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中国物理学会期刊

通道阻塞与噪声对多室神经元响应状态影响的内在机理

CSTR: 32037.14.aps.73.20240967

Intrinsic mechanism of influence of channel blocking and noise on response state of multicompartmental neurons

CSTR: 32037.14.aps.73.20240967
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  • 多室神经元的精细结构能够同时捕捉时空特性, 具有丰富的响应和内在机理. 本研究基于Pinsky-Rinzel两室神经元模型, 提出多室神经元通道阻塞与噪声对神经元响应状态影响的分析方法. 首先, 钙离子(Ca2+)浓度影响神经递质释放的概率, 对多室神经元的节律性放电具有关键作用, 因此特别引入Ca2+通道阻塞, 构建带离子通道阻塞的多室神经元模型. 其次推导跃迁矩阵等核心参数构建Pinsky-Rinzel神经元Conductance噪声模型, 并与Subunit噪声模型对比. 最终, 通过单参数Hopf分岔解释各个离子通道阻塞下的动力学过程; 双参数分岔显示钾离子(K+)的Hopf节点随输入电流呈近似线性递增关系, 而钠离子(Na+)则近似为线性下降和指数上升两阶段; 通过变异系数等指标发现K+适度阻塞促进放电, Na+阻塞抑制放电, Ca2+阻塞总体上促进放电的特性. 另外, 在低于阈值信号刺激时, 两种噪声模型均产生随机共振, Conductance模型表现出更强的编码能力. 本研究揭示了离子通道阻塞与噪声在神经信号传递中的复杂机制, 为研究神经信息编码提供新的视角和工具.

     

    The fine structure of multi-compartment neurons can simultaneously capture both temporal and spatial characteristics, offering rich responses and intrinsic mechanisms. However, current studies of the effects of channel blockage and noise on neuronal response states are mainly limited to single-compartment neurons. This study introduces an analytical method to explore theintrinsic mechanism of channel blockage and noise effects on the response states of multi-compartment neurons, by using the smooth Pinsky-Rinzel two-compartment neuron model as a case study. Potassium, sodium, and calcium ion channel blockage coefficient are separately introduced to develop a smooth Pinsky-Rinzel neuron model with ion channel blockage. Methods such as single-parameter bifurcation analysis, double-parameter bifurcation analysis, coefficient of variation, and frequency characteristics analysis are utilized to examine the effects of various ion channel blockages on neuronal response states. Additionally, smooth Pinsky-Rinzel neuron Subunit noise model and conductance noise model are constructed to investigate their response characteristics by using interspike interval analysis and coefficient of variation indicators. Subthreshold stimulation is used to explore the presence of stochastic resonance phenomena. Single-parameter bifurcation analysis of the ion channel blockage model elucidates the dynamic processes of two torus bifurcations and limit point bifurcations in Pinsky-Rinzel neuron firing under potassium ion blocking. Double-parameter bifurcation analysis reveals a nearly linear increase in the Hopf bifurcation node of potassium ions with input current, whereas sodium ions exhibit a two-stage pattern of linear decline followed by exponential rise. The analysis of average firing frequency and coefficient of variation indicates that the moderate potassium channel blockage promotes firing, sodium channel blockage inhibits firing, and calcium channel blockage shows the complex characteristics but mainly promotes firing. Subthreshold stimulation of the channel noise model demonstrates the stochastic resonance phenomena in both models, accompanied by more intense chaotic firing, highlighting the positive role of noise in neural signal transmission. The interspike interval and coefficient of variation indicators show consistent variation levels for both noise models, with the conductance model displaying greater sensitivity to membrane area and stronger encoding capabilities. This study analyzes the general frequency characteristics of potassium and sodium ions in a multi-compartment neuron model through ion channel blocking model, providing special insights into the unique role of calcium ions. Further, the study explores stochastic resonance by using ion channel noise model, supporting the theory of noise-enhanced signal processing and offering new perspectives and tools for future studying complex information encoding in neural systems. By constructing an ion channel blockage model, the effects of potassium and sodium ions on the frequency characteristics of multi-compartment neurons are analyzed and the special influences of calcium ions are revealed. Using the ion channel noise model, the stochastic resonance is investigated, supporting the theory that the noise enhances signal processing. This research offers a new perspective and tool for studying the complex information encoding in neural systems.

     

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