Anastasio T J
Beckman Institute, University of Illinois at Urbana/Champaign 61801, USA.
Biol Cybern. 1998 Nov;79(5):377-91. doi: 10.1007/s004220050487.
The oculomotor integrator is a network that is composed of neurons in the medial vestibular nuclei and nuclei prepositus hypoglossi in the brainstem. Those neurons act approximately as fractional integrators of various orders, converting eye velocity commands into signals that are intermediate between velocity and position. The oculomotor integrator has been modeled as a network of linear neural elements, the time constants of which are lengthened by positive feedback through reciprocal inhibition. In this model, in which each neuron reciprocally inhibits its neighbors with the same Gaussian profile, all model neurons behave as identical, first-order, low-pass filters with dynamics that do not match the variable, approximately fractional-order dynamics of the neurons that compose the actual oculomotor integrator. Fractional-order integrators can be approximated by weighted sums of first-order, low-pass filters with diverse, broadly distributed time constants. Dynamic systems analysis reveals that the model integrator indeed has many broadly distributed time constants. However, only one time constant is expressed in the model due to the uniformity of its network connections. If the model network is made nonuniform by removing the reciprocal connections to and from a small number of neurons, then many more time constants are expressed. The dynamics of the neurons in the nonuniform network model are variable, approximately fractional-order, and resemble those of the neurons that compose the actual oculomotor integrator. Completely removing the connections to and from a neuron is equivalent to eliminating it, an operation done previously to demonstrate the robustness of the integrator network model. Ironically, the resulting nonuniform network model, previously supposed to represent a pathological integrator, may in fact represent a healthy integrator containing neurons with realistically variable, approximately fractional-order dynamics.
动眼整合器是一个由脑干内侧前庭核和舌下前置核中的神经元组成的网络。这些神经元的作用大致相当于不同阶次的分数积分器,将眼球速度指令转换为介于速度和位置之间的信号。动眼整合器已被建模为一个线性神经元网络,其时间常数通过相互抑制的正反馈而延长。在这个模型中,每个神经元以相同的高斯分布相互抑制其相邻神经元,所有模型神经元都表现为相同的一阶低通滤波器,其动态特性与构成实际动眼整合器的神经元的可变、近似分数阶动态特性不匹配。分数阶积分器可以通过具有不同且广泛分布时间常数的一阶低通滤波器的加权和来近似。动态系统分析表明,模型整合器确实有许多广泛分布的时间常数。然而,由于其网络连接的均匀性,模型中只表现出一个时间常数。如果通过去除与少数神经元的相互连接使模型网络变得不均匀,那么就会表现出更多的时间常数。不均匀网络模型中神经元的动态特性是可变的、近似分数阶的,并且类似于构成实际动眼整合器的神经元的动态特性。完全去除与一个神经元的连接等同于将其消除,这一操作之前曾用于证明整合器网络模型的鲁棒性。具有讽刺意味的是,由此产生的不均匀网络模型,之前被认为代表一个病理性整合器,实际上可能代表一个健康的整合器,其中包含具有实际可变、近似分数阶动态特性的神经元。