School of Earth Sciences and Engineering, Zhu Gongshan Building, 163 Xianlin Avenue, Nanjing, 210023 Jiangsu, China.
Department of Entomology, Staatliches Museum für Naturkunde, Rosenstein 1, 70191 Stuttgart, Germany.
Syst Biol. 2022 Aug 10;71(5):1095-1109. doi: 10.1093/sysbio/syab098.
The Bemisia tabaci species complex is a group of tropical-subtropical hemipterans, some species of which have achieved global distribution over the past 150 years. Several species are regarded currently as among the world's most pernicious agricultural pests, causing a variety of damage types via direct feeding and plant-disease transmission. Long considered a single variable species, genetic, molecular and reproductive compatibility analyses have revealed that this "species" is actually a complex of between 24 and 48 morphologically cryptic species. However, determinations of which populations represent distinct species have been hampered by a failure to integrate genetic/molecular and morphological species-diagnoses. This, in turn, has limited the success of outbreak-control and eradication programs. Previous morphological investigations, based on traditional and geometric morphometric procedures, have had limited success in identifying genetic/molecular species from patterns of morphological variation in puparia. As an alternative, our investigation focused on exploring the use of a deep-learning convolution neural network (CNN) trained on puparial images and based on an embedded, group-contrast training protocol as a means of searching for consistent differences in puparial morphology. Fifteen molecular species were selected for analysis, all of which had been identified via DNA barcoding and confirmed using more extensive molecular characterizations and crossing experiments. Results demonstrate that all 15 species can be discriminated successfully based on differences in puparium morphology alone. This level of discrimination was achieved for laboratory populations reared on both hairy-leaved and glabrous-leaved host plants. Moreover, cross-tabulation tests confirmed the generality and stability of the CNN discriminant system trained on both ecophenotypic variants. The ability to identify B. tabaci species quickly and accurately from puparial images has the potential to address many long-standing problems in B. tabaci taxonomy and systematics as well as playing a vital role in ongoing pest-management efforts. [Aleyrodidae; entomology; Hemiptera; machine learning; morphometrics; pest control; systematics; taxonomy; whiteflies.].
烟粉虱种复合体是一组热带-亚热带半翅目昆虫,其中一些物种在过去 150 年中已实现了全球分布。目前,有几种被认为是世界上最有害的农业害虫之一,通过直接取食和植物疾病传播造成多种损害类型。长期以来,人们一直认为该物种是单一变量种,但遗传、分子和生殖相容性分析表明,这种“物种”实际上是由 24 到 48 个形态上隐密的种组成的复合体。然而,由于未能整合遗传/分子和形态物种诊断,确定哪些种群代表不同的物种一直受到阻碍。这反过来又限制了暴发控制和根除计划的成功。以前的形态学研究基于传统和几何形态测量程序,在根据蛹形态变化识别遗传/分子物种方面取得的成功有限。作为替代方法,我们的研究重点是探索使用基于蛹图像的深度学习卷积神经网络(CNN),并基于嵌入式、组对比训练协议,作为寻找蛹形态一致差异的一种手段。选择了 15 个分子物种进行分析,所有这些物种都是通过 DNA 条形码识别,并通过更广泛的分子特征和杂交实验得到证实。结果表明,仅根据蛹形态的差异就可以成功区分所有 15 个物种。这种区分水平是在饲养于多毛叶和无毛叶两种宿主植物的实验室种群中实现的。此外,交叉制表测试证实了基于两种生态表型变体训练的 CNN 判别系统的通用性和稳定性。从蛹图像中快速准确地识别烟粉虱物种的能力有可能解决烟粉虱分类学和系统学中的许多长期存在的问题,并在正在进行的害虫管理工作中发挥至关重要的作用。[粉虱科;昆虫学;半翅目;机器学习;形态计量学;害虫防治;系统学;分类学;粉虱]。