Butts Daniel A, Goldman Mark S
Division of Engineering and Applied Sciences, Harvard University, Cambridge, Massachusetts, United States of America.
PLoS Biol. 2006 Apr;4(4):e92. doi: 10.1371/journal.pbio.0040092. Epub 2006 Mar 21.
Tuning curves are widely used to characterize the responses of sensory neurons to external stimuli, but there is an ongoing debate as to their role in sensory processing. Commonly, it is assumed that a neuron's role is to encode the stimulus at the tuning curve peak, because high firing rates are the neuron's most distinct responses. In contrast, many theoretical and empirical studies have noted that nearby stimuli are most easily discriminated in high-slope regions of the tuning curve. Here, we demonstrate that both intuitions are correct, but that their relative importance depends on the experimental context and the level of variability in the neuronal response. Using three different information-based measures of encoding applied to experimentally measured sensory neurons, we show how the best-encoded stimulus can transition from high-slope to high-firing-rate regions of the tuning curve with increasing noise level. We further show that our results are consistent with recent experimental findings that correlate neuronal sensitivities with perception and behavior. This study illustrates the importance of the noise level in determining the encoding properties of sensory neurons and provides a unified framework for interpreting how the tuning curve and neuronal variability relate to the overall role of the neuron in sensory encoding.
调谐曲线被广泛用于表征感觉神经元对外部刺激的反应,但关于它们在感觉处理中的作用仍存在争议。通常,人们认为神经元的作用是在调谐曲线峰值处编码刺激,因为高放电率是神经元最明显的反应。相比之下,许多理论和实证研究指出,在调谐曲线的高斜率区域,附近的刺激最容易被区分。在这里,我们证明这两种观点都是正确的,但它们的相对重要性取决于实验背景和神经元反应的变异性水平。通过将三种不同的基于信息的编码测量方法应用于实验测量的感觉神经元,我们展示了随着噪声水平的增加,最佳编码刺激如何从调谐曲线的高斜率区域转变为高放电率区域。我们进一步表明,我们的结果与最近将神经元敏感性与感知和行为相关联的实验结果一致。这项研究说明了噪声水平在确定感觉神经元编码特性方面的重要性,并提供了一个统一的框架来解释调谐曲线和神经元变异性如何与神经元在感觉编码中的整体作用相关。