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Mapping malaria seasonality in Madagascar using health facility data

BACKGROUND: Many malaria-endemic areas experience seasonal fluctuations in case incidence as Anopheles mosquito and Plasmodium parasite life cycles respond to changing environmental conditions. Identifying location-specific seasonality characteristics is useful for planning interventions. While most...

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Autores principales: Nguyen, Michele, Howes, Rosalind E., Lucas, Tim C.D., Battle, Katherine E., Cameron, Ewan, Gibson, Harry S., Rozier, Jennifer, Keddie, Suzanne, Collins, Emma, Arambepola, Rohan, Kang, Su Yun, Hendriks, Chantal, Nandi, Anita, Rumisha, Susan F., Bhatt, Samir, Mioramalala, Sedera A., Nambinisoa, Mauricette Andriamananjara, Rakotomanana, Fanjasoa, Gething, Peter W., Weiss, Daniel J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7008536/
https://www.ncbi.nlm.nih.gov/pubmed/32036785
http://dx.doi.org/10.1186/s12916-019-1486-3
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author Nguyen, Michele
Howes, Rosalind E.
Lucas, Tim C.D.
Battle, Katherine E.
Cameron, Ewan
Gibson, Harry S.
Rozier, Jennifer
Keddie, Suzanne
Collins, Emma
Arambepola, Rohan
Kang, Su Yun
Hendriks, Chantal
Nandi, Anita
Rumisha, Susan F.
Bhatt, Samir
Mioramalala, Sedera A.
Nambinisoa, Mauricette Andriamananjara
Rakotomanana, Fanjasoa
Gething, Peter W.
Weiss, Daniel J.
author_facet Nguyen, Michele
Howes, Rosalind E.
Lucas, Tim C.D.
Battle, Katherine E.
Cameron, Ewan
Gibson, Harry S.
Rozier, Jennifer
Keddie, Suzanne
Collins, Emma
Arambepola, Rohan
Kang, Su Yun
Hendriks, Chantal
Nandi, Anita
Rumisha, Susan F.
Bhatt, Samir
Mioramalala, Sedera A.
Nambinisoa, Mauricette Andriamananjara
Rakotomanana, Fanjasoa
Gething, Peter W.
Weiss, Daniel J.
author_sort Nguyen, Michele
collection PubMed
description BACKGROUND: Many malaria-endemic areas experience seasonal fluctuations in case incidence as Anopheles mosquito and Plasmodium parasite life cycles respond to changing environmental conditions. Identifying location-specific seasonality characteristics is useful for planning interventions. While most existing maps of malaria seasonality use fixed thresholds of rainfall, temperature, and/or vegetation indices to identify suitable transmission months, we construct a statistical modelling framework for characterising the seasonal patterns derived directly from monthly health facility data. METHODS: With data from 2669 of the 3247 health facilities in Madagascar, a spatiotemporal regression model was used to estimate seasonal patterns across the island. In the absence of catchment population estimates or the ability to aggregate to the district level, this focused on the monthly proportions of total annual cases by health facility level. The model was informed by dynamic environmental covariates known to directly influence seasonal malaria trends. To identify operationally relevant characteristics such as the transmission start months and associated uncertainty measures, an algorithm was developed and applied to model realisations. A seasonality index was used to incorporate burden information from household prevalence surveys and summarise ‘how seasonal’ locations are relative to their surroundings. RESULTS: Positive associations were detected between monthly case proportions and temporally lagged covariates of rainfall and temperature suitability. Consistent with the existing literature, model estimates indicate that while most parts of Madagascar experience peaks in malaria transmission near March–April, the eastern coast experiences an earlier peak around February. Transmission was estimated to start in southeast districts before southwest districts, suggesting that indoor residual spraying should be completed in the same order. In regions where the data suggested conflicting seasonal signals or two transmission seasons, estimates of seasonal features had larger deviations and therefore less certainty. CONCLUSIONS: Monthly health facility data can be used to establish seasonal patterns in malaria burden and augment the information provided by household prevalence surveys. The proposed modelling framework allows for evidence-based and cohesive inferences on location-specific seasonal characteristics. As health surveillance systems continue to improve, it is hoped that more of such data will be available to improve our understanding and planning of intervention strategies.
