Abstract

BackgroundDengue is the most common arboviral disease of humans, with more than one third of the world’s population at risk. Accurate prediction of dengue outbreaks may lead to public health interventions that mitigate the effect of the disease. Predicting infectious disease outbreaks is a challenging task; truly predictive methods are still in their infancy.MethodsWe describe a novel prediction method utilizing Fuzzy Association Rule Mining to extract relationships between clinical, meteorological, climatic, and socio-political data from Peru. These relationships are in the form of rules. The best set of rules is automatically chosen and forms a classifier. That classifier is then used to predict future dengue incidence as either HIGH (outbreak) or LOW (no outbreak), where these values are defined as being above and below the mean previous dengue incidence plus two standard deviations, respectively.ResultsOur automated method built three different fuzzy association rule models. Using the first two weekly models, we predicted dengue incidence three and four weeks in advance, respectively. The third prediction encompassed a four-week period, specifically four to seven weeks from time of prediction. Using previously unused test data for the period 4–7 weeks from time of prediction yielded a positive predictive value of 0.686, a negative predictive value of 0.976, a sensitivity of 0.615, and a specificity of 0.982.ConclusionsWe have developed a novel approach for dengue outbreak prediction. The method is general, could be extended for use in any geographical region, and has the potential to be extended to other environmentally influenced infections. The variables used in our method are widely available for most, if not all countries, enhancing the generalizability of our method.

Highlights

  • Dengue is the most common arboviral disease of humans, with more than one third of the world’s population at risk

  • The Tropical Rainfall Measuring Mission (TRMM) satellite data have been used to derive rainfall measurements [22] in remote and resource-limited regions and these measurements have been used for predictions for disease outbreaks [23]

  • Rigorous validation requires that the data used for testing not be the same as the data used in its development

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Summary

Introduction

Dengue is the most common arboviral disease of humans, with more than one third of the world’s population at risk. Dengue is an acute febrile disease of humans caused by a single-stranded RNA flavivirus transmitted by Aedes mosquitoes, primarily Aedes aegypti. These mosquitoes thrive in tropical urban areas by breeding in uncovered containers capable of holding rain water, such as tires, buckets, flower pots, etc. Dengue is the most common arboviral disease of humans in the world [2,3], recognized in over 100 countries, with an estimated 50 – 100 million cases annually [4,5]. Dengue is endemic in Puerto Rico and recently re-emerged in the Florida Keys in the United States (US) [7]

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