Longtin A, Bulsara A, Pierson D, Moss F
Département de Physique, University of Ottawa, Ont., Canada.
Biol Cybern. 1994;70(6):569-78. doi: 10.1007/BF00198810.
Many neurons at the sensory periphery receive periodic input, and their activity exhibits entrainment to this input in the form of a preferred phase for firing. This article describes a modeling study of neurons which skip a random number of cycles of the stimulus between firings over a large range of input intensities. This behavior was investigated using analog and digital simulations of the motion of a particle in a double-well with noise and sinusoidal forcing. Well residence-time distributions were found to exhibit the main features of the interspike interval histograms (ISIH) measured on real sensory neurons. The conditions under which it is useful to view neurons as simple bistable systems subject to noise are examined by identifying the features of the data which are expected to arise for such systems. This approach is complementary to previous studies of such data based, e.g., on non-homogeneous point processes. Apart from looking at models which form the backbone of excitable models, our work allows us to speculate on the role that stochastic resonance, which can arise in this context, may play in the transmission of sensory information.
许多位于感觉外周的神经元会接收周期性输入,并且它们的活动会以一种偏好的发放相位的形式表现出对该输入的同步。本文描述了一项针对神经元的建模研究,这些神经元在大范围的输入强度下,每次发放之间会跳过随机数量的刺激周期。使用在有噪声和正弦强迫的双势阱中粒子运动的模拟和数字模拟来研究这种行为。发现阱停留时间分布呈现出在真实感觉神经元上测量的峰峰间隔直方图(ISIH)的主要特征。通过识别预期在此类系统中出现的数据特征,研究了将神经元视为受噪声影响的简单双稳系统何时有用的条件。这种方法是对以前基于例如非齐次点过程对此类数据进行的研究的补充。除了研究构成可兴奋模型基础的模型外,我们的工作还使我们能够推测在这种情况下可能出现的随机共振在感觉信息传递中可能发挥的作用。