Zheng M, Friesen W O, Iwasaki T
Department of Mechanical and Aerospace Engineering, University of Virginia, Charlottesville, VA 22904, USA.
J Comput Neurosci. 2007 Feb;22(1):21-38. doi: 10.1007/s10827-006-9648-7. Epub 2006 Sep 19.
This paper describes a mathematical model of the neuronal central pattern generator (CPG) that controls the rhythmic body motion of the swimming leech. The systems approach is employed to capture the neuronal dynamics essential for generating coordinated oscillations of cell membrane potentials by a simple CPG architecture with a minimal number of parameters. Based on input/output data from physiological experiments, dynamical components (neurons and synaptic interactions) are first modeled individually and then integrated into a chain of nonlinear oscillators to form a CPG. We show through numerical simulations that the values of a few parameters can be estimated within physiologically reasonable ranges to achieve good fit of the data with respect to the phase, amplitude, and period. This parameter estimation leads to predictions regarding the synaptic coupling strength and intrinsic period gradient along the nerve cord, the latter of which agrees qualitatively with experimental observations.
本文描述了一种控制水蛭游泳时身体节律性运动的神经元中枢模式发生器(CPG)的数学模型。采用系统方法,通过具有最少参数数量的简单CPG架构来捕捉产生细胞膜电位协调振荡所必需的神经元动力学。基于生理实验的输入/输出数据,首先分别对动态组件(神经元和突触相互作用)进行建模,然后将其整合到一个非线性振荡器链中以形成CPG。我们通过数值模拟表明,在生理合理范围内可以估计少数参数的值,以实现数据在相位、幅度和周期方面的良好拟合。这种参数估计得出了关于沿神经索的突触耦合强度和固有周期梯度的预测,其中后者在定性上与实验观察结果一致。