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首页> 外文期刊>Acta tropica: Journal of Biomedical Sciences >Artificial Neural Network applied as a methodology of mosquito species identification
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Artificial Neural Network applied as a methodology of mosquito species identification

机译:人工神经网络作为蚊虫种类识别方法

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There are about 200 species of mosquitoes (Culicidae) known to be vectors of pathogens that cause diseases in humans. Correct identification of mosquito species is an essential step in the development of effective control strategies for these diseases; recognizing the vectors of pathogens is integral to understanding transmission. Unfortunately, taxonomic identification of mosquitoes is a laborious task, which requires trained experts, and it is jeopardized by the high variability of morphological and molecular characters found within the Culicidae family. In this context, the development of an automatized species identification method would be a valuable and more accessible resource to non-taxonomist and health professionals. In this work, an artificial neural network (ANN) technique was proposed for the identification and classification of 17 species of the genera Anopheles, Aedes, and Culex, based on wing shape characters. We tested the hypothesis that classification using ANN is better than traditional classification by discriminant analysis (DA). Thirty-two wing shape principal components were used as input to a Multilayer Perceptron Classification ANN. The obtained ANN correctly identified species with accuracy rates ranging from 85.70% to 100%, and classified species more efficiently than did the traditional method of multivariate discriminant analysis. The results highlight the power of ANNs to diagnose mosquito species and to partly automatize taxonomic identification. These findings also support the hypothesis that wing venation patterns are species-specific, and thus should be included in taxonomic keys. (C) 2015 Elsevier B.V. All rights reserved.
机译:已知有约200种蚊子(蚊科)是引起人类疾病的病原体的媒介。正确识别蚊子种类是制定有效控制这些疾病的战略的重要步骤;认识病原体的载体是了解传播的基础。不幸的是,对蚊子进行生物分类鉴定是一项艰巨的任务,需要训练有素的专家,并且由于在葫芦科中发现的形态和分子特征的高度可变性而受到危害。在这种情况下,自动分类物种识别方法的开发将是非分类学家和卫生专业人员的宝贵且更容易获得的资源。在这项工作中,提出了一种人工神经网络(ANN)技术,用于根据翼形特征对按蚊,伊蚊和库蚊属的17种进行识别和分类。我们通过判别分析(DA)检验了使用人工神经网络进行分类优于传统分类的假设。 32个机翼形状的主要成分被用作多层感知器分类ANN的输入。与传统的多元判别分析方法相比,所获得的人工神经网络能够正确识别物种,准确率在85.70%至100%之间,并且能够更有效地对物种进行分类。结果突出了人工神经网络在蚊种诊断和部分生物分类识别自动化方面的能力。这些发现也支持以下假设:机翼的通风方式是特定于物种的,因此应包括在分类标准中。 (C)2015 Elsevier B.V.保留所有权利。

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