受蜜蜂嗅觉系统启发的双通路模型中刺激同一性和强度的平行表示。

Frontiers in neuroengineering Pub Date : 2011-12-28 eCollection Date: 2011-01-01 DOI:10.3389/fneng.2011.00017
Michael Schmuker, Nobuhiro Yamagata, Martin Paul Nawrot, Randolf Menzel
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引用次数: 39

摘要

蜜蜂在觅食过程中具有探测和定位食物来源的非凡能力,并将气味线索与食物奖励联系起来。在蜜蜂的嗅觉系统中,感觉输入首先在触角叶(AL)网络中进行处理。单叶投射神经元(PNs)通过两条平行但解剖学上不同的通路,即外侧和内侧天线脑束(l-和m-ACT),将AL的感觉编码传递到更高的大脑区域。支配两束神经的神经元在气味选择性、浓度依赖性和混合物表征方面表现出特征差异。目前尚不清楚这种差分刺激表征是如何在人工智能网络中实现的。在这项贡献中,我们使用计算网络模型来证明实验观察到的PNs中气味编码的特征可以通过在其他不变的AL网络中改变侧抑制和增益控制来复制。我们发现,l-ACT中的气味编码以牺牲浓度敏感性为代价,支持对弱气味痕迹的检测和准确识别,而m-ACT中的气味编码为浓度梯度的计算和跟踪提供了基础,但识别能力较弱。这两种编码策略是互斥的,这在检测精度和灵敏度之间产生了权衡。因此,两个并行系统的发展可能反映了这一问题的进化解决方案,使蜜蜂在自然环境中觅食时能够同时完成这两项任务,并可能启发开发用于机器人气味引导导航的人工化学感觉装置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Parallel representation of stimulus identity and intensity in a dual pathway model inspired by the olfactory system of the honeybee.

The honeybee Apis mellifera has a remarkable ability to detect and locate food sources during foraging, and to associate odor cues with food rewards. In the honeybee's olfactory system, sensory input is first processed in the antennal lobe (AL) network. Uniglomerular projection neurons (PNs) convey the sensory code from the AL to higher brain regions via two parallel but anatomically distinct pathways, the lateral and the medial antenno-cerebral tract (l- and m-ACT). Neurons innervating either tract show characteristic differences in odor selectivity, concentration dependence, and representation of mixtures. It is still unknown how this differential stimulus representation is achieved within the AL network. In this contribution, we use a computational network model to demonstrate that the experimentally observed features of odor coding in PNs can be reproduced by varying lateral inhibition and gain control in an otherwise unchanged AL network. We show that odor coding in the l-ACT supports detection and accurate identification of weak odor traces at the expense of concentration sensitivity, while odor coding in the m-ACT provides the basis for the computation and following of concentration gradients but provides weaker discrimination power. Both coding strategies are mutually exclusive, which creates a tradeoff between detection accuracy and sensitivity. The development of two parallel systems may thus reflect an evolutionary solution to this problem that enables honeybees to achieve both tasks during bee foraging in their natural environment, and which could inspire the development of artificial chemosensory devices for odor-guided navigation in robots.

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