Temperature, traveling, slums, and housing drive dengue transmission in a non-endemic metropolis.

Dengue is steadily increasing worldwide and expanding into higher latitudes. Current non-endemic areas are prone to become endemic soon. To improve understanding of dengue transmission in these settings, we assessed the spatiotemporal dynamics of the hitherto largest outbreak in the non-endemic metr...

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Main Authors: Juan Manuel Gurevitz, Julián Gustavo Antman, Karina Laneri, Juan Manuel Morales
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-06-01
Series:PLoS Neglected Tropical Diseases
Online Access:https://doi.org/10.1371/journal.pntd.0009465
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spelling doaj-4260b066b9c34fb482febf145c8976432021-07-10T04:31:31ZengPublic Library of Science (PLoS)PLoS Neglected Tropical Diseases1935-27271935-27352021-06-01156e000946510.1371/journal.pntd.0009465Temperature, traveling, slums, and housing drive dengue transmission in a non-endemic metropolis.Juan Manuel GurevitzJulián Gustavo AntmanKarina LaneriJuan Manuel MoralesDengue is steadily increasing worldwide and expanding into higher latitudes. Current non-endemic areas are prone to become endemic soon. To improve understanding of dengue transmission in these settings, we assessed the spatiotemporal dynamics of the hitherto largest outbreak in the non-endemic metropolis of Buenos Aires, Argentina, based on detailed information on the 5,104 georeferenced cases registered during summer-autumn of 2016. The highly seasonal dengue transmission in Buenos Aires was modulated by temperature and triggered by imported cases coming from regions with ongoing outbreaks. However, local transmission was made possible and consolidated heterogeneously in the city due to housing and socioeconomic characteristics of the population, with 32.8% of autochthonous cases occurring in slums, which held only 6.4% of the city population. A hierarchical spatiotemporal model accounting for imperfect detection of cases showed that, outside slums, less-affluent neighborhoods of houses (vs. apartments) favored transmission. Global and local spatiotemporal point-pattern analyses demonstrated that most transmission occurred at or close to home. Additionally, based on these results, a point-pattern analysis was assessed for early identification of transmission foci during the outbreak while accounting for population spatial distribution. Altogether, our results reveal how social, physical, and biological processes shape dengue transmission in Buenos Aires and, likely, other non-endemic cities, and suggest multiple opportunities for control interventions.https://doi.org/10.1371/journal.pntd.0009465
collection DOAJ
language English
format Article
sources DOAJ
author Juan Manuel Gurevitz
Julián Gustavo Antman
Karina Laneri
Juan Manuel Morales
spellingShingle Juan Manuel Gurevitz
Julián Gustavo Antman
Karina Laneri
Juan Manuel Morales
Temperature, traveling, slums, and housing drive dengue transmission in a non-endemic metropolis.
PLoS Neglected Tropical Diseases
author_facet Juan Manuel Gurevitz
Julián Gustavo Antman
Karina Laneri
Juan Manuel Morales
author_sort Juan Manuel Gurevitz
title Temperature, traveling, slums, and housing drive dengue transmission in a non-endemic metropolis.
title_short Temperature, traveling, slums, and housing drive dengue transmission in a non-endemic metropolis.
title_full Temperature, traveling, slums, and housing drive dengue transmission in a non-endemic metropolis.
title_fullStr Temperature, traveling, slums, and housing drive dengue transmission in a non-endemic metropolis.
title_full_unstemmed Temperature, traveling, slums, and housing drive dengue transmission in a non-endemic metropolis.
title_sort temperature, traveling, slums, and housing drive dengue transmission in a non-endemic metropolis.
publisher Public Library of Science (PLoS)
series PLoS Neglected Tropical Diseases
issn 1935-2727
1935-2735
publishDate 2021-06-01
description Dengue is steadily increasing worldwide and expanding into higher latitudes. Current non-endemic areas are prone to become endemic soon. To improve understanding of dengue transmission in these settings, we assessed the spatiotemporal dynamics of the hitherto largest outbreak in the non-endemic metropolis of Buenos Aires, Argentina, based on detailed information on the 5,104 georeferenced cases registered during summer-autumn of 2016. The highly seasonal dengue transmission in Buenos Aires was modulated by temperature and triggered by imported cases coming from regions with ongoing outbreaks. However, local transmission was made possible and consolidated heterogeneously in the city due to housing and socioeconomic characteristics of the population, with 32.8% of autochthonous cases occurring in slums, which held only 6.4% of the city population. A hierarchical spatiotemporal model accounting for imperfect detection of cases showed that, outside slums, less-affluent neighborhoods of houses (vs. apartments) favored transmission. Global and local spatiotemporal point-pattern analyses demonstrated that most transmission occurred at or close to home. Additionally, based on these results, a point-pattern analysis was assessed for early identification of transmission foci during the outbreak while accounting for population spatial distribution. Altogether, our results reveal how social, physical, and biological processes shape dengue transmission in Buenos Aires and, likely, other non-endemic cities, and suggest multiple opportunities for control interventions.
url https://doi.org/10.1371/journal.pntd.0009465
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