Murilo Guerreiro Arouca, C. D. S. Cruz, Marcos Ennes Barreto, Isa Beatriz da C. Neves, Federico Costa, H. Khalil, R. L. Brito
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Crowdsourcing for the spatialization and signaling of Covid-19 transmission predictors: an approach based on risk perception
Popular participation in public health actions is essential for fighting Covid-19, especially in vulnerable urban communities where the lack of geographical data at fine resolution scale hinders appropriate spatial responses. This work proposes a crowdsourcing-based solution that captures georeferenced data regarding the population's perception of risk in relation to transmission predictors of Coronavirus. The proposed solution allows for mapping and sending real-time alerts regarding the presence of such transmission predictors. A validation study involving 20 people from a community in the city of Salvador revealed that the proposed solution is highly acceptable as user-centred alert tool, especially among young people.