利用非侵入性近红外成像和机器学习分类技术推断瘟蝇蛹发育阶段。

IF 1.6 3区 农林科学 Q2 ENTOMOLOGY
Guadalupe Córdova-García, Horacio Tapia-McClung, Dinesh Rao, Diana Pérez-Staples
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引用次数: 0

摘要

昆虫蛹在蛹内发生形态变化(如眼睛、翅膀、刚毛和腿的色素沉着)。了解蛹的生理年龄及其羽化是控制农业上重要的绦虫的重要参数。传统的测定年龄的方法需要解剖蛹,从而杀死标本。因此,需要非侵入性和更合乎道德的方法来确定生理年龄,特别是在个体蛹的整个发育过程中。此外,机器学习方法可以用来检测蛹的年龄,从而减少人类的偏见。本文采用非侵入性近红外(NIR, 850 ~ 1100nm)技术研究了墨西哥果蝇(双翅目:绢蝇科)的喙内发育。我们拍摄了蛹,随后用机器学习算法分析了图像。在温度为26℃、相对湿度为75 ~ 80%的条件下,育成期为17 ~ 19 d。第1 ~ 3天未见明显结构。第4天观察平头蛹。眼睛从第12天开始变黑。第13天和第14天翅膀出现色素沉着,第15天胸上的腿和刚毛变黑。卷积神经网络能正确识别输卵管内发育阶段的生理年龄范围,平均准确率为71.77%。该模型使用近红外成像,可以在不阻止蛹发育的情况下确定生理年龄范围,并在不等待成虫出现的情况下估计蛹的生存能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inferring tephritid fly pupal development stage using non-invasive near infrared imaging and machine learning classification.

Insect pupae change morphologically (e.g., pigmentation of eyes, wings, setae and legs) during the intrapuparial period. Knowledge on the physiological age of pupae and their emergence are important parameters for the control of agriculturally important Tephritid flies. Traditional methods for determining age require dissecting the puparium, thus killing the specimen. Therefore, non-invasive and more ethical methods to determine physiological age are needed, especially if individual pupae are followed throughout their development. Furthermore, machine learning methods can be employed to detect pupal age, thereby reducing human-bias. Here, we studied the intrapuparial development of the Mexican fruit fly, Anastrepha ludens (Diptera: Tephritidae), using non-invasive near-infrared (NIR, 850-1100 nm) images. We photographed pupae and subsequently analysed the images with machine learning algorithms. The intrapuparial period lasted between 17 and 19 days at a constant temperature of 26°C, and 75-80% relative humidity. No visible structures were observed between days 1 and 3. The phanerocephalic pupa was observed on day 4. The darkening of the eyes began on day 12. Wing pigmentation occurred on days 13 and 14, and the legs and setae on the thorax became melanized on day 15. A convolutional neural network correctly identified the physiological age range of intrapuparial development stages with an average accuracy of 71.77%. This model using NIR imaging allows the determination of a physiological age range without arresting the development of the pupae, and an estimation of the viability of pupae without waiting for the emergence of the adult.

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来源期刊
CiteScore
4.00
自引率
0.00%
发文量
160
审稿时长
6-12 weeks
期刊介绍: Established in 1910, the internationally recognised Bulletin of Entomological Research aims to further global knowledge of entomology through the generalisation of research findings rather than providing more entomological exceptions. The Bulletin publishes high quality and original research papers, ''critiques'' and review articles concerning insects or other arthropods of economic importance in agriculture, forestry, stored products, biological control, medicine, animal health and natural resource management. The scope of papers addresses the biology, ecology, behaviour, physiology and systematics of individuals and populations, with a particular emphasis upon the major current and emerging pests of agriculture, horticulture and forestry, and vectors of human and animal diseases. This includes the interactions between species (plants, hosts for parasites, natural enemies and whole communities), novel methodological developments, including molecular biology, in an applied context. The Bulletin does not publish the results of pesticide testing or traditional taxonomic revisions.
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