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RESEARCH PRODUCT
Predicting dengue fever outbreaks in French Guiana using climate indicators
Vanessa ArdillonClaude FlamandDominique RoussetAntoine AddeRomain GirodSébastien BriolantPascal RoucouJean-claude DesenclosMorgan MangeasPhilippe Quénelsubject
Atmospheric ScienceViral DiseasesEl Niño-Southern OscillationEpidemiologyClimateRainMarine and Aquatic SciencesLogistic regressionOceanographyDengue feverDisease OutbreaksDengue FeverDengue0302 clinical medicine[SDV.MHEP.MI]Life Sciences [q-bio]/Human health and pathology/Infectious diseasesOceansMedicine and Health Sciences030212 general & internal medicineClimatology[SDV.MHEP.ME]Life Sciences [q-bio]/Human health and pathology/Emerging diseasesEcologylcsh:Public aspects of medicine3. Good healthFrench Guiana[ SDV.MHEP.MI ] Life Sciences [q-bio]/Human health and pathology/Infectious diseases[ SDE.MCG ] Environmental Sciences/Global ChangesGeographyInfectious Diseases[SDU.STU.CL]Sciences of the Universe [physics]/Earth Sciences/ClimatologyEpidemiological Methods and StatisticsEquatorial Ocean RegionsSeasons[ SDU.STU.CL ] Sciences of the Universe [physics]/Earth Sciences/ClimatologyOceans Ocean temperature Seasons El Niño-Southern Oscillation Rain Dengue fever Epidemiology Equatorial ocean regionsResearch ArticleNeglected Tropical Diseasesmedicine.medical_specialtylcsh:Arctic medicine. Tropical medicinelcsh:RC955-962[SDE.MCG]Environmental Sciences/Global Changes030231 tropical medicine03 medical and health sciencesMeteorologyEnvironmental healthmedicineHumansOcean TemperatureAzores HighModels StatisticalPublic healthPublic Health Environmental and Occupational HealthOutbreaklcsh:RA1-1270Bodies of Watermedicine.diseaseTropical DiseasesSea surface temperature13. Climate actionEarth SciencesEarly warning systemClimate model[SDV.SPEE]Life Sciences [q-bio]/Santé publique et épidémiologieEpidemiologic MethodsForecastingClimate Modelingdescription
Background Dengue fever epidemic dynamics are driven by complex interactions between hosts, vectors and viruses. Associations between climate and dengue have been studied around the world, but the results have shown that the impact of the climate can vary widely from one study site to another. In French Guiana, climate-based models are not available to assist in developing an early warning system. This study aims to evaluate the potential of using oceanic and atmospheric conditions to help predict dengue fever outbreaks in French Guiana. Methodology/Principal Findings Lagged correlations and composite analyses were performed to identify the climatic conditions that characterized a typical epidemic year and to define the best indices for predicting dengue fever outbreaks during the period 1991–2013. A logistic regression was then performed to build a forecast model. We demonstrate that a model based on summer Equatorial Pacific Ocean sea surface temperatures and Azores High sea-level pressure had predictive value and was able to predict 80% of the outbreaks while incorrectly predicting only 15% of the non-epidemic years. Predictions for 2014–2015 were consistent with the observed non-epidemic conditions, and an outbreak in early 2016 was predicted. Conclusions/Significance These findings indicate that outbreak resurgence can be modeled using a simple combination of climate indicators. This might be useful for anticipating public health actions to mitigate the effects of major outbreaks, particularly in areas where resources are limited and medical infrastructures are generally insufficient.
year | journal | country | edition | language |
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2016-04-29 |