Santer Roger D, Akanyeti Otar
Department of Life Sciences, Aberystwyth University, Aberystwyth, Wales, UK.
Department of Computer Science, Aberystwyth University, Aberystwyth, Wales, UK.
Insect Sci. 2025 Jan 16. doi: 10.1111/1744-7917.13496.
Jewel beetles pose significant threats to forestry, and effective traps are needed to monitor and manage them. Green traps often catch more beetles, but purple traps catch a greater proportion of females. Understanding the function and mechanism of this behavior can provide a rationale for trap optimization. Jewel beetles possess UV-, blue-, green-, and red-sensitive photoreceptors, and perceive color differently from humans. Jewel beetle photoreceptor signals were calculated for tree leaf and tree bark stimuli, representing feeding and oviposition sites of adult jewel beetles respectively. Artificial neural networks (ANNs) were trained to discriminate those stimuli using beetle photoreceptor signals, providing in silico models of the neural processing that might have evolved to drive behavior. ANNs using blue-, green-, and red-sensitive photoreceptor inputs could classify these stimuli with very high accuracy (>99%). ANNs processed photoreceptor signals in an opponent fashion: increasing green-sensitive photoreceptor signals promoted leaf classifications, while increasing blue- and red-sensitive photoreceptor signals promoted bark classifications. Trained ANNs were fed photoreceptor signals calculated for traps, wherein they always classified green traps as leaves, but often classified purple traps as bark, indicating that these traps share salient features with different classes of tree stimuli from a beetle's eye view. A metric representing the photoreceptor opponent mechanism implicated by ANNs then explained catches of emerald ash borer, Agrilus planipennis, at differently colored traps from a previous field study. This analysis provides a hypothesized behavioral mechanism that can now guide the rational selection and improvement of jewel beetle traps.
吉丁虫对林业构成重大威胁,因此需要有效的诱捕器来监测和管理它们。绿色诱捕器通常能捕获更多的吉丁虫,但紫色诱捕器捕获的雌性比例更高。了解这种行为的功能和机制可为诱捕器的优化提供依据。吉丁虫拥有对紫外线、蓝色、绿色和红色敏感的光感受器,其对颜色的感知与人类不同。分别针对代表成年吉丁虫取食和产卵地点的树叶和树皮刺激计算吉丁虫光感受器信号。训练人工神经网络(ANN)使用吉丁虫光感受器信号来区分这些刺激,从而提供可能已经进化以驱动行为的神经处理的计算机模拟模型。使用对蓝色、绿色和红色敏感的光感受器输入的人工神经网络能够以非常高的准确率(>99%)对这些刺激进行分类。人工神经网络以拮抗的方式处理光感受器信号:增加对绿色敏感的光感受器信号会促进对树叶的分类,而增加对蓝色和红色敏感的光感受器信号会促进对树皮的分类。将训练后的人工神经网络输入针对诱捕器计算的光感受器信号,在这种情况下,它们总是将绿色诱捕器分类为树叶,但经常将紫色诱捕器分类为树皮,这表明从吉丁虫的视角来看,这些诱捕器与不同类别的树木刺激具有显著特征。然后,一个代表人工神经网络所涉及的光感受器拮抗机制的指标解释了之前田间研究中不同颜色诱捕器对翡翠灰螟(Agrilus planipennis)的捕获情况。这一分析提供了一种假设的行为机制,现在可以指导吉丁虫诱捕器的合理选择和改进。