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Predicting the activity phase of a follower neuron with A-current in an inhibitory network

机译:在抑制网络中用A电流预测跟随神经元的活动阶段

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摘要

The transient potassium A-current is present in most neurons and plays an important role in determining the timing of action potentials. We examine the role of the A-current in the activity phase of a follower neuron in a rhythmic feed-forward inhibitory network with a reduced three-variable model and conduct experiments to verify the usefulness of our model. Using geometric analysis of dynamical systems, we explore the factors that determine the onset of activity in a follower neuron following release from inhibition. We first analyze the behavior of the follower neuron in a single cycle and find that the phase plane structure of the model can be used to predict the potential behaviors of the follower neuron following release from inhibition. We show that, depending on the relative scales of the inactivation time constant of the A-current and the time constant of the recovery variable, the follower neuron may or may not reach its active state following inhibition. Our simple model is used to derive a recursive set of equations to predict the contribution of the A-current parameters in determining the activity phase of a follower neuron as a function of the duration and frequency of the inhibitory input it receives. These equations can be used to demonstrate the dependence of activity phase on the period and duty cycle of the periodic inhibition, as seen by comparing the predictions of the model with the activity of the pyloric constrictor (PY) neurons in the crustacean pyloric network.
机译:瞬态钾电流存在于大多数神经元中,并在确定动作电位的时间中起重要作用。我们在减少三变量模型的节律性前馈抑制网络中检查跟随电流神经元活动阶段中A电流的作用,并进行实验以验证我们模型的有效性。使用动力学系统的几何分析,我们探索了抑制释放后决定跟随者神经元活动开始的因素。我们首先分析单个循环中跟随者神经元的行为,发现该模型的相平面结构可用于预测从抑制释放后跟随者神经元的潜在行为。我们表明,取决于A电流的失活时间常数和恢复变量的时间常数的相对范围,跟随神经元抑制后可能会或可能不会达到其活跃状态。我们的简单模型用于导出一组递归方程组,以预测A电流参数在确定随动神经元的活动阶段时所受到的抑制输入的持续时间和频率的函数中的贡献。通过将模型的预测与甲壳纲幽门网络中幽门收缩(PY)神经元的活动进行比较,可以看到这些方程式可以用来证明活动阶段对周期抑制周期和占空比的依赖性。

著录项

  • 来源
    《Biological Cybernetics 》 |2008年第3期| 171-184| 共14页
  • 作者单位

    Department of Mathematical Sciences New Jersey Institute of Technology 323 Martin Luther King Blvd Newark NJ 07102 USA;

    Department of Mathematical Sciences New Jersey Institute of Technology 323 Martin Luther King Blvd Newark NJ 07102 USA;

    Department of Mathematical Sciences New Jersey Institute of Technology 323 Martin Luther King Blvd Newark NJ 07102 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Oscillation; Central pattern generator; Phase plane; Stomatogastric; Phase;

    机译:振荡;中央模式发生器;相平面;气胃;相位;

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