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Use of earth observation-derived hydrometeorological variables to model and predict rotavirus infection (MAL-ED): a multisite cohort study

BACKGROUND: Climate change threatens to undermine recent progress in reducing global deaths from diarrhoeal disease in children. However, the scarcity of evidence about how individual environmental factors affect transmission of specific pathogens makes prediction of trends under different climate s...

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Autores principales: Colston, Josh M, Zaitchik, Benjamin, Kang, Gagandeep, Peñataro Yori, Pablo, Ahmed, Tahmeed, Lima, Aldo, Turab, Ali, Mduma, Esto, Sunder Shrestha, Prakash, Bessong, Pascal, Peng, Roger D, Black, Robert E, Moulton, Lawrence H, Kosek, Margaret N
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier B.V 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6650544/
https://www.ncbi.nlm.nih.gov/pubmed/31229000
http://dx.doi.org/10.1016/S2542-5196(19)30084-1
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author Colston, Josh M
Zaitchik, Benjamin
Kang, Gagandeep
Peñataro Yori, Pablo
Ahmed, Tahmeed
Lima, Aldo
Turab, Ali
Mduma, Esto
Sunder Shrestha, Prakash
Bessong, Pascal
Peng, Roger D
Black, Robert E
Moulton, Lawrence H
Kosek, Margaret N
author_facet Colston, Josh M
Zaitchik, Benjamin
Kang, Gagandeep
Peñataro Yori, Pablo
Ahmed, Tahmeed
Lima, Aldo
Turab, Ali
Mduma, Esto
Sunder Shrestha, Prakash
Bessong, Pascal
Peng, Roger D
Black, Robert E
Moulton, Lawrence H
Kosek, Margaret N
author_sort Colston, Josh M
collection PubMed
description BACKGROUND: Climate change threatens to undermine recent progress in reducing global deaths from diarrhoeal disease in children. However, the scarcity of evidence about how individual environmental factors affect transmission of specific pathogens makes prediction of trends under different climate scenarios challenging. We aimed to model associations between daily estimates of a suite of hydrometeorological variables and rotavirus infection status ascertained through community-based surveillance. METHODS: For this analysis of multisite cohort data, rotavirus infection status was ascertained through community-based surveillance of infants in the eight-site MAL-ED cohort study, and matched by date with earth observation estimates of nine hydrometeorological variables from the Global Land Data Assimilation System: daily total precipitation volume (mm), daily total surface runoff (mm), surface pressure (mbar), wind speed (m/s), relative humidity (%), soil moisture (%), solar radiation (W/m(2)), specific humidity (kg/kg), and average daily temperatures (°C). Lag relationships, independent effects, and interactions were characterised by use of modified Poisson models and compared with and without adjustment for seasonality and between-site variation. Final models were created with stepwise selection of main effects and interactions and their validity assessed by excluding each site in turn and calculating Tjur's Coefficients of Determination. FINDINGS: All nine hydrometeorological variables were significantly associated with rotavirus infection after adjusting for seasonality and between-site variation over multiple consecutive or non-consecutive lags, showing complex, often non-linear associations that differed by symptom status and showed considerable mutual interaction. The final models explained 5·9% to 6·2% of the variability in rotavirus infection in the pooled data and their predictions explained between 0·0% and 14·1% of the variability at individual study sites. INTERPRETATION: These results suggest that the effect of climate on rotavirus transmission was mediated by four independent mechanisms: waterborne dispersal, airborne dispersal, virus survival on soil and surfaces, and host factors. Earth observation data products available at a global scale and at subdaily resolution can be combined with longitudinal surveillance data to test hypotheses about routes and drivers of transmission but showed little potential for making predictions in this setting. FUNDING: Bill & Melinda Gates Foundation; Foundation for the National Institutes of Health, National Institutes of Health, Fogarty International Center; Sherrilyn and Ken Fisher Center for Environmental Infectious Diseases, Johns Hopkins School of Medicine; and NASA's Group on Earth Observations Work Programme.
