How do temperature and precipitation drive dengue transmission in nine cities, in Guangdong Province, China: a Bayesian spatio-temporal model analysis

被引:0
作者
Yi Quan
Yingtao Zhang
Hui Deng
Xing Li
Jianguo Zhao
Jianxiong Hu
Ruipeng Lu
Yihan Li
Qian Zhang
Li Zhang
Zitong Huang
Jiong Wang
Tao Liu
Wenjun Ma
Aiping Deng
Liping Liu
Lifeng Lin
Zhoupeng Ren
Jianpeng Xiao
机构
[1] Southern Medical University,School of Public Health
[2] Guangdong Provincial Institute of Public Health,School of Public Health
[3] Guangdong Provincial Center for Disease Control and Prevention,School of Public Health
[4] Guangdong Provincial Center for Disease Control and Prevention,Department of Public Health and Preventive Medicine, School of Medicine
[5] Guangdong Workstation for Emerging Infectious Disease Control and Prevention,State Key Laboratory of Resources and Environmental Information System (LREIS), Institute of Geographic Sciences and Natural Resources Research
[6] Guangdong Pharmaceutical University,undefined
[7] Sun Yat-Sen University,undefined
[8] Jinan University,undefined
[9] Chinese Academy of Sciences,undefined
来源
Air Quality, Atmosphere & Health | 2023年 / 16卷
关键词
Dengue; Climatic factors; Bayesian analysis; Spatio-temporal model;
D O I
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中图分类号
学科分类号
摘要
Dengue remains an important public health issue in South China. In this study, we aim to quantify the effect of climatic factors on dengue in nine cities of the Pearl River Delta (PRD) in South China. Monthly dengue cases, climatic factors, socio-economic, geographical, and mosquito density data in nine cities of the PRD from 2008 to 2019 were collected. A generalized additive model (GAM) was applied to investigate the exposure–response relationship between climatic factors (temperature and precipitation) and dengue incidence in each city. A spatio-temporal conditional autoregressive model (ST-CAR) with a Bayesian framework was employed to estimate the effect of temperature and precipitation on dengue and to explore the temporal trend of the dengue risk by adjusting the socioeconomic and geographical factors. There was a positive non-linear association between the temperature and dengue incidence in the nine cities in south China, while the approximate linear negative relationship between precipitation and dengue incidence was found in most of the cities. The ST-CAR model analysis showed the risk of dengue transmission increased by 101.0% (RR: 2.010, 95% CI: 1.818 to 2.151) for 1 °C increase in monthly temperature at 2 months lag in the overall nine cities, while a 3.2% decrease (relative risk (RR): 0.968, 95% CI: 0.946 to 0.985) and a 2.1% decrease (RR: 0.979, 95% CI: 0.975 to 0.983) for 10 mm increase in monthly precipitation at present month and 3 months lag. The expected incidence of dengue has risen again since 2015, and the highest incidence was in Guangzhou City. Our study showed that climatic factors, including temperature and precipitation would drive the dengue transmission, and the dengue epidemic risk has been increasing. The findings may contribute to the climate-driven dengue prediction and dengue risk projection for future climate scenarios.
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页码:1153 / 1163
页数:10
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