Characterizing local-scale heterogeneity of malaria risk: a case study in Bunkpurugu-Yunyoo district in northern Ghana

Abstract Background Bayesian methods have been used to generate country-level and global maps of malaria prevalence. With increasing availability of detailed malaria surveillance data, these methodologies can also be used to identify fine-scale heterogeneity of malaria parasitaemia for operational p...

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Main Authors: Punam Amratia, Paul Psychas, Benjamin Abuaku, Collins Ahorlu, Justin Millar, Samuel Oppong, Kwadwo Koram, Denis Valle
Format: Article
Language:English
Published: BMC 2019-03-01
Series:Malaria Journal
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12936-019-2703-4
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spelling doaj-0d65b61f6a124854a7db00d8094e32c12020-11-25T02:56:33ZengBMCMalaria Journal1475-28752019-03-0118111410.1186/s12936-019-2703-4Characterizing local-scale heterogeneity of malaria risk: a case study in Bunkpurugu-Yunyoo district in northern GhanaPunam Amratia0Paul Psychas1Benjamin Abuaku2Collins Ahorlu3Justin Millar4Samuel Oppong5Kwadwo Koram6Denis Valle7School of Forest Resources and Conservation, University of FloridaEmerging Pathogens Institute, University of FloridaNoguchi Memorial Institute for Medical Research, University of GhanaNoguchi Memorial Institute for Medical Research, University of GhanaSchool of Forest Resources and Conservation, University of FloridaNational Malaria Control ProgrammeNoguchi Memorial Institute for Medical Research, University of GhanaSchool of Forest Resources and Conservation, University of FloridaAbstract Background Bayesian methods have been used to generate country-level and global maps of malaria prevalence. With increasing availability of detailed malaria surveillance data, these methodologies can also be used to identify fine-scale heterogeneity of malaria parasitaemia for operational prevention and control of malaria. Methods In this article, a Bayesian geostatistical model was applied to six malaria parasitaemia surveys conducted during rainy and dry seasons between November 2010 and 2013 to characterize the micro-scale spatial heterogeneity of malaria risk in northern Ghana. Results The geostatistical model showed substantial spatial heterogeneity, with malaria parasite prevalence varying between 19 and 90%, and revealing a northeast to southwest gradient of predicted risk. The spatial distribution of prevalence was heavily influenced by two modest urban centres, with a substantially lower prevalence in urban centres compared to rural areas. Although strong seasonal variations were observed, spatial malaria prevalence patterns did not change substantially from year to year. Furthermore, independent surveillance data suggested that the model had a relatively good predictive performance when extrapolated to a neighbouring district. Conclusions This high variability in malaria prevalence is striking, given that this small area (approximately 30 km × 40 km) was purportedly homogeneous based on country-level spatial analysis, suggesting that fine-scale parasitaemia data might be critical to guide district-level programmatic efforts to prevent and control malaria. Extrapolations results suggest that fine-scale parasitaemia data can be useful for spatial predictions in neighbouring unsampled districts and does not have to be collected every year to aid district-level operations, helping to alleviate concerns regarding the cost of fine-scale data collection.http://link.springer.com/article/10.1186/s12936-019-2703-4MalariaBayesianFine-scaleGeostatisticalGhana
collection DOAJ
language English
format Article
sources DOAJ
author Punam Amratia
Paul Psychas
Benjamin Abuaku
Collins Ahorlu
Justin Millar
Samuel Oppong
Kwadwo Koram
Denis Valle
spellingShingle Punam Amratia
Paul Psychas
Benjamin Abuaku
Collins Ahorlu
Justin Millar
Samuel Oppong
Kwadwo Koram
Denis Valle
Characterizing local-scale heterogeneity of malaria risk: a case study in Bunkpurugu-Yunyoo district in northern Ghana
Malaria Journal
Malaria
Bayesian
Fine-scale
Geostatistical
Ghana
author_facet Punam Amratia
Paul Psychas
Benjamin Abuaku
Collins Ahorlu
Justin Millar
Samuel Oppong
Kwadwo Koram
Denis Valle
author_sort Punam Amratia
title Characterizing local-scale heterogeneity of malaria risk: a case study in Bunkpurugu-Yunyoo district in northern Ghana
title_short Characterizing local-scale heterogeneity of malaria risk: a case study in Bunkpurugu-Yunyoo district in northern Ghana
title_full Characterizing local-scale heterogeneity of malaria risk: a case study in Bunkpurugu-Yunyoo district in northern Ghana
title_fullStr Characterizing local-scale heterogeneity of malaria risk: a case study in Bunkpurugu-Yunyoo district in northern Ghana
title_full_unstemmed Characterizing local-scale heterogeneity of malaria risk: a case study in Bunkpurugu-Yunyoo district in northern Ghana
title_sort characterizing local-scale heterogeneity of malaria risk: a case study in bunkpurugu-yunyoo district in northern ghana
publisher BMC
series Malaria Journal
issn 1475-2875
publishDate 2019-03-01
description Abstract Background Bayesian methods have been used to generate country-level and global maps of malaria prevalence. With increasing availability of detailed malaria surveillance data, these methodologies can also be used to identify fine-scale heterogeneity of malaria parasitaemia for operational prevention and control of malaria. Methods In this article, a Bayesian geostatistical model was applied to six malaria parasitaemia surveys conducted during rainy and dry seasons between November 2010 and 2013 to characterize the micro-scale spatial heterogeneity of malaria risk in northern Ghana. Results The geostatistical model showed substantial spatial heterogeneity, with malaria parasite prevalence varying between 19 and 90%, and revealing a northeast to southwest gradient of predicted risk. The spatial distribution of prevalence was heavily influenced by two modest urban centres, with a substantially lower prevalence in urban centres compared to rural areas. Although strong seasonal variations were observed, spatial malaria prevalence patterns did not change substantially from year to year. Furthermore, independent surveillance data suggested that the model had a relatively good predictive performance when extrapolated to a neighbouring district. Conclusions This high variability in malaria prevalence is striking, given that this small area (approximately 30 km × 40 km) was purportedly homogeneous based on country-level spatial analysis, suggesting that fine-scale parasitaemia data might be critical to guide district-level programmatic efforts to prevent and control malaria. Extrapolations results suggest that fine-scale parasitaemia data can be useful for spatial predictions in neighbouring unsampled districts and does not have to be collected every year to aid district-level operations, helping to alleviate concerns regarding the cost of fine-scale data collection.
topic Malaria
Bayesian
Fine-scale
Geostatistical
Ghana
url http://link.springer.com/article/10.1186/s12936-019-2703-4
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