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Data-driven and interpretable machine-learning modeling to explore the fine-scale environmental determinants of malaria vectors biting rates in rural Burkina Faso.

Paul TaconetAngélique PorcianiDieudonné Diloma SomaKarine MoulineFrédéric SimardAlphonsine Amanan KoffiCedric PennetierRoch Kounbobr DabiréMorgan MangeasNicolas Moiroux
Published in: Parasites & vectors (2021)
Using high-resolution data in an interpretable machine-learning modeling framework proved to be an efficient way to enhance the knowledge of the complex links between the environment and the malaria vectors at a local scale. More broadly, the emerging field of interpretable machine learning has significant potential to help improve our understanding of the complex processes leading to malaria transmission, and to aid in developing operational tools to support the fight against the disease (e.g. vector control intervention plans, seasonal maps of predicted biting rates, early warning systems).
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