Modelling malaria risk in East Africa at high-spatial resolution.

OBJECTIVES: Malaria risk maps have re-emerged as an important tool for appropriately targeting the limited resources available for malaria control. In Sub-Saharan Africa empirically derived maps using standardized criteria are few and this paper considers the development of a model of malaria risk...

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Główni autorzy: Omumbo, J, Hay, S, Snow, R, Tatem, A, Rogers, D
Format: Journal article
Język:English
Wydane: 2005
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author Omumbo, J
Hay, S
Snow, R
Tatem, A
Rogers, D
author_facet Omumbo, J
Hay, S
Snow, R
Tatem, A
Rogers, D
author_sort Omumbo, J
collection OXFORD
description OBJECTIVES: Malaria risk maps have re-emerged as an important tool for appropriately targeting the limited resources available for malaria control. In Sub-Saharan Africa empirically derived maps using standardized criteria are few and this paper considers the development of a model of malaria risk for East Africa. METHODS: Statistical techniques were applied to high spatial resolution remotely sensed, human settlement and land-use data to predict the intensity of malaria transmission as defined according to the childhood parasite ratio (PR) in East Africa. Discriminant analysis was used to train environmental and human settlement predictor variables to distinguish between four classes of PR risk shown to relate to disease outcomes in the region. RESULTS: Independent empirical estimates of the PR were identified from Kenya, Tanzania and Uganda (n = 330). Surrogate markers of climate recorded on-board earth orbiting satellites, population settlement, elevation and water bodies all contributed significantly to the predictive models of malaria transmission intensity in the sub-region. The accuracy of the model was increased by stratifying East Africa into two ecological zones. In addition, the inclusion of urbanization as a predictor of malaria prevalence, whilst reducing formal accuracy statistics, nevertheless improved the consistency of the predictive map with expert opinion malaria maps. The overall accuracy achieved with ecological zone and urban stratification was 62% with surrogates of precipitation and temperature being among the most discriminating predictors of the PR. CONCLUSIONS: It is possible to achieve a high degree of predictive accuracy for Plasmodium falciparum parasite prevalence in East Africa using high-spatial resolution environmental data. However, discrepancies were evident from mapped outputs from the models which were largely due to poor coverage of malaria training data and the comparable spatial resolution of predictor data. These deficiencies will only be addressed by more random, intensive small areas studies of empirical estimates of PR.
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spelling oxford-uuid:f5afd4ab-73ff-4f51-866e-1f0226d2f0d82022-03-27T12:29:05ZModelling malaria risk in East Africa at high-spatial resolution.Journal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:f5afd4ab-73ff-4f51-866e-1f0226d2f0d8EnglishSymplectic Elements at Oxford2005Omumbo, JHay, SSnow, RTatem, ARogers, D OBJECTIVES: Malaria risk maps have re-emerged as an important tool for appropriately targeting the limited resources available for malaria control. In Sub-Saharan Africa empirically derived maps using standardized criteria are few and this paper considers the development of a model of malaria risk for East Africa. METHODS: Statistical techniques were applied to high spatial resolution remotely sensed, human settlement and land-use data to predict the intensity of malaria transmission as defined according to the childhood parasite ratio (PR) in East Africa. Discriminant analysis was used to train environmental and human settlement predictor variables to distinguish between four classes of PR risk shown to relate to disease outcomes in the region. RESULTS: Independent empirical estimates of the PR were identified from Kenya, Tanzania and Uganda (n = 330). Surrogate markers of climate recorded on-board earth orbiting satellites, population settlement, elevation and water bodies all contributed significantly to the predictive models of malaria transmission intensity in the sub-region. The accuracy of the model was increased by stratifying East Africa into two ecological zones. In addition, the inclusion of urbanization as a predictor of malaria prevalence, whilst reducing formal accuracy statistics, nevertheless improved the consistency of the predictive map with expert opinion malaria maps. The overall accuracy achieved with ecological zone and urban stratification was 62% with surrogates of precipitation and temperature being among the most discriminating predictors of the PR. CONCLUSIONS: It is possible to achieve a high degree of predictive accuracy for Plasmodium falciparum parasite prevalence in East Africa using high-spatial resolution environmental data. However, discrepancies were evident from mapped outputs from the models which were largely due to poor coverage of malaria training data and the comparable spatial resolution of predictor data. These deficiencies will only be addressed by more random, intensive small areas studies of empirical estimates of PR.
spellingShingle Omumbo, J
Hay, S
Snow, R
Tatem, A
Rogers, D
Modelling malaria risk in East Africa at high-spatial resolution.
title Modelling malaria risk in East Africa at high-spatial resolution.
title_full Modelling malaria risk in East Africa at high-spatial resolution.
title_fullStr Modelling malaria risk in East Africa at high-spatial resolution.
title_full_unstemmed Modelling malaria risk in East Africa at high-spatial resolution.
title_short Modelling malaria risk in East Africa at high-spatial resolution.
title_sort modelling malaria risk in east africa at high spatial resolution
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AT hays modellingmalariariskineastafricaathighspatialresolution
AT snowr modellingmalariariskineastafricaathighspatialresolution
AT tatema modellingmalariariskineastafricaathighspatialresolution
AT rogersd modellingmalariariskineastafricaathighspatialresolution