Abstract
Identification of arthropods important in disease transmission is a crucial, yet difficult, task that can demand considerable training and experience. An important case in point is that of the 150+ species of Triatominae, vectors of Trypanosoma cruzi, causative agent of Chagas disease across the Americas. We present a fully automated system that is able to identify triatomine bugs from Mexico and Brazil with an accuracy consistently above 80%, and with considerable potential for further improvement. The system processes digital photographs from a photo apparatus into landmarks, and uses ratios of measurements among those landmarks, as well as (in a preliminary exploration) two measurements that approximate aspects of coloration, as the basis for classification. This project has thus produced a working prototype that achieves reasonably robust correct identification rates, although many more developments can and will be added, and-more broadly-the project illustrates the value of multidisciplinary collaborations in resolving difficult and complex challenges.
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CITATION STYLE
Gurgel-Gonçalves, R., Komp, E., Campbell, L. P., Khalighifar, A., Mellenbruch, J., Mendonça, V. J., … Ramsey, J. M. (2017). Automated identification of insect vectors of Chagas disease in Brazil and Mexico: The Virtual Vector Lab. PeerJ, 2017(4). https://doi.org/10.7717/peerj.3040
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