Dewar Alex D M, Wystrach Antoine, Philippides Andrew, Graham Paul
Department of Informatics, University of Sussex, Falmer, Brighton, United Kingdom.
Centre de Recherches sur la Cognition Animale, Centre National de la Recherche Scientifique, Université Paul Sabatier, Toulouse, France.
PLoS Comput Biol. 2017 Oct 10;13(10):e1005735. doi: 10.1371/journal.pcbi.1005735. eCollection 2017 Oct.
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.
所有希望生存和繁殖的生物体都必须能够对复杂多变的世界做出适应性反应。然而,可用的计算能力受到生物学和进化的限制,这有利于那些简约而稳健的机制。在这里,我们研究了果蝇中少量视觉反应神经元所携带的信息。这些所谓的“环神经元”投射到中央复合体的椭球体,据报道,它们对于诸如模式识别和视觉导航等复杂视觉任务是必不可少的。最近,这些神经元的感受野已经被绘制出来,这使我们能够研究它们在多大程度上能够支持此类行为。例如,在经典模式辨别实验的模拟中,我们表明环神经元的输出模式与观察到的果蝇行为相匹配。然而,神经元的表现(与果蝇一样)并不完美,通过添加额外的神经元可以很容易地得到改善,这表明神经元的感受野并非针对识别抽象形状进行优化,这一结论对果蝇在模式识别试验中的行为认知解释提出了质疑。然后,我们使用人工神经网络来评估从环神经元群体编码中解码关于刺激形状的更一般信息有多容易。我们表明,这些神经元非常适合编码关于大小、位置和方向的信息,对于果蝇来说,这些是比抽象模式属性更相关的行为参数。这使我们认为,为了理解神经系统的特性,必须考虑感知回路如何将信息用于行为。