2022
DOI: 10.1371/journal.pntd.0010071
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Predicting dengue incidence leveraging internet-based data sources. A case study in 20 cities in Brazil

Abstract: The dengue virus affects millions of people every year worldwide, causing large epidemic outbreaks that disrupt people’s lives and severely strain healthcare systems. In the absence of a reliable vaccine against dengue or an effective treatment to manage the illness in humans, most efforts to combat dengue infections have focused on preventing its vectors, mainly the Aedes aegypti mosquito, from flourishing across the world. These mosquito-control strategies need reliable disease activity surveillance systems … Show more

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Cited by 6 publications
(5 citation statements)
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References 30 publications
(46 reference statements)
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“…Furthermore, the diagnostic efficiency of the dysregulated metabolites was evaluated. As a good method in machine learning, LASSO regression has been widely used in cancer marker studies (Hua et al, 2022;Koplewitz et al, 2022). In this study, with LASSO regression analysis, we constructed two risk models with the seven key metabolites for NIHL status predication.…”
Section: Central Carbon Metabolismmentioning
confidence: 99%
“…Furthermore, the diagnostic efficiency of the dysregulated metabolites was evaluated. As a good method in machine learning, LASSO regression has been widely used in cancer marker studies (Hua et al, 2022;Koplewitz et al, 2022). In this study, with LASSO regression analysis, we constructed two risk models with the seven key metabolites for NIHL status predication.…”
Section: Central Carbon Metabolismmentioning
confidence: 99%
“…Possui 4 sorotipos conhecidos: DENV 1, DENV 2, DENV 3 e DENV 4, apresentando como transmissor o mosquito Aedes aegypti, que tem preferência por áreas urbanas e de elevada densidade populacional para sua proliferação (CAVALLI et al, 2019). Uma variedade de condições externas demonstrou afetar a transmissão da dengue como a precipitação, temperatura e padrões climáticos sazonais que convergem para a propagação da doença, desenvolvimento e vida útil dos mosquitos transmissores (KOPLEWITZ et al, 2022).…”
Section: Resumo 1 Introduçãounclassified
“…An increasing number of individuals are inclined to search for health-related information on the internet before seeking medical services, opening up the potential for early disease surveillance by monitoring fluctuations in the frequency of specific search keywords [11]. Internet-derived data revealed substantial potential in the application of infectious disease surveillance worldwide [12,13]. Google's influenza monitoring data became available 2 weeks before official announcements in the United States [14].…”
Section: Introductionmentioning
confidence: 99%