Passaglia C L, Dodge F A, Barlow R B
Department of Ophthalmology, Center for Vision Research, State University of New York Health Science Center, Syracuse, New York 13210, USA.
J Neurophysiol. 1998 Oct;80(4):1800-15. doi: 10.1152/jn.1998.80.4.1800.
We present a cell-based model of the Limulus lateral eye that computes the eye's input to the brain in response to any specified scene. Based on the results of extensive physiological studies, the model simulates the optical sampling of visual space by the array of retinal receptors (ommatidia), the transduction of light into receptor potentials, the integration of excitatory and inhibitory signals into generator potentials, and the conversion of generator potentials into trains of optic nerve impulses. By simulating these processes at the cellular level, model ommatidia can reproduce response variability resulting from noise inherent in the stimulus and the eye itself, and they can adapt to changes in light intensity over a wide operating range. Programmed with these realistic properties, the model eye computes the simultaneous activity of its ensemble of optic nerve fibers, allowing us to explore the retinal code that mediates the visually guided behavior of the animal in its natural habitat. We assess the accuracy of model predictions by comparing the response recorded from a single optic nerve fiber to that computed by the model for the corresponding receptor. Correlation coefficients between recorded and computed responses were typically >95% under laboratory conditions. Parametric analyses of the model together with optic nerve recordings show that animal-to-animal variation in the optical and neural properties of the eye do not alter significantly its response to objects having the size and speed of horseshoe crabs. The eye appears robustly designed for encoding behaviorally important visual stimuli. Simulations with the cell-based model provide insights about the design of the Limulus eye and its encoding of the animal's visual world.
我们提出了一种基于细胞的鲎侧眼模型,该模型可计算眼睛在响应任何特定场景时向大脑发送的输入信号。基于广泛的生理学研究结果,该模型模拟了视网膜受体阵列(小眼)对视觉空间的光学采样、光向受体电位的转换、兴奋性和抑制性信号整合为发生器电位,以及发生器电位转换为视神经冲动序列的过程。通过在细胞水平上模拟这些过程,模型小眼能够再现由刺激和眼睛本身固有的噪声所导致的响应变异性,并且能够在很宽的工作范围内适应光强度的变化。利用这些现实特性进行编程后,模型眼可计算其视神经纤维集合的同步活动,使我们能够探索介导动物在其自然栖息地中视觉引导行为的视网膜编码。我们通过将从单根视神经纤维记录的响应与模型为相应受体计算的响应进行比较,来评估模型预测的准确性。在实验室条件下,记录的响应与计算的响应之间的相关系数通常>95%。对该模型进行的参数分析以及视神经记录表明,不同个体之间眼睛的光学和神经特性差异并不会显著改变其对具有鲎大小和速度的物体的响应。眼睛似乎经过了精心设计,能够稳健地编码对行为重要的视觉刺激。基于细胞的模型模拟为了解鲎眼的设计及其对动物视觉世界的编码提供了见解。