par Morlighem, Camille;Chaiban, Célia ;Georganos, Stefanos ;Brousse, Oscar;Van de Walle, Jonas;Van Lipzig, Nicole P M;Wolff, Eléonore ;Dujardin, Sébastien;Linard, Catherine
Référence Remote Sensing, 14, 21, 5381
Publication Publié, 2022-11
Référence Remote Sensing, 14, 21, 5381
Publication Publié, 2022-11
Article révisé par les pairs
Résumé : | Remote sensing has been used for decades to produce vector-borne disease risk maps aiming at better targeting control interventions. However, the coarse and climatic-driven nature of these maps largely hampered their use in the fight against malaria in highly heterogeneous African cities. Remote sensing now offers a large panel of data with the potential to greatly improve and refine malaria risk maps at the intra-urban scale. This research aims at testing the ability of different geospatial datasets exclusively derived from satellite sensors to predict malaria risk in two sub-Saharan African cities: Kampala (Uganda) and Dar es Salaam (Tanzania). Using random forest models, we predicted intra-urban malaria risk based on environmental and socioeconomic predictors using climatic, land cover and land use variables among others. The combination of these factors derived from different remote sensors showed the highest predictive power, particularly models including climatic, land cover and land use predictors. However, the predictive power remained quite low, which is suspected to be due to urban malaria complexity and malaria data limitations. While huge improvements have been made over the last decades in terms of remote sensing data acquisition and processing, the quantity and quality of epidemiological data are not yet sufficient to take full advantage of these improvements. |