Improving Response to Malaria Outbreaks in Amazon-Basin Countries
Funding
National Institute of Allergy and Infectious Diseases, National Institutes of Health
Date
Sep 2021 – Aug 2026
Project Site(s)
Brazil
Ecuador
Peru
Collaborators
Universidade Federal de Minas Gerais, Brazil
Universidad San Francisco de Quito, Ecuador
Universidad Peruana Cayetano Heredia, Peru
External Links
Objectives
To improve malaria response in the Amazon by enhancing knowledge on when where, and which targeted interventions will have the greatest impact.
Rationale and Abstract
There is a critical need for improved malaria control—since 2011, no region in the world has experienced a larger increase in malaria than the Amazon. Several events contributed to this rise: extreme weather (i.e., El Nino), expanded resource extraction, political unrest in Venezuela, and withdrawal of the Global Fund from South America. The unprecedented malaria resurgence has been particularly high near border regions where migration and poor health care facilitate transmission. The current surveillance system has a 4-week delay in cases reported, which is completely inadequate, resulting in reactive vs. preventive intervention strategies. To respond, the team developed a Malaria Early Warning System (MEWS) with NASA support for Loreto, Peru, where over 90% of malaria cases in Peru occur. The MEWS forecasts outbreaks with >90% sensitivity and >75% specificity 8-12 weeks in advance in sub- regions (EcoRegions using unobserved component models [UCM]) and districts (via spatial Bayesian models), and fits community-based agent based models (ABMs) to evaluate behavioral factors associated with transmission. However, gaps remain: MEWS has unknown performance outside of Peru; it does not incorporate migration; forecasts are not downscaled for hotspot detection; forecasting performance is poor near border regions; and the models are not integrated across scales.
This project will significantly improve current surveillance efforts by providing both current estimates and forecasts of malaria using state-of-the-art climate, hydrology and land cover models. The MEWS is expanded by obtaining surveillance and population data from Ecuador and Brazil, and merging these with hydro-meteorological data. New EcoRegions that ignore administrative borders are defined and UCMs are applied. Spatial Bayesian models are used to estimate both district- and downscaled sub-district level malaria incidence. This proposal responds to the WHO 2016-2030 Global Technical Strategy for Malaria and the recent initiatives by the Pan American Health Organization calling for improved malaria surveillance as a core intervention to improve response to high malaria burden.
Publications
Janko MM, Araujo AL, Ascencio EJ, Guedes GR, Vasco LE, Santos RO, Damasceno CP, Medrano PG, Chacón-Uscamaita PR, Gunderson AK, O’Malley S, Kansara PH, Narvaez MB, Coombes C, Pizzitutti F, Salmon-Mulanovich G, Zaitchik BF, Mena CF, Lescano AG, Barbieri AF, Pan WK (2024). Study protocol: improving response to malaria in the Amazon through identification of inter-community networks and human mobility in border regions of Ecuador, Peru and Brazil. BMJ Open, 14(4), e078911. https://doi.org/10.1136/bmjopen-2023-078911
Navas ALA, Janko MM, Benítez FL, Narvaez M, Vasco LE, Kansara P, Zaitchik B, Pan WK, Mena CF (2024). Impact of climate and land use/land cover changes on malaria incidence in the Ecuadorian Amazon. PLOS Climate, 3(4), e0000315. https://doi.org/10.1371/journal.pclm.0000315
December 27, 2023 | Duke Global Health Institute
2023 | Duke Global Health Institute