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spelling pubmed-70085362020-02-13 Mapping malaria seasonality in Madagascar using health facility data Nguyen, Michele Howes, Rosalind E. Lucas, Tim C.D. Battle, Katherine E. Cameron, Ewan Gibson, Harry S. Rozier, Jennifer Keddie, Suzanne Collins, Emma Arambepola, Rohan Kang, Su Yun Hendriks, Chantal Nandi, Anita Rumisha, Susan F. Bhatt, Samir Mioramalala, Sedera A. Nambinisoa, Mauricette Andriamananjara Rakotomanana, Fanjasoa Gething, Peter W. Weiss, Daniel J. BMC Med Research Article BACKGROUND: Many malaria-endemic areas experience seasonal fluctuations in case incidence as Anopheles mosquito and Plasmodium parasite life cycles respond to changing environmental conditions. Identifying location-specific seasonality characteristics is useful for planning interventions. While most existing maps of malaria seasonality use fixed thresholds of rainfall, temperature, and/or vegetation indices to identify suitable transmission months, we construct a statistical modelling framework for characterising the seasonal patterns derived directly from monthly health facility data. METHODS: With data from 2669 of the 3247 health facilities in Madagascar, a spatiotemporal regression model was used to estimate seasonal patterns across the island. In the absence of catchment population estimates or the ability to aggregate to the district level, this focused on the monthly proportions of total annual cases by health facility level. The model was informed by dynamic environmental covariates known to directly influence seasonal malaria trends. To identify operationally relevant characteristics such as the transmission start months and associated uncertainty measures, an algorithm was developed and applied to model realisations. A seasonality index was used to incorporate burden information from household prevalence surveys and summarise ‘how seasonal’ locations are relative to their surroundings. RESULTS: Positive associations were detected between monthly case proportions and temporally lagged covariates of rainfall and temperature suitability. Consistent with the existing literature, model estimates indicate that while most parts of Madagascar experience peaks in malaria transmission near March–April, the eastern coast experiences an earlier peak around February. Transmission was estimated to start in southeast districts before southwest districts, suggesting that indoor residual spraying should be completed in the same order. In regions where the data suggested conflicting seasonal signals or two transmission seasons, estimates of seasonal features had larger deviations and therefore less certainty. CONCLUSIONS: Monthly health facility data can be used to establish seasonal patterns in malaria burden and augment the information provided by household prevalence surveys. The proposed modelling framework allows for evidence-based and cohesive inferences on location-specific seasonal characteristics. As health surveillance systems continue to improve, it is hoped that more of such data will be available to improve our understanding and planning of intervention strategies. BioMed Central 2020-02-10 /pmc/articles/PMC7008536/ /pubmed/32036785 http://dx.doi.org/10.1186/s12916-019-1486-3 Text en © The Author(s) 2020 Open Access This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver(http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.
spellingShingle Research Article
Nguyen, Michele
Howes, Rosalind E.
Lucas, Tim C.D.
Battle, Katherine E.
Cameron, Ewan
Gibson, Harry S.
Rozier, Jennifer
Keddie, Suzanne
Collins, Emma
Arambepola, Rohan
Kang, Su Yun
Hendriks, Chantal
Nandi, Anita
Rumisha, Susan F.
Bhatt, Samir
Mioramalala, Sedera A.
Nambinisoa, Mauricette Andriamananjara
Rakotomanana, Fanjasoa
Gething, Peter W.
Weiss, Daniel J.
Mapping malaria seasonality in Madagascar using health facility data
title Mapping malaria seasonality in Madagascar using health facility data
title_full Mapping malaria seasonality in Madagascar using health facility data
title_fullStr Mapping malaria seasonality in Madagascar using health facility data
title_full_unstemmed Mapping malaria seasonality in Madagascar using health facility data
title_short Mapping malaria seasonality in Madagascar using health facility data
title_sort mapping malaria seasonality in madagascar using health facility data
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7008536/
https://www.ncbi.nlm.nih.gov/pubmed/32036785
http://dx.doi.org/10.1186/s12916-019-1486-3
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