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Spatio-temporal modelling of routine health facility data for malaria risk micro-stratification in mainland Tanzania

Thawer, S. G. and Golumbeanu, M. and Lazaro, S. and Chacky, F. and Munisi, K. and Aaron, S. and Molteni, F. and Lengeler, C. and Pothin, E. and Snow, R. W. and Alegana, V. A.. (2023) Spatio-temporal modelling of routine health facility data for malaria risk micro-stratification in mainland Tanzania. Sci Rep, 13. p. 10600.

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Official URL: https://edoc.unibas.ch/95323/

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Abstract

As malaria transmission declines, the need to monitor the heterogeneity of malaria risk at finer scales becomes critical to guide community-based targeted interventions. Although routine health facility (HF) data can provide epidemiological evidence at high spatial and temporal resolution, its incomplete nature of information can result in lower administrative units without empirical data. To overcome geographic sparsity of data and its representativeness, geo-spatial models can leverage routine information to predict risk in un-represented areas as well as estimate uncertainty of predictions. Here, a Bayesian spatio-temporal model was applied on malaria test positivity rate (TPR) data for the period 2017-2019 to predict risks at the ward level, the lowest decision-making unit in mainland Tanzania. To quantify the associated uncertainty, the probability of malaria TPR exceeding programmatic threshold was estimated. Results showed a marked spatial heterogeneity in malaria TPR across wards. 17.7 million people resided in areas where malaria TPR was high (>/= 30; 90% certainty) in the North-West and South-East parts of Tanzania. Approximately 11.7 million people lived in areas where malaria TPR was very low (< 5%; 90% certainty). HF data can be used to identify different epidemiological strata and guide malaria interventions at micro-planning units in Tanzania. These data, however, are imperfect in many settings in Africa and often require application of geo-spatial modelling techniques for estimation.
Faculties and Departments:09 Associated Institutions > Swiss Tropical and Public Health Institute (Swiss TPH) > Department of Epidemiology and Public Health (EPH) > Health Interventions > Malaria Interventions (Lengeler)
09 Associated Institutions > Swiss Tropical and Public Health Institute (Swiss TPH) > Department of Epidemiology and Public Health (EPH) > Health Interventions > Analytics and Intervention Modelling (Pothin)
UniBasel Contributors:Thawer, Sumaiyya and Golumbeanu, Monica and Molteni, Fabrizio and Lengeler, Christian and Pothin, Emilie
Item Type:Article, refereed
Article Subtype:Research Article
ISSN:2045-2322 (Electronic), 2045-2322 (Linking)
Note:Publication type according to Uni Basel Research Database: Journal article
Language:English
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Last Modified:24 Oct 2023 07:01
Deposited On:24 Oct 2023 07:01

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