Real-time dengue forecast for outbreak alerts in Southern Taiwan
Yu-Chieh Cheng,
Fang-Jing Lee,
Ya-Ting Hsu,
Eric V Slud,
Chao A Hsiung,
Chun-Hong Chen,
Ching-Len Liao,
Tzai-Hung Wen,
Chiu-Wen Chang,
Jui-Hun Chang,
Hsiao-Yu Wu,
Te-Pin Chang,
Pei-Sheng Lin,
Hui-Pin Ho,
Wen-Feng Hung,
Jing-Dong Chou and
Hsiao-Hui Tsou
PLOS Neglected Tropical Diseases, 2020, vol. 14, issue 7, 1-18
Abstract:
Dengue fever is a viral disease transmitted by mosquitoes. In recent decades, dengue fever has spread throughout the world. In 2014 and 2015, southern Taiwan experienced its most serious dengue outbreak in recent years. Some statistical models have been established in the past, however, these models may not be suitable for predicting huge outbreaks in 2014 and 2015. The control of dengue fever has become the primary task of local health agencies. This study attempts to predict the occurrence of dengue fever in order to achieve the purpose of timely warning. We applied a newly developed autoregressive model (AR model) to assess the association between daily weather variability and daily dengue case number in 2014 and 2015 in Kaohsiung, the largest city in southern Taiwan. This model also contained additional lagged weather predictors, and developed 5-day-ahead and 15-day-ahead predictive models. Our results indicate that numbers of dengue cases in Kaohsiung are associated with humidity and the biting rate (BR). Our model is simple, intuitive and easy to use. The developed model can be embedded in a "real-time" schedule, and the data (at present) can be updated daily or weekly based on the needs of public health workers. In this study, a simple model using only meteorological factors performed well. The proposed real-time forecast model can help health agencies take public health actions to mitigate the influences of the epidemic.Author summary: Meteorological conditions are the most frequently mentioned factors in the study of dengue fever. Some of the main factors other than the purely meteorological about which the public-health authorities might have data, such as numbers of cases or other current measurements of dengue outbreaks in neighboring cities, had been used in some of the past dengue studies. In this study, we developed models for predicting dengue case number based on past dengue case data and meteorological data. The goal of the models is to provide early warning of the occurrence of dengue fever to assist public health agencies in preparing an epidemic response plan.
Date: 2020
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Persistent link: https://EconPapers.repec.org/RePEc:plo:pntd00:0008434
DOI: 10.1371/journal.pntd.0008434
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