Deep learning approaches for challenging species and gender identification of mosquito vectors

Abstract Microscopic observation of mosquito species, which is the basis of morphological identification, is a time-consuming and challenging process, particularly owing to the different skills and experience of public health personnel. We present deep learning models based on the well-known you-onl...

Full description

Bibliographic Details
Main Authors: Veerayuth Kittichai, Theerakamol Pengsakul, Kemmapon Chumchuen, Yudthana Samung, Patchara Sriwichai, Natthaphop Phatthamolrat, Teerawat Tongloy, Komgrit Jaksukam, Santhad Chuwongin, Siridech Boonsang
Format: Article
Language:English
Published: Nature Publishing Group 2021-03-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-84219-4
id doaj-9f1704ac7cf0410296b933f43d63cd5e
record_format Article
spelling doaj-9f1704ac7cf0410296b933f43d63cd5e2021-03-11T12:19:07ZengNature Publishing GroupScientific Reports2045-23222021-03-0111111410.1038/s41598-021-84219-4Deep learning approaches for challenging species and gender identification of mosquito vectorsVeerayuth Kittichai0Theerakamol Pengsakul1Kemmapon Chumchuen2Yudthana Samung3Patchara Sriwichai4Natthaphop Phatthamolrat5Teerawat Tongloy6Komgrit Jaksukam7Santhad Chuwongin8Siridech Boonsang9Faculty of Medicine, King Mongkut’s Institute of Technology LadkrabangFaculty of Medical Technology, Prince of Songkla UniversityEpidemiology Unit, Faculty of Medicine, Prince of Songkla UniversityFaculty of Tropical Medicine, Mahidol UniversityFaculty of Tropical Medicine, Mahidol UniversityCollege of Advanced Manufacturing Innovation, King Mongkut’s Institute of Technology LadkrabangCollege of Advanced Manufacturing Innovation, King Mongkut’s Institute of Technology LadkrabangCollege of Advanced Manufacturing Innovation, King Mongkut’s Institute of Technology LadkrabangCollege of Advanced Manufacturing Innovation, King Mongkut’s Institute of Technology LadkrabangDepartment of Electrical Engineering, Faculty of Engineering, King Mongkut’s Institute of Technology LadkrabangAbstract Microscopic observation of mosquito species, which is the basis of morphological identification, is a time-consuming and challenging process, particularly owing to the different skills and experience of public health personnel. We present deep learning models based on the well-known you-only-look-once (YOLO) algorithm. This model can be used to simultaneously classify and localize the images to identify the species of the gender of field-caught mosquitoes. The results indicated that the concatenated two YOLO v3 model exhibited the optimal performance in identifying the mosquitoes, as the mosquitoes were relatively small objects compared with the large proportional environment image. The robustness testing of the proposed model yielded a mean average precision and sensitivity of 99% and 92.4%, respectively. The model exhibited high performance in terms of the specificity and accuracy, with an extremely low rate of misclassification. The area under the receiver operating characteristic curve (AUC) was 0.958 ± 0.011, which further demonstrated the model accuracy. Thirteen classes were detected with an accuracy of 100% based on a confusion matrix. Nevertheless, the relatively low detection rates for the two species were likely a result of the limited number of wild-caught biological samples available. The proposed model can help establish the population densities of mosquito vectors in remote areas to predict disease outbreaks in advance.https://doi.org/10.1038/s41598-021-84219-4
collection DOAJ
language English
format Article
sources DOAJ
author Veerayuth Kittichai
Theerakamol Pengsakul
Kemmapon Chumchuen
Yudthana Samung
Patchara Sriwichai
Natthaphop Phatthamolrat
Teerawat Tongloy
Komgrit Jaksukam
Santhad Chuwongin
Siridech Boonsang
spellingShingle Veerayuth Kittichai
Theerakamol Pengsakul
Kemmapon Chumchuen
Yudthana Samung
Patchara Sriwichai
Natthaphop Phatthamolrat
Teerawat Tongloy
Komgrit Jaksukam
Santhad Chuwongin
Siridech Boonsang
Deep learning approaches for challenging species and gender identification of mosquito vectors
Scientific Reports
author_facet Veerayuth Kittichai
Theerakamol Pengsakul
Kemmapon Chumchuen
Yudthana Samung
Patchara Sriwichai
Natthaphop Phatthamolrat
Teerawat Tongloy
Komgrit Jaksukam
Santhad Chuwongin
Siridech Boonsang
author_sort Veerayuth Kittichai
title Deep learning approaches for challenging species and gender identification of mosquito vectors
title_short Deep learning approaches for challenging species and gender identification of mosquito vectors
title_full Deep learning approaches for challenging species and gender identification of mosquito vectors
title_fullStr Deep learning approaches for challenging species and gender identification of mosquito vectors
title_full_unstemmed Deep learning approaches for challenging species and gender identification of mosquito vectors
title_sort deep learning approaches for challenging species and gender identification of mosquito vectors
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-03-01
description Abstract Microscopic observation of mosquito species, which is the basis of morphological identification, is a time-consuming and challenging process, particularly owing to the different skills and experience of public health personnel. We present deep learning models based on the well-known you-only-look-once (YOLO) algorithm. This model can be used to simultaneously classify and localize the images to identify the species of the gender of field-caught mosquitoes. The results indicated that the concatenated two YOLO v3 model exhibited the optimal performance in identifying the mosquitoes, as the mosquitoes were relatively small objects compared with the large proportional environment image. The robustness testing of the proposed model yielded a mean average precision and sensitivity of 99% and 92.4%, respectively. The model exhibited high performance in terms of the specificity and accuracy, with an extremely low rate of misclassification. The area under the receiver operating characteristic curve (AUC) was 0.958 ± 0.011, which further demonstrated the model accuracy. Thirteen classes were detected with an accuracy of 100% based on a confusion matrix. Nevertheless, the relatively low detection rates for the two species were likely a result of the limited number of wild-caught biological samples available. The proposed model can help establish the population densities of mosquito vectors in remote areas to predict disease outbreaks in advance.
url https://doi.org/10.1038/s41598-021-84219-4
work_keys_str_mv AT veerayuthkittichai deeplearningapproachesforchallengingspeciesandgenderidentificationofmosquitovectors
AT theerakamolpengsakul deeplearningapproachesforchallengingspeciesandgenderidentificationofmosquitovectors
AT kemmaponchumchuen deeplearningapproachesforchallengingspeciesandgenderidentificationofmosquitovectors
AT yudthanasamung deeplearningapproachesforchallengingspeciesandgenderidentificationofmosquitovectors
AT patcharasriwichai deeplearningapproachesforchallengingspeciesandgenderidentificationofmosquitovectors
AT natthaphopphatthamolrat deeplearningapproachesforchallengingspeciesandgenderidentificationofmosquitovectors
AT teerawattongloy deeplearningapproachesforchallengingspeciesandgenderidentificationofmosquitovectors
AT komgritjaksukam deeplearningapproachesforchallengingspeciesandgenderidentificationofmosquitovectors
AT santhadchuwongin deeplearningapproachesforchallengingspeciesandgenderidentificationofmosquitovectors
AT siridechboonsang deeplearningapproachesforchallengingspeciesandgenderidentificationofmosquitovectors
_version_ 1724224497101307904