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BACKGROUND Sinka et al., (2020) Provides a framework to investigate what factors will influence public health impact Builds on Sinka et al., (2020) which found high suitability across Africa Evidence that An. stephensi is playing a role in Occurrence of Anopheles Annual confirmed malaria cases malaria transmission in Djibouti Sinka et al., stephensi in Djibouti City in Djibouti, MoH (2020) Seyfarth et al., (2019) Can we attempt to quantify what has potentially happened in Djibouti in order to project what could happen in Ethiopia? (not a forecast or prediction of what will happen) METHOD Uncertainty in vector bionomics Use deterministic malaria model to estimate An.stephensi vector density using Djibouti malaria incidence data https://github.com/mrc-ide/deterministic-malaria-model Multiple runs to account for uncertainty in mosquito Current situation varies across the country bionomics (A). B) IRS C) ITN D) EIP (extrinsic Extrapolate increase in An. stephensi coverage coverage incubation) vector density from Djibouti to Ethiopia to produce predictions of how malaria incidence may change Account for pre-existing (B) IRS coverage (C) ITN coverage Uncertainty in where malaria and species could invade (D) temperature dependent EIP and malaria prevalence Predicted population at risk (E and F) E) Altitude F) An. stephensi suitability Scale up interventions and apply these to new predictions of malaria transmission ITNs (increase to 80% use) for pyrethorid and pyrethroid- PBO nets IRS (increase to 80% use) long-lasting which mosquitoes susceptible Larval Source Management (LSM, 40% reduction in emergence) Prevalence increase by RESULTS administrative grouping Huge uncertainty around results Substantial increases in prevalence across Ethiopia with large amounts of subnational heterogeneity Large increases in cases seen in areas with low National increase in malaria cases existing transmission Low population immunity to malaria and existing vector control Increase in incidence depends on population expected to be at risk 541,000 additional malaria cases per year (95% CI 134,000 – 979,000) Currently ~740,000 reported cases of malaria per year in Ethiopia (World Malaria report 2020) RESULTSSubnational heterogeneity in the impact of interventions Considered different combinations of interventions at different coverages (0/80%) Pre-existing intervention and transmission important to consider Without the use of PBO nets, reduction to pre- existing levels of transmission very difficult even with scaleup of ITN/IRS/implemen tation of larvicide CONCLUSION Large parts of Ethiopia are vulnerable to substantial increases in malaria if An. stephensi establishes itself across the country Huge uncertainty in estimated impact Large scale up of interventions needed following estimated increases Additional surveillance and data needed This study is a first step of a long process of estimating the impact of An. Acknowledgements stephensi Work estimates large increases, but huge uncertainty around this, in order Seth Irish, Dereje Dengela, Aklilu to improve estimates more data on vector bionomics Seyoum, Eric Tongren & Jennifer Armistead Several limitations Many assumptions due to limited data Funders/collaborators Single vector considered, no accounting for inter-species competition PMI/Vector-link/Ethiopian National Malaria Programme Do not consider Plasmodium vivax malaria CEASE group Invasion dynamics are very simple control the spread of Anopheles stephensi in No accounting of geographic spread or differential suitability in administrative units, no Ethiopia and Sudan seasonality Invasion and establishment in Ethiopia is likely to be very different to Djibouti, but the absence of data has necessitated assuming it will be the same
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