AUTHOR=Musah Anwar , Browning Ella , Aldosery Aisha , Valerio Graciano Borges Iuri , Ambrizzi Tercio , Tunali Merve , Başibüyük Selma , Yenigün Orhan , Moreno Giselle Machado Magalhaes , de Lima Clarisse Lins , da Silva Ana Clara Gomes , dos Santos Wellington Pinheiro , Massoni Tiago , Campos Luiza Cintra , Kostkova Patty TITLE=Coalescing disparate data sources for the geospatial prediction of mosquito abundance, using Brazil as a motivating case study JOURNAL=Frontiers in Tropical Diseases VOLUME=4 YEAR=2023 URL=https://www.frontiersin.org/journals/tropical-diseases/articles/10.3389/fitd.2023.1039735 DOI=10.3389/fitd.2023.1039735 ISSN=2673-7515 ABSTRACT=
One of the barriers to performing geospatial surveillance of mosquito occupancy or infestation anywhere in the world is the paucity of primary entomologic survey data geolocated at a residential property level and matched to important risk factor information (e.g., anthropogenic, environmental, and climate) that enables the spatial risk prediction of mosquito occupancy or infestation. Such data are invaluable pieces of information for academics, policy makers, and public health program managers operating in low-resource settings in Africa, Latin America, and Southeast Asia, where mosquitoes are typically endemic. The reality is that such data remain elusive in these low-resource settings and, where available, high-quality data that include both individual and spatial characteristics to inform the geospatial description and risk patterning of infestation remain rare. There are many online sources of open-source spatial data that are reliable and can be used to address such data paucity in this context. Therefore, the aims of this article are threefold: (1) to highlight where these reliable open-source data can be acquired and how they can be used as risk factors for making spatial predictions for mosquito occupancy in general; (2) to use Brazil as a case study to demonstrate how these datasets can be combined to predict the presence of arboviruses through the use of ecological niche modeling using the maximum entropy algorithm; and (3) to discuss the benefits of using bespoke applications beyond these open-source online data sources, demonstrating for how they can be the new “gold-standard” approach for gathering primary entomologic survey data. The scope of this article was mainly limited to a Brazilian context because it builds on an existing partnership with academics and stakeholders from environmental surveillance agencies in the states of Pernambuco and Paraiba. The analysis presented in this article was also limited to a specific mosquito species, i.e.,