Sang Shaowei, Yin Wenwu, Bi Peng, Zhang Honglong, Wang Chenggang, Liu Xiaobo, Chen Bin, Yang Weizhong, Liu Qiyong
State Key Laboratory for Infectious Disease Prevention and Control, National Institute for Communicable Disease Control and Prevention, Chinese Center for Disease Control and Prevention, Changping, Beijing, China; Key Laboratory of Surveillance and Early-Warning on Infectious Disease, Chinese Center for Disease Control and Prevention, Beijing, China; WHO Collaborating Centre for Vector Surveillance and Management, Changping, Beijing, China; Shandong University Climate Change and Health Center, Jinan, China; Collaborative Innovation Center for Diagnosis and Treatment of Infectious Diseases, Hangzhou, China.
Key Laboratory of Surveillance and Early-Warning on Infectious Disease, Chinese Center for Disease Control and Prevention, Beijing, China.
PLoS One. 2014 Jul 14;9(7):e102755. doi: 10.1371/journal.pone.0102755. eCollection 2014.
Each year there are approximately 390 million dengue infections worldwide. Weather variables have a significant impact on the transmission of Dengue Fever (DF), a mosquito borne viral disease. DF in mainland China is characterized as an imported disease. Hence it is necessary to explore the roles of imported cases, mosquito density and climate variability in dengue transmission in China. The study was to identify the relationship between dengue occurrence and possible risk factors and to develop a predicting model for dengue's control and prevention purpose.
Three traditional suburbs and one district with an international airport in Guangzhou city were selected as the study areas. Autocorrelation and cross-correlation analysis were used to perform univariate analysis to identify possible risk factors, with relevant lagged effects, associated with local dengue cases. Principal component analysis (PCA) was applied to extract principal components and PCA score was used to represent the original variables to reduce multi-collinearity. Combining the univariate analysis and prior knowledge, time-series Poisson regression analysis was conducted to quantify the relationship between weather variables, Breteau Index, imported DF cases and the local dengue transmission in Guangzhou, China. The goodness-of-fit of the constructed model was determined by pseudo-R2, Akaike information criterion (AIC) and residual test. There were a total of 707 notified local DF cases from March 2006 to December 2012, with a seasonal distribution from August to November. There were a total of 65 notified imported DF cases from 20 countries, with forty-six cases (70.8%) imported from Southeast Asia. The model showed that local DF cases were positively associated with mosquito density, imported cases, temperature, precipitation, vapour pressure and minimum relative humidity, whilst being negatively associated with air pressure, with different time lags.
Imported DF cases and mosquito density play a critical role in local DF transmission, together with weather variables. The establishment of an early warning system, using existing surveillance datasets will help to control and prevent dengue in Guangzhou, China.
全球每年约有3.9亿例登革热感染病例。天气变量对登革热(DF)的传播有重大影响,登革热是一种由蚊子传播的病毒性疾病。中国大陆的登革热以输入性疾病为特征。因此,有必要探讨输入病例、蚊虫密度和气候变率在中国登革热传播中的作用。本研究旨在确定登革热发生与可能的风险因素之间的关系,并建立一个用于登革热防控的预测模型。
选取广州市三个传统郊区和一个设有国际机场的区作为研究区域。采用自相关和交叉相关分析进行单变量分析,以确定与当地登革热病例相关的可能风险因素及其相关滞后效应。应用主成分分析(PCA)提取主成分,并使用PCA得分来代表原始变量以减少多重共线性。结合单变量分析和先验知识,进行时间序列泊松回归分析,以量化天气变量、布雷图指数、输入性登革热病例与中国广州当地登革热传播之间的关系。通过伪R2、赤池信息准则(AIC)和残差检验来确定构建模型的拟合优度。2006年3月至2012年12月共有707例本地登革热病例报告,季节性分布为8月至11月。共有来自20个国家的65例输入性登革热病例报告,其中46例(70.8%)来自东南亚。模型显示,当地登革热病例与蚊虫密度、输入病例、温度、降水量、水汽压和最小相对湿度呈正相关,而与气压呈负相关,且存在不同的时间滞后。
输入性登革热病例和蚊虫密度与天气变量一起,在当地登革热传播中起着关键作用。利用现有监测数据集建立预警系统将有助于中国广州的登革热防控。