Bayesian spatiotemporal analysis of malaria infection along an international border: Hlaingbwe Township in Myanmar and Tha-Song-Yang District in Thailand

© 2018 The Author(s). Background: One challenge in moving towards malaria elimination is cross-border malaria infection. The implemented measures to prevent and control malaria re-introduction across the demarcation line between two countries require intensive analyses and interpretation of data fro...

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Main Authors: Aung Minn Thway, Chawarat Rotejanaprasert, Jetsumon Sattabongkot, Siam Lawawirojwong, Aung Thi, Tin Maung Hlaing, Thiha Myint Soe, Jaranit Kaewkungwal
Other Authors: Mahidol University
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Published: 2019
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Online Access:https://repository.li.mahidol.ac.th/handle/123456789/45943
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spelling th-mahidol.459432019-08-23T18:36:08Z Bayesian spatiotemporal analysis of malaria infection along an international border: Hlaingbwe Township in Myanmar and Tha-Song-Yang District in Thailand Aung Minn Thway Chawarat Rotejanaprasert Jetsumon Sattabongkot Siam Lawawirojwong Aung Thi Tin Maung Hlaing Thiha Myint Soe Jaranit Kaewkungwal Mahidol University Defence Services Medical Research Centre National Malaria Control Program Geo-Informatics and Space Technology Development Agency Immunology and Microbiology Medicine © 2018 The Author(s). Background: One challenge in moving towards malaria elimination is cross-border malaria infection. The implemented measures to prevent and control malaria re-introduction across the demarcation line between two countries require intensive analyses and interpretation of data from both sides, particularly in border areas, to make correct and timely decisions. Reliable maps of projected malaria distribution can help to direct intervention strategies. In this study, a Bayesian spatiotemporal analytic model was proposed for analysing and generating aggregated malaria risk maps based on the exceedance probability of malaria infection in the township-district adjacent to the border between Myanmar and Thailand. Data of individual malaria cases in Hlaingbwe Township and Tha-Song-Yang District during 2016 were extracted from routine malaria surveillance databases. Bayesian zero-inflated Poisson model was developed to identify spatial and temporal distributions and associations between malaria infections and risk factors. Maps of the descriptive statistics and posterior distribution of predicted malaria infections were also developed. Results: A similar seasonal pattern of malaria was observed in both Hlaingbwe Township and Tha-Song-Yang District during the rainy season. The analytic model indicated more cases of malaria among males and individuals aged ≥ 15 years. Mapping of aggregated risk revealed consistently high or low probabilities of malaria infection in certain village tracts or villages in interior parts of each country, with higher probability in village tracts/villages adjacent to the border in places where it could easily be crossed; some border locations with high mountains or dense forests appeared to have fewer malaria cases. The probability of becoming a hotspot cluster varied among village tracts/villages over the year, and some had close to no cases all year. Conclusions: The analytic model developed in this study could be used for assessing the probability of hotspot cluster, which would be beneficial for setting priorities and timely preventive actions in such hotspot cluster areas. This approach might help to accelerate reaching the common goal of malaria elimination in the two countries. 2019-08-23T11:16:27Z 2019-08-23T11:16:27Z 2018-11-16 Article Malaria Journal. Vol.17, No.1 (2018) 10.1186/s12936-018-2574-0 14752875 2-s2.0-85056708764 https://repository.li.mahidol.ac.th/handle/123456789/45943 Mahidol University SCOPUS https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85056708764&origin=inward
institution Mahidol University
building Mahidol University Library
continent Asia
country Thailand
Thailand
content_provider Mahidol University Library
collection Mahidol University Institutional Repository
topic Immunology and Microbiology
Medicine
spellingShingle Immunology and Microbiology
Medicine
Aung Minn Thway
Chawarat Rotejanaprasert
Jetsumon Sattabongkot
Siam Lawawirojwong
Aung Thi
Tin Maung Hlaing
Thiha Myint Soe
Jaranit Kaewkungwal
Bayesian spatiotemporal analysis of malaria infection along an international border: Hlaingbwe Township in Myanmar and Tha-Song-Yang District in Thailand
description © 2018 The Author(s). Background: One challenge in moving towards malaria elimination is cross-border malaria infection. The implemented measures to prevent and control malaria re-introduction across the demarcation line between two countries require intensive analyses and interpretation of data from both sides, particularly in border areas, to make correct and timely decisions. Reliable maps of projected malaria distribution can help to direct intervention strategies. In this study, a Bayesian spatiotemporal analytic model was proposed for analysing and generating aggregated malaria risk maps based on the exceedance probability of malaria infection in the township-district adjacent to the border between Myanmar and Thailand. Data of individual malaria cases in Hlaingbwe Township and Tha-Song-Yang District during 2016 were extracted from routine malaria surveillance databases. Bayesian zero-inflated Poisson model was developed to identify spatial and temporal distributions and associations between malaria infections and risk factors. Maps of the descriptive statistics and posterior distribution of predicted malaria infections were also developed. Results: A similar seasonal pattern of malaria was observed in both Hlaingbwe Township and Tha-Song-Yang District during the rainy season. The analytic model indicated more cases of malaria among males and individuals aged ≥ 15 years. Mapping of aggregated risk revealed consistently high or low probabilities of malaria infection in certain village tracts or villages in interior parts of each country, with higher probability in village tracts/villages adjacent to the border in places where it could easily be crossed; some border locations with high mountains or dense forests appeared to have fewer malaria cases. The probability of becoming a hotspot cluster varied among village tracts/villages over the year, and some had close to no cases all year. Conclusions: The analytic model developed in this study could be used for assessing the probability of hotspot cluster, which would be beneficial for setting priorities and timely preventive actions in such hotspot cluster areas. This approach might help to accelerate reaching the common goal of malaria elimination in the two countries.
author2 Mahidol University
author_facet Mahidol University
Aung Minn Thway
Chawarat Rotejanaprasert
Jetsumon Sattabongkot
Siam Lawawirojwong
Aung Thi
Tin Maung Hlaing
Thiha Myint Soe
Jaranit Kaewkungwal
format Article
author Aung Minn Thway
Chawarat Rotejanaprasert
Jetsumon Sattabongkot
Siam Lawawirojwong
Aung Thi
Tin Maung Hlaing
Thiha Myint Soe
Jaranit Kaewkungwal
author_sort Aung Minn Thway
title Bayesian spatiotemporal analysis of malaria infection along an international border: Hlaingbwe Township in Myanmar and Tha-Song-Yang District in Thailand
title_short Bayesian spatiotemporal analysis of malaria infection along an international border: Hlaingbwe Township in Myanmar and Tha-Song-Yang District in Thailand
title_full Bayesian spatiotemporal analysis of malaria infection along an international border: Hlaingbwe Township in Myanmar and Tha-Song-Yang District in Thailand
title_fullStr Bayesian spatiotemporal analysis of malaria infection along an international border: Hlaingbwe Township in Myanmar and Tha-Song-Yang District in Thailand
title_full_unstemmed Bayesian spatiotemporal analysis of malaria infection along an international border: Hlaingbwe Township in Myanmar and Tha-Song-Yang District in Thailand
title_sort bayesian spatiotemporal analysis of malaria infection along an international border: hlaingbwe township in myanmar and tha-song-yang district in thailand
publishDate 2019
url https://repository.li.mahidol.ac.th/handle/123456789/45943
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