Institute of Biophysics, National Research Council, Palermo, Italy.
Blue Brain Project, École Polytechnique Fédérale de Lausanne, Campus Biotech, Geneva, Switzerland.
PLoS Comput Biol. 2018 Sep 17;14(9):e1006423. doi: 10.1371/journal.pcbi.1006423. eCollection 2018 Sep.
Every neuron is part of a network, exerting its function by transforming multiple spatiotemporal synaptic input patterns into a single spiking output. This function is specified by the particular shape and passive electrical properties of the neuronal membrane, and the composition and spatial distribution of ion channels across its processes. For a variety of physiological or pathological reasons, the intrinsic input/output function may change during a neuron's lifetime. This process results in high variability in the peak specific conductance of ion channels in individual neurons. The mechanisms responsible for this variability are not well understood, although there are clear indications from experiments and modeling that degeneracy and correlation among multiple channels may be involved. Here, we studied this issue in biophysical models of hippocampal CA1 pyramidal neurons and interneurons. Using a unified data-driven simulation workflow and starting from a set of experimental recordings and morphological reconstructions obtained from rats, we built and analyzed several ensembles of morphologically and biophysically accurate single cell models with intrinsic electrophysiological properties consistent with experimental findings. The results suggest that the set of conductances expressed in any given hippocampal neuron may be considered as belonging to two groups: one subset is responsible for the major characteristics of the firing behavior in each population and the other is responsible for a robust degeneracy. Analysis of the model neurons suggests several experimentally testable predictions related to the combination and relative proportion of the different conductances that should be expressed on the membrane of different types of neurons for them to fulfill their role in the hippocampus circuitry.
每个神经元都是网络的一部分,通过将多个时空突触输入模式转换为单个尖峰输出,来发挥其功能。这种功能是由神经元膜的特定形状和被动电学特性以及其过程中离子通道的组成和空间分布来决定的。由于各种生理或病理原因,神经元在其生命周期内的固有输入/输出功能可能会发生变化。这个过程导致单个神经元中离子通道的峰值比电导具有高度可变性。尽管实验和建模清楚地表明多个通道之间的简并性和相关性可能涉及其中,但导致这种可变性的机制仍未得到很好的理解。在这里,我们在海马 CA1 锥体神经元和中间神经元的生物物理模型中研究了这个问题。使用统一的数据驱动模拟工作流程,并从从大鼠获得的一组实验记录和形态重建开始,我们构建并分析了几个具有与实验结果一致的内在电生理特性的形态和生物物理准确的单细胞模型集合。结果表明,在任何给定的海马神经元中表达的电导集可以被认为属于两个组:一个子集负责每个群体中放电行为的主要特征,另一个子集负责稳健的简并性。对模型神经元的分析提出了几个与不同类型神经元的膜上表达的不同电导的组合和相对比例有关的实验可测试预测,以便它们在海马体电路中发挥作用。