Spatial prediction of Plasmodium falciparum prevalence in Somalia

Background: Maps of malaria distribution are vital for optimal allocation of resources for anti-malarial activities. There is a lack of reliable contemporary malaria maps in endemic countries in sub-Saharan Africa. This problem is particularly acute in low malaria transmission countries such as thos...

全面介绍

书目详细资料
Main Authors: Noor, A, Clements, A, Gething, P, Moloney, G, Borle, M, Shewchuk, T, Hay, S, Snow, R
格式: Journal article
语言:English
出版: BioMed Central 2008
主题:
_version_ 1826301520971300864
author Noor, A
Clements, A
Gething, P
Moloney, G
Borle, M
Shewchuk, T
Hay, S
Snow, R
author_facet Noor, A
Clements, A
Gething, P
Moloney, G
Borle, M
Shewchuk, T
Hay, S
Snow, R
author_sort Noor, A
collection OXFORD
description Background: Maps of malaria distribution are vital for optimal allocation of resources for anti-malarial activities. There is a lack of reliable contemporary malaria maps in endemic countries in sub-Saharan Africa. This problem is particularly acute in low malaria transmission countries such as those located in the horn of Africa. Methods: Data from a national malaria cluster sample survey in 2005 and routine cluster surveys in 2007 were assembled for Somalia. Rapid diagnostic tests were used to examine the presence of Plasmodium falciparum parasites in finger-prick blood samples obtained from individuals across all age-groups. Bayesian geostatistical models, with environmental and survey covariates, were used to predict continuous maps of malaria prevalence across Somalia and to define the uncertainty associated with the predictions. Results: For analyses the country was divided into north and south. In the north, the month of survey, distance to water, precipitation and temperature had no significant association with P. falciparum prevalence when spatial correlation was taken into account. In contrast, all the covariates, except distance to water, were significantly associated with parasite prevalence in the south. The inclusion of covariates improved model fit for the south but not for the north. Model precision was highest in the south. The majority of the country had predicted prevalence of < 5%; areas with ≥ 5% prevalence were predominantly in the south. Conclusion: The maps showed that malaria transmission in Somalia varied from hypo- to meso-endemic. However, even after including the selected covariates in the model, there still remained a considerable amount of unexplained spatial variation in parasite prevalence, indicating efforts of other factors not captured in the study. Nonetheless the maps presented here provide the best contemporary information on malaria prevalence in Somalia.
first_indexed 2024-03-07T05:33:42Z
format Journal article
id oxford-uuid:e3247aa2-10b1-4c66-a9ef-189afffc96a2
institution University of Oxford
language English
last_indexed 2024-03-07T05:33:42Z
publishDate 2008
publisher BioMed Central
record_format dspace
spelling oxford-uuid:e3247aa2-10b1-4c66-a9ef-189afffc96a22022-03-27T10:06:52ZSpatial prediction of Plasmodium falciparum prevalence in SomaliaJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:e3247aa2-10b1-4c66-a9ef-189afffc96a2Tropical medicineEpidemiologyMalariaEnglishOxford University Research Archive - ValetBioMed Central2008Noor, AClements, AGething, PMoloney, GBorle, MShewchuk, THay, SSnow, RBackground: Maps of malaria distribution are vital for optimal allocation of resources for anti-malarial activities. There is a lack of reliable contemporary malaria maps in endemic countries in sub-Saharan Africa. This problem is particularly acute in low malaria transmission countries such as those located in the horn of Africa. Methods: Data from a national malaria cluster sample survey in 2005 and routine cluster surveys in 2007 were assembled for Somalia. Rapid diagnostic tests were used to examine the presence of Plasmodium falciparum parasites in finger-prick blood samples obtained from individuals across all age-groups. Bayesian geostatistical models, with environmental and survey covariates, were used to predict continuous maps of malaria prevalence across Somalia and to define the uncertainty associated with the predictions. Results: For analyses the country was divided into north and south. In the north, the month of survey, distance to water, precipitation and temperature had no significant association with P. falciparum prevalence when spatial correlation was taken into account. In contrast, all the covariates, except distance to water, were significantly associated with parasite prevalence in the south. The inclusion of covariates improved model fit for the south but not for the north. Model precision was highest in the south. The majority of the country had predicted prevalence of < 5%; areas with ≥ 5% prevalence were predominantly in the south. Conclusion: The maps showed that malaria transmission in Somalia varied from hypo- to meso-endemic. However, even after including the selected covariates in the model, there still remained a considerable amount of unexplained spatial variation in parasite prevalence, indicating efforts of other factors not captured in the study. Nonetheless the maps presented here provide the best contemporary information on malaria prevalence in Somalia.
spellingShingle Tropical medicine
Epidemiology
Malaria
Noor, A
Clements, A
Gething, P
Moloney, G
Borle, M
Shewchuk, T
Hay, S
Snow, R
Spatial prediction of Plasmodium falciparum prevalence in Somalia
title Spatial prediction of Plasmodium falciparum prevalence in Somalia
title_full Spatial prediction of Plasmodium falciparum prevalence in Somalia
title_fullStr Spatial prediction of Plasmodium falciparum prevalence in Somalia
title_full_unstemmed Spatial prediction of Plasmodium falciparum prevalence in Somalia
title_short Spatial prediction of Plasmodium falciparum prevalence in Somalia
title_sort spatial prediction of plasmodium falciparum prevalence in somalia
topic Tropical medicine
Epidemiology
Malaria
work_keys_str_mv AT noora spatialpredictionofplasmodiumfalciparumprevalenceinsomalia
AT clementsa spatialpredictionofplasmodiumfalciparumprevalenceinsomalia
AT gethingp spatialpredictionofplasmodiumfalciparumprevalenceinsomalia
AT moloneyg spatialpredictionofplasmodiumfalciparumprevalenceinsomalia
AT borlem spatialpredictionofplasmodiumfalciparumprevalenceinsomalia
AT shewchukt spatialpredictionofplasmodiumfalciparumprevalenceinsomalia
AT hays spatialpredictionofplasmodiumfalciparumprevalenceinsomalia
AT snowr spatialpredictionofplasmodiumfalciparumprevalenceinsomalia