Please use this identifier to cite or link to this item: https://doi.org/10.48441/4427.1963
Publisher DOI: 10.1186/s13071-024-06459-3
Title: Robust mosquito species identification from diverse body and wing images using deep learning
Language: English
Authors: Nolte, Kristopher 
Sauer, Felix Gregor 
Baumbach, Jan 
Kollmannsberger, Philip 
Lins, Christian  
Lühken, Renke 
Keywords: Artificial intelligence; Convolutional neural network; Entomology; Mosquitoes
Issue Date: 2-Sep-2024
Publisher: BioMed Central
Journal or Series Name: Parasites & vectors 
Volume: 17
Issue: 1
Abstract: 
Mosquito-borne diseases are a major global health threat. Traditional morphological or molecular methods for identifying mosquito species often require specialized expertise or expensive laboratory equipment. The use of convolutional neural networks (CNNs) to identify mosquito species based on images may offer a promising alternative, but their practical implementation often remains limited. This study explores the applicability of CNNs in classifying mosquito species. It compares the efficacy of body and wing depictions across three image collection methods: a smartphone, macro-lens attached to a smartphone and a professional stereomicroscope. The study included 796 specimens of four morphologically similar Aedes species, Aedes aegypti, Ae. albopictus, Ae. koreicus and Ae. japonicus japonicus. The findings of this study indicate that CNN models demonstrate superior performance in wing-based classification 87.6% (95% CI: 84.2–91.0) compared to body-based classification 78.9% (95% CI: 77.7–80.0). Nevertheless, there are notable limitations of CNNs as they perform reliably across multiple devices only when trained specifically on those devices, resulting in an average decline of mean accuracy by 14%, even with extensive image augmentation. Additionally, we also estimate the required training data volume for effective classification, noting a reduced requirement for wing-based classification compared to body-based methods. Our study underscores the viability of both body and wing classification methods for mosquito species identification while emphasizing the need to address practical constraints in developing accessible classification systems. Graphical abstract: (Figure presented.)
URI: https://hdl.handle.net/20.500.12738/16388
DOI: 10.48441/4427.1963
ISSN: 1756-3305
Review status: This version was peer reviewed (peer review)
Institute: Department Informatik 
Fakultät Technik und Informatik 
Type: Article
Additional note: Nolte, K., Sauer, F.G., Baumbach, J. et al. Robust mosquito species identification from diverse body and wing images using deep learning. Parasites Vectors 17, 372 (2024). https://doi.org/10.1186/s13071-024-06459-3
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