Getz W M, Lutz A
Division of Insect Biology, ESPM, University of California at Berkeley, 94720-3112, USA.
Chem Senses. 1999 Aug;24(4):351-72. doi: 10.1093/chemse/24.4.351.
A central problem in olfaction is understanding how the quality of olfactory stimuli is encoded in the insect antennal lobe (or in the analogously structured vertebrate olfactory bulb) for perceptual processing in the mushroom bodies of the insect protocerebrum (or in the vertebrate olfactory cortex). In the study reported here, a relatively simple neural network model, inspired by our current knowledge of the insect antennal lobes, is used to investigate how each of several features and elements of the network, such as synapse strengths, feedback circuits and the steepness of neural activation functions, influences the formation of an olfactory code in neurons that project from the antennal lobes to the mushroom bodies (or from mitral cells to olfactory cortex). An optimal code in these projection neurons (PNs) should minimize potential errors by the mushroom bodies in misidentifying the quality of an odor across a range of concentrations while maximizing the ability of the mushroom bodies to resolve odors of different quality. Simulation studies demonstrate that the network is able to produce codes independent or virtually independent of concentration over a given range. The extent of this range is moderately dependent on a parameter that characterizes how long it takes for the voltage in an activated neuron to decay back to its resting potential, strongly dependent on the strength of excitatory feedback by the PNs onto antennal lobe intrinsic neurons (INs), and overwhelmingly dependent on the slope of the activation function that transforms the voltage of depolarized neurons into the rate at which spikes are produced. Although the code in the PNs is degraded by large variations in the concentration of odor stimuli, good performance levels are maintained when the complexity of stimuli, as measured by the number of component odorants, is doubled. When excitatory feedback from the PNs to the INs is strong, the activity in the PNs undergoes transitions from initial states to stimulus-specific equilibrium states that are maintained once the stimulus is removed. When this PN-IN feedback is weak the PNs are more likely to relax back to a stimulus-independent equilibrium state, in which case the code is not maintained beyond the application of the stimulus. Thus, for the architecture simulated here, strong feedback from the PNs onto the INs, together with step-like neuronal activation functions, could well be important in producing easily discriminable odor quality codes that are invariant over several orders of magnitude in stimulus concentration.
嗅觉研究中的一个核心问题是,要弄清楚嗅觉刺激的性质是如何在昆虫的触角叶(或结构类似的脊椎动物嗅球)中进行编码的,以便在昆虫原脑的蘑菇体(或脊椎动物嗅觉皮层)中进行感知处理。在本文报道的研究中,我们基于对昆虫触角叶的现有认识,构建了一个相对简单的神经网络模型,用于研究网络的几个特征和元素,如突触强度、反馈回路以及神经激活函数的陡度,如何影响从触角叶投射到蘑菇体的神经元(或从僧帽细胞投射到嗅觉皮层的神经元)中嗅觉编码的形成。这些投射神经元(PNs)中的最优编码应能使蘑菇体在识别不同浓度气味的性质时,将潜在误差降至最低,同时使蘑菇体分辨不同性质气味的能力最大化。模拟研究表明,该网络能够在给定范围内产生与浓度无关或几乎无关的编码。这个范围的大小适度依赖于一个参数,该参数表征激活神经元的电压衰减回到静息电位所需的时间;强烈依赖于PNs对触角叶内在神经元(INs)的兴奋性反馈强度;并且在极大程度上依赖于将去极化神经元的电压转换为产生动作电位频率的激活函数的斜率。尽管PNs中的编码会因气味刺激浓度的大幅变化而退化,但当以成分气味剂的数量衡量的刺激复杂性翻倍时,仍能保持良好的性能水平。当PNs对INs的兴奋性反馈很强时,PNs中的活动会从初始状态转变为刺激特异性的平衡状态,刺激去除后该状态仍会维持。当这种PN - IN反馈较弱时,PNs更有可能松弛回到与刺激无关的平衡状态,在这种情况下,编码在刺激施加后不会维持。因此,对于此处模拟的架构而言,PNs对INs的强反馈,以及阶梯状的神经元激活函数,很可能对于产生易于区分的气味质量编码非常重要,这些编码在刺激浓度的几个数量级范围内都是不变的。