Laboratoire Psychologie de la Perception, CNRS, Université Paris Descartes, Paris, France;
J Neurophysiol. 2013 Oct;110(7):1672-88. doi: 10.1152/jn.00051.2013. Epub 2013 Jul 17.
A challenge for sensory systems is to encode natural signals that vary in amplitude by orders of magnitude. The spike trains of neurons in the auditory system must represent the fine temporal structure of sounds despite a tremendous variation in sound level in natural environments. It has been shown in vitro that the transformation from dynamic signals into precise spike trains can be accurately captured by simple integrate-and-fire models. In this work, we show that the in vivo responses of cochlear nucleus bushy cells to sounds across a wide range of levels can be precisely predicted by deterministic integrate-and-fire models with adaptive spike threshold. Our model can predict both the spike timings and the firing rate in response to novel sounds, across a large input level range. A noisy version of the model accounts for the statistical structure of spike trains, including the reliability and temporal precision of responses. Spike threshold adaptation was critical to ensure that predictions remain accurate at different levels. These results confirm that simple integrate-and-fire models provide an accurate phenomenological account of spike train statistics and emphasize the functional relevance of spike threshold adaptation.
对于感觉系统来说,一个挑战是对幅度呈数量级变化的自然信号进行编码。尽管在自然环境中声音电平有很大的变化,但听觉系统中的神经元尖峰序列必须代表声音的精细时间结构。已经在体外表明,将动态信号转换为精确的尖峰序列可以通过简单的积分-点火模型准确地捕获。在这项工作中,我们表明,通过具有自适应尖峰阈值的确定性积分-点火模型,可以精确预测耳蜗核束状细胞对各种水平的声音的体内反应。我们的模型可以预测对新声音的反应的尖峰时间和发放率,跨越大的输入电平范围。模型的噪声版本解释了尖峰序列的统计结构,包括响应的可靠性和时间精度。尖峰阈值适应对于确保在不同水平上的预测仍然准确至关重要。这些结果证实,简单的积分-点火模型提供了对尖峰序列统计的准确现象学描述,并强调了尖峰阈值适应的功能相关性。