Bayesian spatio-temporal modeling and prediction of malaria cases in Tanzania mainland (2016-2023): unveiling associations with climate and intervention factors
Artikel i vetenskaplig tidskrift, 2025
Methods: The Standardized Incidence Ratio (SIR) was used to assess malaria risk distribution, while a Bayesian spatio-temporal model using integrated nested Laplace approximations (INLA) was employed to evaluate the impact of climatic factors and vector control interventions. The model accounted for spatial and temporal effects by using a Conditional Autoregressive (CAR) dependence structure and a random walk of order two (RW2). The analysis was categorized into two age groups, with a cut-off at 5 years.
Results: The study recorded a total of 23.4 million malaria cases in individuals aged 5 years and above, and 17.3 million cases in children under 5 years. The SIR and the model results identified regions with high malaria risk, and the model indicated that from 2016 to 2023, the malaria risk decreased by 11.0% for children under 5 years and by 10.0% for individuals aged at least 5 years. The use of long-lasting insecticide nets (LLINs) reduced the risk of malaria by 1.2% in children under 5 years and by 7.0% in individuals aged 5 years and above. Factors such as minimum temperature, wind speed, and high Normalized Difference Vegetation Index (NDVI) were associated with an increased malaria risk for both age groups. Relative humidity and maximum temperature, both lagged by two months, were associated with an increased malaria risk in children under 5 years, while maximum temperature lagged by one month was associated with increased malaria risk in individuals aged 5 years and above. Similarly, minimum temperature lagged by two and three months was associated with increased malaria risk in individuals aged 5 years and above and in children under 5 years, respectively. In addition, maximum temperature and wind speed lagged by one and three months were associated with decreased malaria risk in both groups.
Conclusion: The environmental factors identified in this study, alongside the spatial mapping, are critical for devising targeted malaria control strategies, especially in regions where LLINs have reduced transmission. These findings are essential for identifying high-risk areas in endemic regions and for prioritizing immediate interventions
Areal data
Spatio-temporal model
Tanzania Mainland
Integrated nested laplace approximations (INLA)
Random effects
Malaria cases
Standardized Incidence Ratio (SIR)
Författare
Lembris Laanyuni Njotto
University of Dar es Saalam
College of Business Education
Wilfred Senyoni
University of Dar es Saalam
Ottmar Cronie
Göteborgs universitet
Chalmers, Matematiska vetenskaper
Anna Sofie Stensgaard
Köpenhamns universitet
International Journal of Health Geographics
1476072x (eISSN)
Vol. 24 1 20Ämneskategorier (SSIF 2025)
Folkhälsovetenskap, global hälsa och socialmedicin
DOI
10.1186/s12942-025-00408-8