Neuroscience Program, Stanford University School of Medicine, Stanford, CA, USA.
Department of Applied Physics, Stanford University, Stanford, CA, USA; Physics & Informatics Laboratories, NTT Research, Inc., Sunnyvale, CA, USA; Center for Brain Science, Harvard University, Cambridge, MA, USA.
Neuron. 2023 Sep 6;111(17):2742-2755.e4. doi: 10.1016/j.neuron.2023.06.007. Epub 2023 Jul 13.
Understanding the circuit mechanisms of the visual code for natural scenes is a central goal of sensory neuroscience. We show that a three-layer network model predicts retinal natural scene responses with an accuracy nearing experimental limits. The model's internal structure is interpretable, as interneurons recorded separately and not modeled directly are highly correlated with model interneurons. Models fitted only to natural scenes reproduce a diverse set of phenomena related to motion encoding, adaptation, and predictive coding, establishing their ethological relevance to natural visual computation. A new approach decomposes the computations of model ganglion cells into the contributions of model interneurons, allowing automatic generation of new hypotheses for how interneurons with different spatiotemporal responses are combined to generate retinal computations, including predictive phenomena currently lacking an explanation. Our results demonstrate a unified and general approach to study the circuit mechanisms of ethological retinal computations under natural visual scenes.
理解自然场景视觉代码的电路机制是感觉神经科学的一个核心目标。我们表明,一个三层网络模型可以以接近实验极限的精度来预测视网膜对自然场景的反应。该模型的内部结构是可解释的,因为单独记录但未直接建模的中间神经元与模型中间神经元高度相关。仅拟合自然场景的模型再现了与运动编码、适应和预测编码相关的一系列不同现象,从而确立了它们与自然视觉计算的生态相关性。一种新方法将模型神经节细胞的计算分解为模型中间神经元的贡献,从而可以自动生成关于具有不同时空响应的中间神经元如何组合以产生视网膜计算的新假设,包括目前缺乏解释的预测现象。我们的结果表明了一种统一的、通用的方法,可以在自然视觉场景下研究生态视网膜计算的电路机制。