Anastasio T J
Department of Otolaryngology and Head and Neck Surgery, University of Southern California, Los Angeles 90033.
Biol Cybern. 1991;64(3):187-96. doi: 10.1007/BF00201979.
The vestibulo-ocular reflex (VOR) produces compensatory eye movements by utilizing head rotational velocity signals from the semicircular canals to control contractions of the extraocular muscles. In mammals, the time course of horizontal VOR is longer than that of the canal signals driving it, revealing the presence of a central integrator known as velocity storage. Although the neurons mediating VOR have been described neurophysiologically, their properties, and the mechanism of velocity storage itself, remain unexplained. Recent models of integration in VOR are based on systems of linear elements, interconnected in arbitrary ways. The present study extends this work by modeling horizontal VOR as a learning network composed of nonlinear model neurons. Network architectures are based on the VOR arc (canal afferents, vestibular nucleus (VN) neurons and extraocular motoneurons) and have both forward and lateral connections. The networks learn to produce velocity storage integration by forming lateral (commissural) inhibitory feedback loops between VN neurons. These loops overlap and interact in a complex way, forming both fast and slow VN pathways. The networks exhibit some of the nonlinear properties of the actual VOR, such as dependency of decay rate and phase lag upon input magnitude, and skewing of the response to higher magnitude sinusoidal inputs. Model VN neurons resemble their real counterparts. Both have increased time constant and gain, and decreased spontaneous rate as compared to canal afferents. Also, both model and real VN neurons exhibit rectification and skew. The results suggest that lateral inhibitory interactions produce velocity storage and also determine the properties of neurons mediating VOR. The neural network models demonstrate how commissural inhibition may be organized along the VOR pathway.
前庭眼反射(VOR)通过利用来自半规管的头部旋转速度信号来控制眼外肌的收缩,从而产生代偿性眼球运动。在哺乳动物中,水平VOR的时间进程比驱动它的半规管信号的时间进程更长,这表明存在一种称为速度存储的中枢整合器。尽管介导VOR的神经元已在神经生理学上被描述,但其特性以及速度存储本身的机制仍未得到解释。最近的VOR整合模型基于以任意方式相互连接的线性元件系统。本研究通过将水平VOR建模为由非线性模型神经元组成的学习网络来扩展这项工作。网络架构基于VOR弧(半规管传入神经、前庭核(VN)神经元和眼外运动神经元),并具有前向和侧向连接。这些网络通过在VN神经元之间形成侧向(连合)抑制反馈回路来学习产生速度存储整合。这些回路以复杂的方式重叠和相互作用,形成快速和慢速的VN通路。这些网络表现出实际VOR的一些非线性特性,例如衰减率和相位滞后对输入幅度的依赖性,以及对更高幅度正弦输入的响应偏斜。模型VN神经元与实际的对应神经元相似。与半规管传入神经相比,两者的时间常数和增益都增加,自发发放率降低。此外,模型和实际的VN神经元都表现出整流和偏斜。结果表明,侧向抑制相互作用产生速度存储,并决定介导VOR的神经元的特性。神经网络模型展示了连合抑制可能如何沿着VOR通路进行组织。