Extreme weather events and dengue outbreaks in Guangzhou, China: a time-series quasi-binomial distributed lag non-linear model

被引:0
|
作者
Jian Cheng
Hilary Bambrick
Francesca D. Frentiu
Gregor Devine
Laith Yakob
Zhiwei Xu
Zhongjie Li
Weizhong Yang
Wenbiao Hu
机构
[1] Queensland University of Technology,School of Public Health and Social Work
[2] Anhui Medical University,Department of Epidemiology and Biostatistics & Anhui Province Key Laboratory of Major Autoimmune Disease, School of Public Health
[3] Queensland University of Technology,Centre for Immunology and Infection Control, School of Biomedical Sciences
[4] QIMR Berghofer Medical Research Institute,Mosquito Control Laboratory
[5] London School of Hygiene and Tropical Medicine,Department of Disease Control
[6] University of Queensland,School of Public Health, Faculty of Medicine
[7] Chinese Center for Disease Control and Prevention,Division of Infectious Disease, Key Laboratory of Surveillance and Early Warning of Infectious Disease
[8] Chinese Academy of Medical Sciences/Peking Union Medical College,School of Population Medicine & Public Health
关键词
Dengue; Extreme weather; Heatwave; Extremely high rainfall; Extremely high humidity;
D O I
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中图分类号
学科分类号
摘要
Dengue transmission is climate-sensitive and permissive conditions regularly cause large outbreaks in Asia-Pacific area. As climate change progresses, extreme weather events such as heatwaves and unusually high rainfall are predicted more intense and frequent, but their impacts on dengue outbreaks remain unclear so far. This paper aimed to investigate the relationship between extreme weather events (i.e., heatwaves, extremely high rainfall and extremely high humidity) and dengue outbreaks in China. We obtained daily number of locally acquired dengue cases and weather factors for Guangzhou, China, for the period 2006–2015. The definition of dengue outbreaks was based on daily number of locally acquired cases above the threshold (i.e., mean + 2SD of daily distribution of dengue cases during peaking period). Heatwave was defined as ≥2 days with temperature ≥ 95th percentile, and extreme rainfall and humidity defined as daily values ≥95th percentile during 2006–2015. A generalized additive model was used to examine the associations between extreme weather events and dengue outbreaks. Results showed that all three extreme weather events were associated with increased risk of dengue outbreaks, with a risk increase of 115–251% around 6 weeks after heatwaves, 173–258% around 6–13 weeks after extremely high rainfall, and 572–587% around 6–13 weeks after extremely high humidity. Each extreme weather event also had good capacity in predicting dengue outbreaks, with the model’s sensitivity, specificity, accuracy, and area under the receiver operating characteristics curve all exceeding 86%. This study found that heatwaves, extremely high rainfall, and extremely high humidity could act as potential drivers of dengue outbreaks.
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页码:1033 / 1042
页数:9
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