Network architecture underlying maximal separation of neuronal representations.

Frontiers in neuroengineering Pub Date : 2013-01-03 eCollection Date: 2012-01-01 DOI:10.3389/fneng.2012.00019
Ron A Jortner
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引用次数: 8

Abstract

One of the most basic and general tasks faced by all nervous systems is extracting relevant information from the organism's surrounding world. While physical signals available to sensory systems are often continuous, variable, overlapping, and noisy, high-level neuronal representations used for decision-making tend to be discrete, specific, invariant, and highly separable. This study addresses the question of how neuronal specificity is generated. Inspired by experimental findings on network architecture in the olfactory system of the locust, I construct a highly simplified theoretical framework which allows for analytic solution of its key properties. For generalized feed-forward systems, I show that an intermediate range of connectivity values between source- and target-populations leads to a combinatorial explosion of wiring possibilities, resulting in input spaces which are, by their very nature, exquisitely sparsely populated. In particular, connection probability ½, as found in the locust antennal-lobe-mushroom-body circuit, serves to maximize separation of neuronal representations across the target Kenyon cells (KCs), and explains their specific and reliable responses. This analysis yields a function expressing response specificity in terms of lower network parameters; together with appropriate gain control this leads to a simple neuronal algorithm for generating arbitrarily sparse and selective codes and linking network architecture and neural coding. I suggest a straightforward way to construct ecologically meaningful representations from this code.

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神经元表征最大分离的网络架构。
所有神经系统面临的最基本和最一般的任务之一是从生物体的周围世界提取相关信息。虽然感觉系统可用的物理信号通常是连续的、可变的、重叠的和有噪声的,但用于决策的高级神经元表示往往是离散的、特定的、不变的和高度可分离的。这项研究解决了神经元特异性是如何产生的问题。受蝗虫嗅觉系统网络结构实验结果的启发,我构建了一个高度简化的理论框架,可以分析其关键特性。对于广义前馈系统,我表明,源种群和目标种群之间的连通性值的中间范围会导致布线可能性的组合爆炸,导致输入空间从本质上来说非常稀疏。特别是,在蝗虫触角瓣蘑菇体回路中发现的连接概率½,有助于最大限度地分离靶肯扬细胞(KCs)中的神经元表征,并解释其特定和可靠的反应。该分析产生了根据较低的网络参数表达响应特异性的函数;再加上适当的增益控制,这导致了一种简单的神经元算法,用于生成任意稀疏和选择性代码,并将网络结构和神经编码联系起来。我建议使用一种简单的方法来从该代码中构建具有生态意义的表示。
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