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A mathematical and computational exploration of the effect of the A-current in determining the activity phase of follower neurons.

机译:A电流在确定跟随神经元活动阶段中的作用的数学和计算探索。

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摘要

Bursting oscillations are prevalent in neurons of central pattern generators (CPGs) that produce rhythmic motor activity, and the activity phase plays an important role in determining the normal or dysfunctional network output. The activity phase is the delay time--with respect to some reference time in each cycle and normalized by the oscillation cycle period---of the onset of action potentials by a neuron. This dissertation investigates how the A-current, in conjunction with other intrinsic properties, sets the activity phase of a neuron driven by inhibition.;In the second component of the dissertation, a five-compartment model is built based on the morphology of the PY neuron to produce a realistic representation of the biological PY neurons in order to investigate how the distribution of the A-current affects the activity phase. This model involves a set of 53 coupled nonlinear ordinary differential equations which are numerically integrated using a 4th order Runge-Kutta method. A Genetic Algorithm is applied to recursively optimize the possible parameters for all the intrinsic currents in each compartment. The results show that different distributions of the A-current lead to different bursting behaviors even if the total A-current conductance is kept constant.;These results show that the activity phase of the follower neurons can be affected significantly by the strength and the distribution of the A-current, together with other intrinsic and synaptic properties. The activity phase can be predicted by the results of a low-dimensional model, and the possible distribution of the intrinsic currents can be computed by developing more realistic models based on the shape of biological neurons.;This dissertation is divided into two major components. In the first component, methods of dynamical systems are applied to explore the transient properties of the activity phase of the follower neuron, which is modeled using a simplified three-variable model based on the Morris-Lecar equations. Based on the analysis of the effect of the A-current in determining the phase, recursive equations are derived to calculate the activity phase of the follower neuron, following a single inhibitory input as well as its steady state phase in response to a rhythmic input. The modeling findings are compared with experimental data from follower PY neurons in the pyloric CPG of the crab C. borealis. In these experiments, the Dynamic Clamp technique is used to produce artificial intrinsic and synaptic currents in the follower PY neurons. It is found that the activity phase can be determined by the period and duty cycle of the pacemaker, and the recursive equations provide faithful predictions of the activity phase when the cycle period of the pacemaker is varied under different protocols.
机译:爆发性振荡在产生节律性运动活动的中央模式发生器(CPG)的神经元中很普遍,活动阶段在确定正常或功能异常的网络输出中起重要作用。活动阶段是神经元触发动作电位的延迟时间(相对于每个周期中的某个参考时间,并通过振荡周期进行归一化)。本文研究了A电流与其他固有特性如何设置受抑制作用驱动的神经元的活动阶段。在论文的第二部分中,基于PY的形态建立了一个五室模型。神经元产生生物PY神经元的逼真表示,以便研究A电流的分布如何影响活动期。该模型涉及一组53个耦合的非线性常微分方程,这些方程使用4阶Runge-Kutta方法进行了数值积分。应用遗传算法递归优化每个隔间中所有本征电流的可能参数。结果表明,即使总A电流电导保持恒定,A电流的不同分布也会导致不同的猝发行为;这些结果表明,跟随者神经元的活动阶段受强度和分布的影响很大电流以及其他固有和突触特性。可以通过低维模型的结果来预测活动阶段,并可以根据生物神经元的形状开发更现实的模型来计算固有电流的可能分布。本论文分为两个主要部分。在第一部分中,采用动力学系统的方法来探索跟随者神经元活动阶段的瞬态特性,该行为使用基于Morris-Lecar方程的简化三变量模型进行建模。基于对A电流在确定相位中的作用的分析,得出了递归方程,以计算跟随单个抑制输入及其响应有节奏输入的稳态阶段后随动神经元的活动阶段。将建模发现与来自蟹形隐孢子虫幽门CPG中跟随者PY神经元的实验数据进行比较。在这些实验中,动态钳位技术用于在跟随者PY神经元中产生人工内在和突触电流。发现起搏器的活动阶段可以由起搏器的周期和占空比确定,当起搏器的周期在不同协议下变化时,递归方程可对起搏器的活动阶段提供忠实的预测。

著录项

  • 作者

    Zhang, Yu.;

  • 作者单位

    New Jersey Institute of Technology.;

  • 授予单位 New Jersey Institute of Technology.;
  • 学科 Applied mathematics.;Neurosciences.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 116 p.
  • 总页数 116
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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