Deep Learning Algorithms Improve Automated Identification of Chagas Disease Vectors

Author:

Khalighifar Ali1ORCID,Komp Ed2,Ramsey Janine M3,Gurgel-Gonçalves Rodrigo4,Peterson A Townsend1ORCID

Affiliation:

1. Biodiversity Institute and Department of Ecology and Evolutionary Biology, University of Kansas, Lawrence, KS

2. Information and Telecommunication Technology Center, University of Kansas, Lawrence, KS

3. Centro Regional de Investigación en Salud Pública, Instituto Nacional de Salud Publica, Tapachula, Chiapas, Mexico

4. Faculty of Medicine, Universidade de Brasília, Brasilia, DF, Brazil

Abstract

Abstract Vector-borne Chagas disease is endemic to the Americas and imposes significant economic and social burdens on public health. In a previous contribution, we presented an automated identification system that was able to discriminate among 12 Mexican and 39 Brazilian triatomine (Hemiptera: Reduviidae) species from digital images. To explore the same data more deeply using machine-learning approaches, hoping for improvements in classification, we employed TensorFlow, an open-source software platform for a deep learning algorithm. We trained the algorithm based on 405 images for Mexican triatomine species and 1,584 images for Brazilian triatomine species. Our system achieved 83.0 and 86.7% correct identification rates across all Mexican and Brazilian species, respectively, an improvement over comparable rates from statistical classifiers (80.3 and 83.9%, respectively). Incorporating distributional information to reduce numbers of species in analyses improved identification rates to 95.8% for Mexican species and 98.9% for Brazilian species. Given the ‘taxonomic impediment’ and difficulties in providing entomological expertise necessary to control such diseases, automating the identification process offers a potential partial solution to crucial challenges.

Funder

University of Kansas

Consejo Nacional de Ciencia y Tecnologia

Publisher

Oxford University Press (OUP)

Subject

Infectious Diseases,Insect Science,General Veterinary,Parasitology

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