Comparing field-collected versus remotely-sensed variables to model malaria risk in the highlands of western Uganda

Abstract Background Malaria risk is not uniform across relatively small geographic areas, such as within a village. This heterogeneity in risk is associated with factors including demographic characteristics, individual behaviours, home construction, and environmental conditions, the importance of w...

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التفاصيل البيبلوغرافية
الحاوية / القاعدة:Malaria Journal
المؤلفون الرئيسيون: Brandon D. Hollingsworth, Hilary Sandborn, Emmanuel Baguma, Emmanuel Ayebare, Moses Ntaro, Edgar M. Mulogo, Ross M. Boyce
التنسيق: مقال
اللغة:الإنجليزية
منشور في: BMC 2023-06-01
الموضوعات:
الوصول للمادة أونلاين:https://doi.org/10.1186/s12936-023-04628-w
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author Brandon D. Hollingsworth
Hilary Sandborn
Emmanuel Baguma
Emmanuel Ayebare
Moses Ntaro
Edgar M. Mulogo
Ross M. Boyce
author_facet Brandon D. Hollingsworth
Hilary Sandborn
Emmanuel Baguma
Emmanuel Ayebare
Moses Ntaro
Edgar M. Mulogo
Ross M. Boyce
author_sort Brandon D. Hollingsworth
collection DOAJ
container_title Malaria Journal
description Abstract Background Malaria risk is not uniform across relatively small geographic areas, such as within a village. This heterogeneity in risk is associated with factors including demographic characteristics, individual behaviours, home construction, and environmental conditions, the importance of which varies by setting, making prediction difficult. This study attempted to compare the ability of statistical models to predict malaria risk at the household level using either (i) free easily-obtained remotely-sensed data or (ii) results from a resource-intensive household survey. Methods The results of a household malaria survey conducted in 3 villages in western Uganda were combined with remotely-sensed environmental data to develop predictive models of two outcomes of interest (1) a positive ultrasensitive rapid diagnostic test (uRDT) and (2) inpatient admission for malaria within the last year. Generalized additive models were fit to each result using factors from the remotely-sensed data, the household survey, or a combination of both. Using a cross-validation approach, each model’s ability to predict malaria risk for out-of-sample households (OOS) and villages (OOV) was evaluated. Results Models fit using only environmental variables provided a better fit and higher OOS predictive power for uRDT result (AIC = 362, AUC = 0.736) and inpatient admission (AIC = 623, AUC = 0.672) compared to models using household variables (uRDT AIC = 376, Admission AIC = 644, uRDT AUC = 0.667, Admission AUC = 0.653). Combining the datasets did not result in a better fit or higher OOS predictive power for uRDT results (AIC = 367, AUC = 0.671), but did for inpatient admission (AIC = 615, AUC = 0.683). Household factors performed best when predicting OOV uRDT results (AUC = 0.596) and inpatient admission (AUC = 0.553), but not much better than a random classifier. Conclusions These results suggest that residual malaria risk is driven more by the external environment than home construction within the study area, possibly due to transmission regularly occurring outside of the home. Additionally, they suggest that when predicting malaria risk the benefit may not outweigh the high costs of attaining detailed information on household predictors. Instead, using remotely-sensed data provides an equally effective, cost-efficient alternative.
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spelling doaj-art-285f7ef8a7674d5489be519dbdfd2fec2025-08-19T20:01:45ZengBMCMalaria Journal1475-28752023-06-0122111110.1186/s12936-023-04628-wComparing field-collected versus remotely-sensed variables to model malaria risk in the highlands of western UgandaBrandon D. Hollingsworth0Hilary Sandborn1Emmanuel Baguma2Emmanuel Ayebare3Moses Ntaro4Edgar M. Mulogo5Ross M. Boyce6Department of Entomology, Cornell UniversityDepartment of Geography, University of North Carolina at Chapel HillDepartment of Community Health, Faculty of Medicine, Mbarara University of Science & TechnologyDepartment of Community Health, Faculty of Medicine, Mbarara University of Science & TechnologyDepartment of Community Health, Faculty of Medicine, Mbarara University of Science & TechnologyDepartment of Community Health, Faculty of Medicine, Mbarara University of Science & TechnologyInstitute for Global Health and Infectious Diseases, University of North Carolina at Chapel HillAbstract Background Malaria risk is not uniform across relatively small geographic areas, such as within a village. This heterogeneity in risk is associated with factors including demographic characteristics, individual behaviours, home construction, and environmental conditions, the importance of which varies by setting, making prediction difficult. This study attempted to compare the ability of statistical models to predict malaria risk at the household level using either (i) free easily-obtained remotely-sensed data or (ii) results from a resource-intensive household survey. Methods The results of a household malaria survey conducted in 3 villages in western Uganda were combined with remotely-sensed environmental data to develop predictive models of two outcomes of interest (1) a positive ultrasensitive rapid diagnostic test (uRDT) and (2) inpatient admission for malaria within the last year. Generalized additive models were fit to each result using factors from the remotely-sensed data, the household survey, or a combination of both. Using a cross-validation approach, each model’s ability to predict malaria risk for out-of-sample households (OOS) and villages (OOV) was evaluated. Results Models fit using only environmental variables provided a better fit and higher OOS predictive power for uRDT result (AIC = 362, AUC = 0.736) and inpatient admission (AIC = 623, AUC = 0.672) compared to models using household variables (uRDT AIC = 376, Admission AIC = 644, uRDT AUC = 0.667, Admission AUC = 0.653). Combining the datasets did not result in a better fit or higher OOS predictive power for uRDT results (AIC = 367, AUC = 0.671), but did for inpatient admission (AIC = 615, AUC = 0.683). Household factors performed best when predicting OOV uRDT results (AUC = 0.596) and inpatient admission (AUC = 0.553), but not much better than a random classifier. Conclusions These results suggest that residual malaria risk is driven more by the external environment than home construction within the study area, possibly due to transmission regularly occurring outside of the home. Additionally, they suggest that when predicting malaria risk the benefit may not outweigh the high costs of attaining detailed information on household predictors. Instead, using remotely-sensed data provides an equally effective, cost-efficient alternative.https://doi.org/10.1186/s12936-023-04628-wMalariaUgandaMicro-epidemiology
spellingShingle Brandon D. Hollingsworth
Hilary Sandborn
Emmanuel Baguma
Emmanuel Ayebare
Moses Ntaro
Edgar M. Mulogo
Ross M. Boyce
Comparing field-collected versus remotely-sensed variables to model malaria risk in the highlands of western Uganda
Malaria
Uganda
Micro-epidemiology
title Comparing field-collected versus remotely-sensed variables to model malaria risk in the highlands of western Uganda
title_full Comparing field-collected versus remotely-sensed variables to model malaria risk in the highlands of western Uganda
title_fullStr Comparing field-collected versus remotely-sensed variables to model malaria risk in the highlands of western Uganda
title_full_unstemmed Comparing field-collected versus remotely-sensed variables to model malaria risk in the highlands of western Uganda
title_short Comparing field-collected versus remotely-sensed variables to model malaria risk in the highlands of western Uganda
title_sort comparing field collected versus remotely sensed variables to model malaria risk in the highlands of western uganda
topic Malaria
Uganda
Micro-epidemiology
url https://doi.org/10.1186/s12936-023-04628-w
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