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神经编码的优化原则。

Optimization principles for the neural code.

作者信息

Deweese M

机构信息

The Salk Institute, PO Box 85800, San Diego, CA 92186-5800, USA.

出版信息

Network. 1996 May;7(2):325-31. doi: 10.1088/0954-898X/7/2/013.

Abstract

Recent experiments show that the neural codes at work in a wide range of creatures share some common features. At first sight, these observations seem unrelated. However, we show that these features arise naturally in a linear filtered threshold crossing model when we set the threshold to maximize the transmitted information. This maximization process requires neural adaptation to not only the DC signal level, as in conventional light and dark adaptation, but also to the statistical structure of the signal and noise distributions. We also present a new approach for calculating the mutual information between a neuron's output spike train and any aspect of its input signal which does not require reconstruction of the input signal. This formulation is valid provided the correlations in the spike train are small, and we provide a procedure for checking this assumption. This paper is based on joint work (DeWeese M 1995 Optimization principles for the neural code, Dissertation, Princeton University). Preliminary results from the linear filtered threshold crossing model appeared in a previous proceedings (DeWeese M and Bialek W 1995 Information flow in sensory neurons, Nuovo Cimento D 17 733-8), and the conclusions we reached at that time have been reaffirmed by further analysis of the model.

摘要

最近的实验表明,广泛生物中起作用的神经编码具有一些共同特征。乍一看,这些观察结果似乎并无关联。然而,我们表明,当我们将阈值设置为最大化传输信息时,这些特征会自然地出现在线性滤波阈值穿越模型中。这种最大化过程要求神经不仅要适应直流信号电平,如传统的明适应和暗适应那样,还要适应信号和噪声分布的统计结构。我们还提出了一种计算神经元输出脉冲序列与其输入信号的任何方面之间互信息的新方法,该方法不需要重建输入信号。只要脉冲序列中的相关性较小,这种公式就是有效的,并且我们提供了一种检查该假设的程序。本文基于合作研究(德威斯M 1995年《神经编码的优化原理》,普林斯顿大学博士论文)。线性滤波阈值穿越模型的初步结果出现在之前的会议论文集中(德威斯M和比亚莱克W 1995年《感觉神经元中的信息流》,《新实验C辑》第17卷,733 - 8页),我们当时得出的结论已通过对该模型的进一步分析得到重申。

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