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Follow up of a robust meta-signature to identify Zika virus infection in Aedes aegypti: another brick in the wall

The mosquito Aedes aegypti is the main vector of several arthropod-borne diseases that have global impacts. In a previous meta-analysis, our group identified a vector gene set containing 110 genes strongly associated with infections of dengue, West Nile and yellow fever viruses. Of these 110 genes,...

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Autores principales: Fukutani, Eduardo, Rodrigues, Moreno, Kasprzykowski, José Irahe, de Araujo, Cintia Figueiredo, Paschoal, Alexandre Rossi, Ramos, Pablo Ivan Pereira, Fukutani, Kiyoshi Ferreira, de Queiroz, Artur Trancoso Lopo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Instituto Oswaldo Cruz, Ministério da Saúde 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5965457/
https://www.ncbi.nlm.nih.gov/pubmed/29846381
http://dx.doi.org/10.1590/0074-02760180053
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author Fukutani, Eduardo
Rodrigues, Moreno
Kasprzykowski, José Irahe
de Araujo, Cintia Figueiredo
Paschoal, Alexandre Rossi
Ramos, Pablo Ivan Pereira
Fukutani, Kiyoshi Ferreira
de Queiroz, Artur Trancoso Lopo
author_facet Fukutani, Eduardo
Rodrigues, Moreno
Kasprzykowski, José Irahe
de Araujo, Cintia Figueiredo
Paschoal, Alexandre Rossi
Ramos, Pablo Ivan Pereira
Fukutani, Kiyoshi Ferreira
de Queiroz, Artur Trancoso Lopo
author_sort Fukutani, Eduardo
collection PubMed
description The mosquito Aedes aegypti is the main vector of several arthropod-borne diseases that have global impacts. In a previous meta-analysis, our group identified a vector gene set containing 110 genes strongly associated with infections of dengue, West Nile and yellow fever viruses. Of these 110 genes, four genes allowed a highly accurate classification of infected status. More recently, a new study of Ae. aegypti infected with Zika virus (ZIKV) was published, providing new data to investigate whether this “infection” gene set is also altered during a ZIKV infection. Our hypothesis is that the infection-associated signature may also serve as a proxy to classify the ZIKV infection in the vector. Raw data associated with the NCBI/BioProject were downloaded and re-analysed. A total of 18 paired-end replicates corresponding to three ZIKV-infected samples and three controls were included in this study. The nMDS technique with a logistic regression was used to obtain the probabilities of belonging to a given class. Thus, to compare both gene sets, we used the area under the curve and performed a comparison using the bootstrap method. Our meta-signature was able to separate the infected mosquitoes from the controls with good predictive power to classify the Zika-infected mosquitoes.
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spelling pubmed-59654572018-05-30 Follow up of a robust meta-signature to identify Zika virus infection in Aedes aegypti: another brick in the wall Fukutani, Eduardo Rodrigues, Moreno Kasprzykowski, José Irahe de Araujo, Cintia Figueiredo Paschoal, Alexandre Rossi Ramos, Pablo Ivan Pereira Fukutani, Kiyoshi Ferreira de Queiroz, Artur Trancoso Lopo Mem Inst Oswaldo Cruz Short Communication The mosquito Aedes aegypti is the main vector of several arthropod-borne diseases that have global impacts. In a previous meta-analysis, our group identified a vector gene set containing 110 genes strongly associated with infections of dengue, West Nile and yellow fever viruses. Of these 110 genes, four genes allowed a highly accurate classification of infected status. More recently, a new study of Ae. aegypti infected with Zika virus (ZIKV) was published, providing new data to investigate whether this “infection” gene set is also altered during a ZIKV infection. Our hypothesis is that the infection-associated signature may also serve as a proxy to classify the ZIKV infection in the vector. Raw data associated with the NCBI/BioProject were downloaded and re-analysed. A total of 18 paired-end replicates corresponding to three ZIKV-infected samples and three controls were included in this study. The nMDS technique with a logistic regression was used to obtain the probabilities of belonging to a given class. Thus, to compare both gene sets, we used the area under the curve and performed a comparison using the bootstrap method. Our meta-signature was able to separate the infected mosquitoes from the controls with good predictive power to classify the Zika-infected mosquitoes. Instituto Oswaldo Cruz, Ministério da Saúde 2018-05-28 /pmc/articles/PMC5965457/ /pubmed/29846381 http://dx.doi.org/10.1590/0074-02760180053 Text en https://creativecommons.org/licenses/by/4.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Short Communication
Fukutani, Eduardo
Rodrigues, Moreno
Kasprzykowski, José Irahe
de Araujo, Cintia Figueiredo
Paschoal, Alexandre Rossi
Ramos, Pablo Ivan Pereira
Fukutani, Kiyoshi Ferreira
de Queiroz, Artur Trancoso Lopo
Follow up of a robust meta-signature to identify Zika virus infection in Aedes aegypti: another brick in the wall
title Follow up of a robust meta-signature to identify Zika virus infection in Aedes aegypti: another brick in the wall
title_full Follow up of a robust meta-signature to identify Zika virus infection in Aedes aegypti: another brick in the wall
title_fullStr Follow up of a robust meta-signature to identify Zika virus infection in Aedes aegypti: another brick in the wall
title_full_unstemmed Follow up of a robust meta-signature to identify Zika virus infection in Aedes aegypti: another brick in the wall
title_short Follow up of a robust meta-signature to identify Zika virus infection in Aedes aegypti: another brick in the wall
title_sort follow up of a robust meta-signature to identify zika virus infection in aedes aegypti: another brick in the wall
topic Short Communication
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5965457/
https://www.ncbi.nlm.nih.gov/pubmed/29846381
http://dx.doi.org/10.1590/0074-02760180053
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