Three-Month Real-Time Dengue Forecast Models: An Early Warning System for Outbreak Alerts and Policy Decision Support in Singapore
Open Access
- 1 September 2016
- journal article
- Published by Environmental Health Perspectives in Environmental Health Perspectives
- Vol. 124 (9), 1369-1375
- https://doi.org/10.1289/ehp.1509981
Abstract
With its tropical rainforest climate, rapid urbanization, and changing demography and ecology, Singapore experiences endemic dengue; the last large outbreak in 2013 culminated in 22,170 cases. In the absence of a vaccine on the market, vector control is the key approach for prevention. We sought to forecast the evolution of dengue epidemics in Singapore to provide early warning of outbreaks and to facilitate the public health response to moderate an impending outbreak. We developed a set of statistical models using least absolute shrinkage and selection operator (LASSO) methods to forecast the weekly incidence of dengue notifications over a 3-month time horizon. This forecasting tool used a variety of data streams and was updated weekly, including recent case data, meteorological data, vector surveillance data, and population-based national statistics. The forecasting methodology was compared with alternative approaches that have been proposed to model dengue case data (seasonal autoregressive integrated moving average and step-down linear regression) by fielding them on the 2013 dengue epidemic, the largest on record in Singapore. Operationally useful forecasts were obtained at a 3-month lag using the LASSO-derived models. Based on the mean average percentage error, the LASSO approach provided more accurate forecasts than the other methods we assessed. We demonstrate its utility in Singapore's dengue control program by providing a forecast of the 2013 outbreak for advance preparation of outbreak response. Statistical models built using machine learning methods such as LASSO have the potential to markedly improve forecasting techniques for recurrent infectious disease outbreaks such as dengue. Shi Y, Liu X, Kok SY, Rajarethinam J, Liang S, Yap G, Chong CS, Lee KS, Tan SS, Chin CK, Lo A, Kong W, Ng LC, Cook AR. 2016. Three-month real-time dengue forecast models: an early warning system for outbreak alerts and policy decision support in Singapore. Environ Health Perspect 124:1369-1375; http://dx.doi.org/10.1289/ehp.1509981.Keywords
This publication has 43 references indexed in Scilit:
- Will Dengue Vaccines Be Used in the Public Sector and if so, How? Findings from an 8-country Survey of Policymakers and Opinion LeadersPLoS Neglected Tropical Diseases, 2013
- Forecast of Dengue Incidence Using Temperature and RainfallPLoS Neglected Tropical Diseases, 2012
- Optimal Lead Time for Dengue ForecastPLoS Neglected Tropical Diseases, 2012
- Economic Impact of Dengue Illness and the Cost-Effectiveness of Future Vaccination Programs in SingaporePLoS Neglected Tropical Diseases, 2011
- Celgosivir treatment misfolds dengue virus NS1 protein, induces cellular pro-survival genes and protects against lethal challenge mouse modelAntiviral Research, 2011
- Prediction of Dengue Incidence Using Search Query SurveillancePLoS Neglected Tropical Diseases, 2011
- Vaccination against pandemic influenza A/H1N1v in England: A real-time economic evaluationVaccine, 2010
- Variable selection: current practice in epidemiological studiesEuropean Journal of Epidemiology, 2009
- The Impact of the Demographic Transition on Dengue in Thailand: Insights from a Statistical Analysis and Mathematical ModelingPLoS Medicine, 2009
- Genome-wide association analysis by lasso penalized logistic regressionBioinformatics, 2009