Tring Elaine, Dipoppa Mario, Ringach Dario L
Department of Neurobiology, David Geffen School of Medicine, University of California, Los Angeles.
Department of Psychology, David Geffen School of Medicine, University of California, Los Angeles.
bioRxiv. 2023 May 22:2023.05.22.541834. doi: 10.1101/2023.05.22.541834.
How do neural populations adapt to the time-varying statistics of sensory input? To investigate, we measured the activity of neurons in primary visual cortex adapted to different environments, each associated with a distinct probability distribution over a stimulus set. Within each environment, a stimulus sequence was generated by independently sampling form its distribution. We find that two properties of adaptation capture how the population responses to a given stimulus, viewed as vectors, are linked across environments. First, the ratio between the response magnitudes is a power law of the ratio between the stimulus probabilities. Second, the response directions are largely invariant. These rules can be used to predict how cortical populations adapt to novel, sensory environments. Finally, we show how the power law enables the cortex to preferentially signal unexpected stimuli and to adjust the metabolic cost of its sensory representation to the entropy of the environment.
神经群体如何适应感觉输入的时变统计特性?为了进行研究,我们测量了适应不同环境的初级视觉皮层中神经元的活动,每个环境都与一组刺激上的独特概率分布相关联。在每个环境中,通过从其分布中独立采样来生成刺激序列。我们发现,适应的两个特性捕捉了群体对给定刺激(视为向量)的反应如何在不同环境之间建立联系。首先,反应幅度之间的比率是刺激概率之间比率的幂律。其次,反应方向在很大程度上是不变的。这些规则可用于预测皮层群体如何适应新的感觉环境。最后,我们展示了幂律如何使皮层能够优先发出意外刺激的信号,并根据环境的熵调整其感觉表征的代谢成本。