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Specificity and timescales of cortical adaptation as inferences about natural movie statistics

机译:皮层适应的特异性和时标作为自然电影统计的推论

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摘要

Adaptation is a phenomenological umbrella term under which a variety of temporal contextual effects are grouped. Previous models have shown that some aspects of visual adaptation reflect optimal processing of dynamic visual inputs, suggesting that adaptation should be tuned to the properties of natural visual inputs. However, the link between natural dynamic inputs and adaptation is poorly understood. Here, we extend a previously developed Bayesian modeling framework for spatial contextual effects to the temporal domain. The model learns temporal statistical regularities of natural movies and links these statistics to adaptation in primary visual cortex via divisive normalization, a ubiquitous neural computation. In particular, the model divisively normalizes the present visual input by the past visual inputs only to the degree that these are inferred to be statistically dependent. We show that this flexible form of normalization reproduces classical findings on how brief adaptation affects neuronal selectivity. Furthermore, prior knowledge acquired by the Bayesian model from natural movies can be modified by prolonged exposure to novel visual stimuli. We show that this updating can explain classical results on contrast adaptation. We also simulate the recent finding that adaptation maintains population homeostasis, namely, a balanced level of activity across a population of neurons with different orientation preferences. Consistent with previous disparate observations, our work further clarifies the influence of stimulus-specific and neuronal-specific normalization signals in adaptation.
机译:适应是一个现象学的总括性术语,在此术语下,各种时间语境效应被分组。先前的模型表明,视觉适应的某些方面反映了动态视觉输入的最佳处理方式,这表明适应应根据自然视觉输入的属性进行调整。但是,人们对自然动态输入与适应之间的联系了解甚少。在这里,我们将先前开发的用于空间上下文影响的贝叶斯建模框架扩展到时域。该模型学习自然电影的时间统计规律性,并通过除数归一化(一种普遍存在的神经计算)将这些统计信息与主要视觉皮层的适应性联系起来。特别地,该模型仅将过去的视觉输入对当前的视觉输入进行归一化,仅归纳为推断它们在统计上是相关的。我们表明,这种灵活的标准化形式重现了关于短暂适应如何影响神经元选择性的经典发现。此外,可以通过长时间暴露于新颖的视觉刺激来修改贝叶斯模型从自然电影中获取的先验知识。我们显示此更新可以解释对比适应的经典结果。我们还模拟了最近的发现,即适应能维持群体稳态,即具有不同取向偏好的整个神经元群体的平衡活动水平。与以前的不同观察结果一致,我们的工作进一步阐明了刺激特异性和神经元特异性标准化信号在适应中的影响。

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