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Prediction of mosquito species and population age structure using mid-infrared spectroscopy and supervised machine learning

Despite the global efforts made in the fight against malaria, the disease is resurging. One of the main causes is the resistance that Anopheles mosquitoes, vectors of the disease, have developed to insecticides. Anopheles must survive for at least 10 days to possibly transmit malaria. Therefore, to...

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Autores principales: González Jiménez, Mario, Babayan, Simon A., Khazaeli, Pegah, Doyle, Margaret, Walton, Finlay, Reedy, Elliott, Glew, Thomas, Viana, Mafalda, Ranford-Cartwright, Lisa, Niang, Abdoulaye, Siria, Doreen J., Okumu, Fredros O., Diabaté, Abdoulaye, Ferguson, Heather M., Baldini, Francesco, Wynne, Klaas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: F1000 Research Limited 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6753605/
https://www.ncbi.nlm.nih.gov/pubmed/31544155
http://dx.doi.org/10.12688/wellcomeopenres.15201.3
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author González Jiménez, Mario
Babayan, Simon A.
Khazaeli, Pegah
Doyle, Margaret
Walton, Finlay
Reedy, Elliott
Glew, Thomas
Viana, Mafalda
Ranford-Cartwright, Lisa
Niang, Abdoulaye
Siria, Doreen J.
Okumu, Fredros O.
Diabaté, Abdoulaye
Ferguson, Heather M.
Baldini, Francesco
Wynne, Klaas
author_facet González Jiménez, Mario
Babayan, Simon A.
Khazaeli, Pegah
Doyle, Margaret
Walton, Finlay
Reedy, Elliott
Glew, Thomas
Viana, Mafalda
Ranford-Cartwright, Lisa
Niang, Abdoulaye
Siria, Doreen J.
Okumu, Fredros O.
Diabaté, Abdoulaye
Ferguson, Heather M.
Baldini, Francesco
Wynne, Klaas
author_sort González Jiménez, Mario
collection PubMed
description Despite the global efforts made in the fight against malaria, the disease is resurging. One of the main causes is the resistance that Anopheles mosquitoes, vectors of the disease, have developed to insecticides. Anopheles must survive for at least 10 days to possibly transmit malaria. Therefore, to evaluate and improve malaria vector control interventions, it is imperative to monitor and accurately estimate the age distribution of mosquito populations as well as their population sizes. Here, we demonstrate a machine-learning based approach that uses mid-infrared spectra of mosquitoes to characterise simultaneously both age and species identity of females of the African malaria vector species Anopheles gambiae and An. arabiensis, using laboratory colonies. Mid-infrared spectroscopy-based prediction of mosquito age structures was statistically indistinguishable from true modelled distributions. The accuracy of classifying mosquitoes by species was 82.6%. The method has a negligible cost per mosquito, does not require highly trained personnel, is rapid, and so can be easily applied in both laboratory and field settings. Our results indicate this method is a promising alternative to current mosquito species and age-grading approaches, with further improvements to accuracy and expansion for use with wild mosquito vectors possible through collection of larger mid-infrared spectroscopy data sets.
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spelling pubmed-67536052019-09-20 Prediction of mosquito species and population age structure using mid-infrared spectroscopy and supervised machine learning González Jiménez, Mario Babayan, Simon A. Khazaeli, Pegah Doyle, Margaret Walton, Finlay Reedy, Elliott Glew, Thomas Viana, Mafalda Ranford-Cartwright, Lisa Niang, Abdoulaye Siria, Doreen J. Okumu, Fredros O. Diabaté, Abdoulaye Ferguson, Heather M. Baldini, Francesco Wynne, Klaas Wellcome Open Res Method Article Despite the global efforts made in the fight against malaria, the disease is resurging. One of the main causes is the resistance that Anopheles mosquitoes, vectors of the disease, have developed to insecticides. Anopheles must survive for at least 10 days to possibly transmit malaria. Therefore, to evaluate and improve malaria vector control interventions, it is imperative to monitor and accurately estimate the age distribution of mosquito populations as well as their population sizes. Here, we demonstrate a machine-learning based approach that uses mid-infrared spectra of mosquitoes to characterise simultaneously both age and species identity of females of the African malaria vector species Anopheles gambiae and An. arabiensis, using laboratory colonies. Mid-infrared spectroscopy-based prediction of mosquito age structures was statistically indistinguishable from true modelled distributions. The accuracy of classifying mosquitoes by species was 82.6%. The method has a negligible cost per mosquito, does not require highly trained personnel, is rapid, and so can be easily applied in both laboratory and field settings. Our results indicate this method is a promising alternative to current mosquito species and age-grading approaches, with further improvements to accuracy and expansion for use with wild mosquito vectors possible through collection of larger mid-infrared spectroscopy data sets. F1000 Research Limited 2019-09-16 /pmc/articles/PMC6753605/ /pubmed/31544155 http://dx.doi.org/10.12688/wellcomeopenres.15201.3 Text en Copyright: © 2019 González Jiménez M et al. http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution Licence, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Method Article
González Jiménez, Mario
Babayan, Simon A.
Khazaeli, Pegah
Doyle, Margaret
Walton, Finlay
Reedy, Elliott
Glew, Thomas
Viana, Mafalda
Ranford-Cartwright, Lisa
Niang, Abdoulaye
Siria, Doreen J.
Okumu, Fredros O.
Diabaté, Abdoulaye
Ferguson, Heather M.
Baldini, Francesco
Wynne, Klaas
Prediction of mosquito species and population age structure using mid-infrared spectroscopy and supervised machine learning
title Prediction of mosquito species and population age structure using mid-infrared spectroscopy and supervised machine learning
title_full Prediction of mosquito species and population age structure using mid-infrared spectroscopy and supervised machine learning
title_fullStr Prediction of mosquito species and population age structure using mid-infrared spectroscopy and supervised machine learning
title_full_unstemmed Prediction of mosquito species and population age structure using mid-infrared spectroscopy and supervised machine learning
title_short Prediction of mosquito species and population age structure using mid-infrared spectroscopy and supervised machine learning
title_sort prediction of mosquito species and population age structure using mid-infrared spectroscopy and supervised machine learning
topic Method Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6753605/
https://www.ncbi.nlm.nih.gov/pubmed/31544155
http://dx.doi.org/10.12688/wellcomeopenres.15201.3
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