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Neural coding in the visual system of Drosophila melanogaster: How do small neural populations support visually guided behaviours?

机译:果蝇视觉系统中的神经编码:小的神经种群如何支持视觉引导的行为?

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摘要

All organisms wishing to survive and reproduce must be able to respond adaptively to a complex, changing world. Yet the computational power available is constrained by biology and evolution, favouring mechanisms that are parsimonious yet robust. Here we investigate the information carried in small populations of visually responsive neurons in Drosophila melanogaster. These so-called ‘ring neurons’, projecting to the ellipsoid body of the central complex, are reported to be necessary for complex visual tasks such as pattern recognition and visual navigation. Recently the receptive fields of these neurons have been mapped, allowing us to investigate how well they can support such behaviours. For instance, in a simulation of classic pattern discrimination experiments, we show that the pattern of output from the ring neurons matches observed fly behaviour. However, performance of the neurons (as with flies) is not perfect and can be easily improved with the addition of extra neurons, suggesting the neurons’ receptive fields are not optimised for recognising abstract shapes, a conclusion which casts doubt on cognitive explanations of fly behaviour in pattern recognition assays. Using artificial neural networks, we then assess how easy it is to decode more general information about stimulus shape from the ring neuron population codes. We show that these neurons are well suited for encoding information about size, position and orientation, which are more relevant behavioural parameters for a fly than abstract pattern properties. This leads us to suggest that in order to understand the properties of neural systems, one must consider how perceptual circuits put information at the service of behaviour.
机译:所有希望生存和繁殖的生物都必须能够适应复杂,变化的世界。然而,可用的计算能力受到生物学和进化的束缚,偏爱简约而强大的机制。在这里,我们调查在果蝇果蝇的视觉响应神经元的小群体中携带的信息。据报道,这些所谓的“环状神经元”伸向中央复合体的椭球体,对于诸如图案识别和视觉导航等复杂的视觉任务是必需的。最近,已经对这些神经元的感受野进行了定位,从而使我们能够研究它们对这种行为的支持程度。例如,在经典模式识别实验的模拟中,我们显示了环形神经元输出的模式与观察到的飞行行为相匹配。然而,神经元(如苍蝇)的性能并不完美,可以通过添加额外的神经元轻松地改善,这表明神经元的感受野并未针对识别抽象形状进行优化,这一结论使人们对苍蝇的认知解释产生怀疑模式识别分析中的行为。然后,我们使用人工神经网络评估从环形神经元种群代码中解码有关刺激形状的更多一般信息有多么容易。我们表明,这些神经元非常适合用于编码有关大小,位置和方向的信息,这些信息对于飞行而言比抽象的模式属性更相关。这导致我们建议,为了理解神经系统的特性,必须考虑感知电路如何将信息提供给行为。

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