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spelling pubmed-66505442019-07-31 Use of earth observation-derived hydrometeorological variables to model and predict rotavirus infection (MAL-ED): a multisite cohort study Colston, Josh M Zaitchik, Benjamin Kang, Gagandeep Peñataro Yori, Pablo Ahmed, Tahmeed Lima, Aldo Turab, Ali Mduma, Esto Sunder Shrestha, Prakash Bessong, Pascal Peng, Roger D Black, Robert E Moulton, Lawrence H Kosek, Margaret N Lancet Planet Health Article BACKGROUND: Climate change threatens to undermine recent progress in reducing global deaths from diarrhoeal disease in children. However, the scarcity of evidence about how individual environmental factors affect transmission of specific pathogens makes prediction of trends under different climate scenarios challenging. We aimed to model associations between daily estimates of a suite of hydrometeorological variables and rotavirus infection status ascertained through community-based surveillance. METHODS: For this analysis of multisite cohort data, rotavirus infection status was ascertained through community-based surveillance of infants in the eight-site MAL-ED cohort study, and matched by date with earth observation estimates of nine hydrometeorological variables from the Global Land Data Assimilation System: daily total precipitation volume (mm), daily total surface runoff (mm), surface pressure (mbar), wind speed (m/s), relative humidity (%), soil moisture (%), solar radiation (W/m(2)), specific humidity (kg/kg), and average daily temperatures (°C). Lag relationships, independent effects, and interactions were characterised by use of modified Poisson models and compared with and without adjustment for seasonality and between-site variation. Final models were created with stepwise selection of main effects and interactions and their validity assessed by excluding each site in turn and calculating Tjur's Coefficients of Determination. FINDINGS: All nine hydrometeorological variables were significantly associated with rotavirus infection after adjusting for seasonality and between-site variation over multiple consecutive or non-consecutive lags, showing complex, often non-linear associations that differed by symptom status and showed considerable mutual interaction. The final models explained 5·9% to 6·2% of the variability in rotavirus infection in the pooled data and their predictions explained between 0·0% and 14·1% of the variability at individual study sites. INTERPRETATION: These results suggest that the effect of climate on rotavirus transmission was mediated by four independent mechanisms: waterborne dispersal, airborne dispersal, virus survival on soil and surfaces, and host factors. Earth observation data products available at a global scale and at subdaily resolution can be combined with longitudinal surveillance data to test hypotheses about routes and drivers of transmission but showed little potential for making predictions in this setting. FUNDING: Bill & Melinda Gates Foundation; Foundation for the National Institutes of Health, National Institutes of Health, Fogarty International Center; Sherrilyn and Ken Fisher Center for Environmental Infectious Diseases, Johns Hopkins School of Medicine; and NASA's Group on Earth Observations Work Programme. Elsevier B.V 2019-06 /pmc/articles/PMC6650544/ /pubmed/31229000 http://dx.doi.org/10.1016/S2542-5196(19)30084-1 Text en © 2019 The Author(s). Published by Elsevier Ltd. This is an Open Access article under the CC BY 4.0 license http://creativecommons.org/licenses/by/4.0/ This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Colston, Josh M
Zaitchik, Benjamin
Kang, Gagandeep
Peñataro Yori, Pablo
Ahmed, Tahmeed
Lima, Aldo
Turab, Ali
Mduma, Esto
Sunder Shrestha, Prakash
Bessong, Pascal
Peng, Roger D
Black, Robert E
Moulton, Lawrence H
Kosek, Margaret N
Use of earth observation-derived hydrometeorological variables to model and predict rotavirus infection (MAL-ED): a multisite cohort study
title Use of earth observation-derived hydrometeorological variables to model and predict rotavirus infection (MAL-ED): a multisite cohort study
title_full Use of earth observation-derived hydrometeorological variables to model and predict rotavirus infection (MAL-ED): a multisite cohort study
title_fullStr Use of earth observation-derived hydrometeorological variables to model and predict rotavirus infection (MAL-ED): a multisite cohort study
title_full_unstemmed Use of earth observation-derived hydrometeorological variables to model and predict rotavirus infection (MAL-ED): a multisite cohort study
title_short Use of earth observation-derived hydrometeorological variables to model and predict rotavirus infection (MAL-ED): a multisite cohort study
title_sort use of earth observation-derived hydrometeorological variables to model and predict rotavirus infection (mal-ed): a multisite cohort study
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6650544/
https://www.ncbi.nlm.nih.gov/pubmed/31229000
http://dx.doi.org/10.1016/S2542-5196(19)30084-1
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