Time series analysis of dengue incidence in Guadeloupe, French West Indies: Forecasting models using climate variables as predictors

被引:160
作者
Gharbi, Myriam [1 ,4 ]
Quenel, Philippe [2 ]
Gustave, Joel
Cassadou, Sylvie [2 ]
La Ruche, Guy [3 ]
Girdary, Laurent [4 ]
Marrama, Laurence [4 ]
机构
[1] Ecole Pasteur Cnam St Publ, Paris, France
[2] French Inst Publ Hlth Surveillance Cire Antilles, Reg Off, Fort De France, Martinique, France
[3] French Inst Publ Hlth Surveillance InVS, Int & Trop Dept, St Maurice, France
[4] Inst Pasteur Guadeloupe, Res Unit Epidemiol & Transmiss Emerging Dis, Linkedln, Guadeloupe, France
关键词
Dengue fever; Time series analysis; SARIMA models; Forecasting; Climate; Guadeloupe; America region; AEDES-AEGYPTI DIPTERA; EPIDEMIC DENGUE; PUERTO-RICO; FEVER; TEMPERATURE; DISEASE; VARIABILITY; THAILAND; WEATHER; TRANSMISSION;
D O I
10.1186/1471-2334-11-166
中图分类号
R51 [传染病];
学科分类号
100401 ;
摘要
Background: During the last decades, dengue viruses have spread throughout the Americas region, with an increase in the number of severe forms of dengue. The surveillance system in Guadeloupe (French West Indies) is currently operational for the detection of early outbreaks of dengue. The goal of the study was to improve this surveillance system by assessing a modelling tool to predict the occurrence of dengue epidemics few months ahead and thus to help an efficient dengue control. Methods: The Box-Jenkins approach allowed us to fit a Seasonal Autoregressive Integrated Moving Average (SARIMA) model of dengue incidence from 2000 to 2006 using clinical suspected cases. Then, this model was used for calculating dengue incidence for the year 2007 compared with observed data, using three different approaches: 1 year-ahead, 3 months-ahead and 1 month-ahead. Finally, we assessed the impact of meteorological variables (rainfall, temperature and relative humidity) on the prediction of dengue incidence and outbreaks, incorporating them in the model fitting the best. Results: The 3 months-ahead approach was the most appropriate for an effective and operational public health response, and the most accurate (Root Mean Square Error, RMSE = 0.85). Relative humidity at lag-7 weeks, minimum temperature at lag-5 weeks and average temperature at lag-11 weeks were variables the most positively correlated to dengue incidence in Guadeloupe, meanwhile rainfall was not. The predictive power of SARIMA models was enhanced by the inclusion of climatic variables as external regressors to forecast the year 2007. Temperature significantly affected the model for better dengue incidence forecasting (p-value = 0.03 for minimum temperature lag-5, p-value = 0.02 for average temperature lag-11) but not humidity. Minimum temperature at lag-5 weeks was the best climatic variable for predicting dengue outbreaks (RMSE = 0.72). Conclusion: Temperature improves dengue outbreaks forecasts better than humidity and rainfall. SARIMA models using climatic data as independent variables could be easily incorporated into an early (3 months-ahead) and reliably monitoring system of dengue outbreaks. This approach which is practicable for a surveillance system has public health implications in helping the prediction of dengue epidemic and therefore the timely appropriate and efficient implementation of prevention activities.
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页数:13
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