入中的高频特征的信息,然后与低频体细胞集成结合。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号