Department of Anatomy and Neurobiology, Washington University, St. Louis, Missouri 63110, USA.
J Neurosci. 2013 Aug 14;33(33):13388-97. doi: 10.1523/JNEUROSCI.0967-13.2013.
Sensory systems represent stimulus identity and intensity, but in the neural periphery these two variables are typically intertwined. Moreover, stable detection may be complicated by environmental uncertainty; stimulus properties can differ over time and circumstance in ways that are not necessarily biologically relevant. We explored these issues in the context of the mouse accessory olfactory system, which specializes in detection of chemical social cues and infers myriad aspects of the identity and physiological state of conspecifics from complex mixtures, such as urine. Using mixtures of sulfated steroids, key constituents of urine, we found that spiking responses of individual vomeronasal sensory neurons encode both individual compounds and mixtures in a manner consistent with a simple model of receptor-ligand interactions. Although typical neurons did not accurately encode concentration over a large dynamic range, from population activity it was possible to reliably estimate the log-concentration of pure compounds over several orders of magnitude. For binary mixtures, simple models failed to accurately segment the individual components, largely because of the prevalence of neurons responsive to both components. By accounting for such overlaps during model tuning, we show that, from neuronal firing, one can accurately estimate log-concentration of both components, even when tested across widely varying concentrations. With this foundation, the difference of logarithms, log A - log B = log A/B, provides a natural mechanism to accurately estimate concentration ratios. Thus, we show that a biophysically plausible circuit model can reconstruct concentration ratios from observed neuronal firing, representing a powerful mechanism to separate stimulus identity from absolute concentration.
感觉系统代表刺激的身份和强度,但在神经外围,这两个变量通常是交织在一起的。此外,稳定的检测可能会受到环境不确定性的影响;刺激特性可能会随着时间和环境的变化而不同,这些变化不一定与生物学相关。我们在小鼠附属嗅觉系统的背景下探讨了这些问题,该系统专门用于检测化学社交线索,并从复杂混合物(如尿液)中推断出同种生物的身份和生理状态的诸多方面。我们使用尿液中关键的硫酸盐类固醇混合物作为刺激,发现单个犁鼻感觉神经元的尖峰反应以与受体-配体相互作用的简单模型一致的方式编码单个化合物和混合物。虽然典型的神经元不能在很大的动态范围内准确地编码浓度,但从群体活动中可以可靠地估计纯化合物对数浓度的几个数量级。对于二元混合物,简单的模型无法准确地分割各个成分,主要是因为存在对两个成分都有反应的神经元。通过在模型调整过程中考虑到这些重叠,我们表明,从神经元放电中,可以准确地估计两个成分的对数浓度,即使在广泛变化的浓度下进行测试也是如此。有了这个基础,对数之差,log A - log B = log A/B,提供了一种从观察到的神经元放电中准确估计浓度比的自然机制。因此,我们表明,一种生物物理上合理的电路模型可以从观察到的神经元放电中重建浓度比,这代表了一种从绝对浓度中分离刺激身份的强大机制。