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使用解码来分析同时记录的神经元放电之间的相关性对信息的贡献。

The use of decoding to analyze the contribution to the information of the correlations between the firing of simultaneously recorded neurons.

作者信息

Franco Leonardo, Rolls Edmund T, Aggelopoulos Nikolaos C, Treves Alessandro

机构信息

Department of Experimental Psychology, University of Oxford, South Parks Road, Oxford OX1 3UD, UK.

出版信息

Exp Brain Res. 2004 Apr;155(3):370-84. doi: 10.1007/s00221-003-1737-5. Epub 2004 Jan 13.

Abstract

A new decoding method is described that enables the information that is encoded by simultaneously recorded neurons to be measured. The algorithm measures the information that is contained not only in the number of spikes from each neuron, but also in the cross-correlations between the neuronal firing including stimulus-dependent synchronization effects. The approach enables the effects of interactions between the 'signal' and 'noise' correlations to be identified and measured, as well as those from stimulus-dependent cross-correlations. The approach provides an estimate of the statistical significance of the stimulus-dependent synchronization information, as well as enabling its magnitude to be compared with the magnitude of the spike-count related information, and also whether these two contributions are additive or redundant. The algorithm operates even with limited numbers of trials. The algorithm is validated by simulation. It was then used to analyze neuronal data from the primate inferior temporal visual cortex. The main conclusions from experiments with two to four simultaneously recorded neurons were that almost all of the information was available in the spike counts of the neurons; that this Rate information included on average very little redundancy arising from stimulus-independent correlation effects; and that stimulus-dependent cross-correlation effects (i.e. stimulus-dependent synchronization) contribute very little to the encoding of information in the inferior temporal visual cortex about which object or face has been presented.

摘要

本文描述了一种新的解码方法,该方法能够测量由同时记录的神经元编码的信息。该算法不仅测量每个神经元尖峰数量中包含的信息,还测量神经元放电之间的互相关,包括刺激依赖的同步效应。这种方法能够识别和测量“信号”与“噪声”相关性之间相互作用的影响,以及刺激依赖的互相关的影响。该方法提供了对刺激依赖同步信息统计显著性的估计,同时能够将其大小与尖峰计数相关信息的大小进行比较,还能判断这两种贡献是相加的还是冗余的。即使试验次数有限,该算法也能运行。该算法通过模拟进行了验证。然后它被用于分析来自灵长类动物颞下视觉皮层的神经元数据。对两到四个同时记录的神经元进行实验得出的主要结论是:几乎所有信息都存在于神经元的尖峰计数中;这种速率信息平均而言几乎不包含由非刺激依赖相关效应产生的冗余;并且刺激依赖的互相关效应(即刺激依赖的同步)对颞下视觉皮层中关于呈现了哪个物体或面孔的信息编码贡献很小。

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