Delimiting cryptic morphological variation among human malaria vector species using convolutional neural networks.

Deep learning is a powerful approach for distinguishing classes of images, and there is a growing interest in applying these methods to delimit species, particularly in the identification of mosquito vectors. Visual identification of mosquito species is the foundation of mosquito-borne disease surve...

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Main Authors: Jannelle Couret, Danilo C Moreira, Davin Bernier, Aria Mia Loberti, Ellen M Dotson, Marco Alvarez
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-12-01
Series:PLoS Neglected Tropical Diseases
Online Access:https://doi.org/10.1371/journal.pntd.0008904
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spelling doaj-3f9153c4857a4253802072bcd78a94752021-03-03T08:32:38ZengPublic Library of Science (PLoS)PLoS Neglected Tropical Diseases1935-27271935-27352020-12-011412e000890410.1371/journal.pntd.0008904Delimiting cryptic morphological variation among human malaria vector species using convolutional neural networks.Jannelle CouretDanilo C MoreiraDavin BernierAria Mia LobertiEllen M DotsonMarco AlvarezDeep learning is a powerful approach for distinguishing classes of images, and there is a growing interest in applying these methods to delimit species, particularly in the identification of mosquito vectors. Visual identification of mosquito species is the foundation of mosquito-borne disease surveillance and management, but can be hindered by cryptic morphological variation in mosquito vector species complexes such as the malaria-transmitting Anopheles gambiae complex. We sought to apply Convolutional Neural Networks (CNNs) to images of mosquitoes as a proof-of-concept to determine the feasibility of automatic classification of mosquito sex, genus, species, and strains using whole-body, 2D images of mosquitoes. We introduce a library of 1, 709 images of adult mosquitoes collected from 16 colonies of mosquito vector species and strains originating from five geographic regions, with 4 cryptic species not readily distinguishable morphologically even by trained medical entomologists. We present a methodology for image processing, data augmentation, and training and validation of a CNN. Our best CNN configuration achieved high prediction accuracies of 96.96% for species identification and 98.48% for sex. Our results demonstrate that CNNs can delimit species with cryptic morphological variation, 2 strains of a single species, and specimens from a single colony stored using two different methods. We present visualizations of the CNN feature space and predictions for interpretation of our results, and we further discuss applications of our findings for future applications in malaria mosquito surveillance.https://doi.org/10.1371/journal.pntd.0008904
collection DOAJ
language English
format Article
sources DOAJ
author Jannelle Couret
Danilo C Moreira
Davin Bernier
Aria Mia Loberti
Ellen M Dotson
Marco Alvarez
spellingShingle Jannelle Couret
Danilo C Moreira
Davin Bernier
Aria Mia Loberti
Ellen M Dotson
Marco Alvarez
Delimiting cryptic morphological variation among human malaria vector species using convolutional neural networks.
PLoS Neglected Tropical Diseases
author_facet Jannelle Couret
Danilo C Moreira
Davin Bernier
Aria Mia Loberti
Ellen M Dotson
Marco Alvarez
author_sort Jannelle Couret
title Delimiting cryptic morphological variation among human malaria vector species using convolutional neural networks.
title_short Delimiting cryptic morphological variation among human malaria vector species using convolutional neural networks.
title_full Delimiting cryptic morphological variation among human malaria vector species using convolutional neural networks.
title_fullStr Delimiting cryptic morphological variation among human malaria vector species using convolutional neural networks.
title_full_unstemmed Delimiting cryptic morphological variation among human malaria vector species using convolutional neural networks.
title_sort delimiting cryptic morphological variation among human malaria vector species using convolutional neural networks.
publisher Public Library of Science (PLoS)
series PLoS Neglected Tropical Diseases
issn 1935-2727
1935-2735
publishDate 2020-12-01
description Deep learning is a powerful approach for distinguishing classes of images, and there is a growing interest in applying these methods to delimit species, particularly in the identification of mosquito vectors. Visual identification of mosquito species is the foundation of mosquito-borne disease surveillance and management, but can be hindered by cryptic morphological variation in mosquito vector species complexes such as the malaria-transmitting Anopheles gambiae complex. We sought to apply Convolutional Neural Networks (CNNs) to images of mosquitoes as a proof-of-concept to determine the feasibility of automatic classification of mosquito sex, genus, species, and strains using whole-body, 2D images of mosquitoes. We introduce a library of 1, 709 images of adult mosquitoes collected from 16 colonies of mosquito vector species and strains originating from five geographic regions, with 4 cryptic species not readily distinguishable morphologically even by trained medical entomologists. We present a methodology for image processing, data augmentation, and training and validation of a CNN. Our best CNN configuration achieved high prediction accuracies of 96.96% for species identification and 98.48% for sex. Our results demonstrate that CNNs can delimit species with cryptic morphological variation, 2 strains of a single species, and specimens from a single colony stored using two different methods. We present visualizations of the CNN feature space and predictions for interpretation of our results, and we further discuss applications of our findings for future applications in malaria mosquito surveillance.
url https://doi.org/10.1371/journal.pntd.0008904
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