Sylvestre P A, Cullen K E
Aerospace Medical Research Unit, McGill University, Montreal, Quebec H3G 1Y6, Canada.
J Neurophysiol. 1999 Nov;82(5):2612-32. doi: 10.1152/jn.1999.82.5.2612.
The mechanics of the eyeball and its surrounding tissues, which together form the oculomotor plant, have been shown to be the same for smooth pursuit and saccadic eye movements. Hence it was postulated that similar signals would be carried by motoneurons during slow and rapid eye movements. In the present study, we directly addressed this proposal by determining which eye movement-based models best describe the discharge dynamics of primate abducens neurons during a variety of eye movement behaviors. We first characterized abducens neuron spike trains, as has been classically done, during fixation and sinusoidal smooth pursuit. We then systematically analyzed the discharge dynamics of abducens neurons during and following saccades, during step-ramp pursuit and during high velocity slow-phase vestibular nystagmus. We found that the commonly utilized first-order description of abducens neuron firing rates (FR = b + kE + r, where FR is firing rate, E and are eye position and velocity, respectively, and b, k, and r are constants) provided an adequate model of neuronal activity during saccades, smooth pursuit, and slow phase vestibular nystagmus. However, the use of a second-order model, which included an exponentially decaying term or "slide" (FR = b + kE + r + uE - c), notably improved our ability to describe neuronal activity when the eye was moving and also enabled us to model abducens neuron discharges during the postsaccadic interval. We also found that, for a given model, a single set of parameters could not be used to describe neuronal firing rates during both slow and rapid eye movements. Specifically, the eye velocity and position coefficients (r and k in the above models, respectively) consistently decreased as a function of the mean (and peak) eye velocity that was generated. In contrast, the bias (b, firing rate when looking straight ahead) invariably increased with eye velocity. Although these trends are likely to reflect, in part, nonlinearities that are intrinsic to the extraocular muscles, we propose that these results can also be explained by considering the time-varying resistance to movement that is generated by the antagonist muscle. We conclude that to create realistic and meaningful models of the neural control of horizontal eye movements, it is essential to consider the activation of the antagonist, as well as agonist motoneuron pools.
眼球及其周围组织共同构成了动眼装置,其力学原理已被证明在平稳跟踪和眼球扫视运动中是相同的。因此,有人推测在慢速和快速眼球运动过程中,运动神经元会携带相似的信号。在本研究中,我们通过确定哪种基于眼球运动的模型最能描述灵长类动物展神经神经元在各种眼球运动行为中的放电动态,直接探讨了这一假设。我们首先像以往经典研究那样,在注视和正弦平稳跟踪过程中对展神经神经元的动作电位序列进行了特征描述。然后,我们系统地分析了展神经神经元在扫视过程中及扫视后的放电动态、在阶跃-斜坡跟踪过程中以及在高速慢相前庭眼震过程中的放电动态。我们发现,常用的展神经神经元 firing rates (FR = b + kE + r,其中 FR 是放电频率,E 和分别是眼位和眼速,b、k 和 r 是常数) 的一阶描述为扫视、平稳跟踪和慢相前庭眼震过程中的神经元活动提供了一个合适的模型。然而,使用包含指数衰减项或“滑动”(FR = b + kE + r + uE - c) 的二阶模型,显著提高了我们在眼球运动时描述神经元活动的能力,并且使我们能够模拟扫视后间隔期间展神经神经元的放电。我们还发现,对于给定的模型,不能用一组单一参数来描述慢速和快速眼球运动过程中的神经元放电频率。具体来说,眼速和眼位系数(上述模型中的 r 和 k)随着所产生的平均(和峰值)眼速的变化而持续降低。相反,偏差(b,直视前方时的放电频率)总是随着眼速的增加而增加。虽然这些趋势可能部分反映了眼外肌固有的非线性,但我们认为这些结果也可以通过考虑拮抗肌产生的随时间变化的运动阻力来解释。我们得出结论,要创建真实且有意义的水平眼球运动神经控制模型,必须考虑拮抗肌以及主动肌运动神经元池的激活情况。