Department of Systems and Computational Biology, and
Dominick P. Purpura Department of Neuroscience, Albert Einstein College of Medicine, Bronx, New York 10461.
J Neurosci. 2019 Sep 11;39(37):7344-7356. doi: 10.1523/JNEUROSCI.0126-19.2019. Epub 2019 Aug 6.
Cortical responses to repeated presentations of a sensory stimulus are variable. This variability is sensitive to several stimulus dimensions, suggesting that it may carry useful information beyond the average firing rate. Many experimental manipulations that affect response variability are also known to engage divisive normalization, a widespread operation that describes neuronal activity as the ratio of a numerator (representing the excitatory stimulus drive) and denominator (the normalization signal). Although it has been suggested that normalization affects response variability, we lack a quantitative framework to determine the relation between the two. Here we extend the standard normalization model, by treating the numerator and the normalization signal as variable quantities. The resulting model predicts a general stabilizing effect of normalization on neuronal responses, and allows us to infer the single-trial normalization strength, a quantity that cannot be measured directly. We test the model on neuronal responses to stimuli of varying contrast, recorded in primary visual cortex of male macaques. We find that neurons that are more strongly normalized fire more reliably, and response variability and pairwise noise correlations are reduced during trials in which normalization is inferred to be strong. Our results thus suggest a novel functional role for normalization, namely, modulating response variability. Our framework could enable a direct quantification of the impact of single-trial normalization strength on the accuracy of perceptual judgments, and can be readily applied to other sensory and nonsensory factors. Divisive normalization is a widespread neural operation across sensory and nonsensory brain areas, which describes neuronal responses as the ratio between the excitatory drive to the neuron and a normalization signal. Normalization plays a key role in several important computations, including adjusting the neuron's dynamic range, reducing redundancy, and facilitating probabilistic inference. However, the relation between normalization and neuronal response variability (a fundamental aspect of neural coding) remains unclear. Here we develop a new model and test it on primary visual cortex responses. We show that normalization has a stabilizing effect on neuronal activity, beyond the known suppression of firing rate. This modulation of variability suggests a new functional role for normalization in neural coding and perception.
皮层对重复呈现的感觉刺激的反应是可变的。这种可变性对几个刺激维度敏感,这表明它可能传递了超出平均放电率的有用信息。许多影响反应可变性的实验操作也被认为涉及到一种广泛存在的操作,即除法归一化,它将神经元活动描述为分子(表示兴奋性刺激驱动)和分母(归一化信号)的比值。尽管已经有人提出归一化会影响反应可变性,但我们缺乏一个定量框架来确定两者之间的关系。在这里,我们通过将分子和归一化信号视为变量来扩展标准的归一化模型。由此产生的模型预测了归一化对神经元反应的一般稳定作用,并使我们能够推断出单次试验归一化强度,这是一个不能直接测量的量。我们在雄性猕猴初级视觉皮层记录的变化对比度刺激的神经元反应上测试了该模型。我们发现,归一化越强的神经元,其放电越可靠,并且在推断归一化较强的试验中,反应可变性和成对噪声相关性降低。因此,我们的结果表明归一化具有一种新的功能作用,即调节反应可变性。我们的框架可以直接量化单次试验归一化强度对感知判断准确性的影响,并且可以很容易地应用于其他感觉和非感觉因素。除法归一化是跨感觉和非感觉脑区广泛存在的神经操作,它将神经元的反应描述为神经元的兴奋性驱动与归一化信号之间的比值。归一化在包括调节神经元的动态范围、减少冗余和促进概率推理在内的几个重要计算中起着关键作用。然而,归一化与神经元反应可变性(神经编码的基本方面)之间的关系仍然不清楚。在这里,我们开发了一个新模型并在初级视觉皮层反应上进行了测试。我们表明,归一化对神经元活动有稳定作用,超过了已知的放电率抑制。这种对可变性的调制表明,归一化在神经编码和感知中具有新的功能作用。