Automated classification of mixed populations of Aedes aegypti and Culex quinquefasciatus mosquitoes under field conditions

IF 3 2区 医学 Q1 PARASITOLOGY
Fábio Castelo Branco Fontes Paes Njaime, Renato Cesar Máspero, André de Souza Leandro, Rafael Maciel-de-Freitas
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Abstract

The recent rise in the transmission of mosquito-borne diseases such as dengue virus (DENV), Zika (ZIKV), chikungunya (CHIKV), Oropouche (OROV), and West Nile (WNV) is a major concern for public health managers worldwide. Emerging technologies for automated remote mosquito classification can be supplemented to improve surveillance systems and provide valuable information regarding mosquito vector catches in real time. We coupled an optical sensor to the entrance of a standard mosquito suction trap (BG-Mosquitaire) to record 9151 insect flights in two Brazilian cities: Rio de Janeiro and Brasilia. The traps and sensors remained in the field for approximately 1 year. A total of 1383 mosquito flights were recorded from the target species: Aedes aegypti and Culex quinquefasciatus. Mosquito classification was based on previous models developed and trained using European populations of Aedes albopictus and Culex pipiens. The VECTRACK sensor was able to discriminate the target mosquitoes (Aedes and Culex genera) from non-target insects with an accuracy of 99.8%. Considering only mosquito vectors, the classification between Aedes and Culex achieved an accuracy of 93.7%. The sex classification worked better for Cx. quinquefasciatus (accuracy: 95%; specificity: 95.3%) than for Ae. aegypti (accuracy: 92.1%; specificity: 88.4%). The data reported herein show high accuracy, sensitivity, specificity and precision of an automated optical sensor in classifying target mosquito species, genus and sex. Similar results were obtained in two different Brazilian cities, suggesting high reliability of our findings. Surprisingly, the model developed for European populations of Ae. albopictus worked well for Brazilian Ae. aegypti populations, and the model developed and trained for Cx. pipiens was able to classify Brazilian Cx. quinquefasciatus populations. Our findings suggest this optical sensor can be integrated into mosquito surveillance methods and generate accurate automatic real-time monitoring of medically relevant mosquito species.
埃及伊蚊和库蚊混合种群在野外条件下的自动分类
近来,登革热病毒(DENV)、寨卡病毒(ZIKV)、基孔肯雅病毒(CHIKV)、奥罗普什病毒(OROV)和西尼罗河病毒(WNV)等蚊媒疾病的传播率不断上升,这是全球公共卫生管理者关注的主要问题。自动远程蚊虫分类的新兴技术可作为改进监测系统的补充,实时提供有关蚊虫病媒捕获量的宝贵信息。我们将光学传感器与标准吸蚊式捕蚊器(BG-Mosquitaire)的入口相连接,在巴西的两个城市记录了 9151 次昆虫飞行:里约热内卢和巴西利亚。诱捕器和传感器在野外放置了大约一年。共记录了 1383 次目标物种蚊虫的飞行:埃及伊蚊和库蚊。蚊子分类是基于先前开发的模型,并利用白纹伊蚊和琵嘴库蚊的欧洲种群进行了训练。VECTRACK 传感器能够将目标蚊子(伊蚊属和库蚊属)与非目标昆虫区分开来,准确率高达 99.8%。仅考虑蚊媒,伊蚊和库蚊分类的准确率为 93.7%。与埃及伊蚊(准确率:92.1%;特异性:88.4%)相比,对五带喙库蚊的性别分类效果更好(准确率:95%;特异性:95.3%)。本文报告的数据表明,自动光学传感器在对目标蚊子的种类、属和性别进行分类时,具有很高的准确性、灵敏度、特异性和精确度。在巴西两个不同的城市也获得了类似的结果,这表明我们的研究结果具有很高的可靠性。令人惊讶的是,针对欧洲白纹伊蚊种群开发的模型在巴西埃及伊蚊种群中效果良好,而针对蝰蛇开发和训练的模型能够对巴西五步蛇种群进行分类。我们的研究结果表明,这种光学传感器可以集成到蚊子监测方法中,对医学相关的蚊子种类进行准确的自动实时监测。
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来源期刊
Parasites & Vectors
Parasites & Vectors 医学-寄生虫学
CiteScore
6.30
自引率
9.40%
发文量
433
审稿时长
1.4 months
期刊介绍: Parasites & Vectors is an open access, peer-reviewed online journal dealing with the biology of parasites, parasitic diseases, intermediate hosts, vectors and vector-borne pathogens. Manuscripts published in this journal will be available to all worldwide, with no barriers to access, immediately following acceptance. However, authors retain the copyright of their material and may use it, or distribute it, as they wish. Manuscripts on all aspects of the basic and applied biology of parasites, intermediate hosts, vectors and vector-borne pathogens will be considered. In addition to the traditional and well-established areas of science in these fields, we also aim to provide a vehicle for publication of the rapidly developing resources and technology in parasite, intermediate host and vector genomics and their impacts on biological research. We are able to publish large datasets and extensive results, frequently associated with genomic and post-genomic technologies, which are not readily accommodated in traditional journals. Manuscripts addressing broader issues, for example economics, social sciences and global climate change in relation to parasites, vectors and disease control, are also welcomed.
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