Qi Xiaopeng, Wang Yong, Li Yue, Meng Yujie, Chen Qianqian, Ma Jiaqi, Gao George F
National Center for Public Health Surveillance and Information Services, Chinese Center for Disease Control and Prevention, Beijing, China.
State Key Laboratory of Resources and Environmental Information System, Institute of Geographical Sciences and Natural Resources Research, Chinese Academy of Sciences, Beijing, China.
PLoS Negl Trop Dis. 2015 Oct 27;9(10):e0004159. doi: 10.1371/journal.pntd.0004159. eCollection 2015 Oct.
An outbreak of dengue fever (DF) occurred in Guangdong Province, China in 2013 with the highest number of cases observed within the preceding ten years. DF cases were clustered in the Pearl River Delta economic zone (PRD) in Guangdong Province, which accounted for 99.6% of all cases in Guangdong province in 2013. The main vector in PRD was Aedes albopictus. We investigated the socioeconomic and environmental factors at the township level and explored how the independent variables jointly affect the DF epidemic in the PRD.
METHODOLOGY/PRINCIPAL FINDINGS: Six factors associated with the incidence of DF were identified in this project, representing the urbanization, poverty, accessibility and vegetation, and were considered to be core contributors to the occurrence of DF from the perspective of the social economy and the environment. Analyses were performed with Generalized Additive Models (GAM) to fit parametric and non-parametric functions to the relationships between the response and predictors. We used a spline-smooth technique and plotted the predicted against the observed co-variable value. The distribution of DF cases was over-dispersed and fit the negative binomial function better. The effects of all six socioeconomic and environmental variables were found to be significant at the 0.001 level and the model explained 45.1% of the deviance by DF incidence. There was a higher risk of DF infection among people living at the prefectural boundary or in the urban areas than among those living in other areas in the PRD. The relative risk of living at the prefectural boundary was higher than that of living in the urban areas. The associations between the DF cases and population density, GDP per capita, road density, and NDVI were nonlinear. In general, higher "road density" or lower "GDP per capita" were considered to be consistent risk factors. Moreover, higher or lower values of "population density" and "NDVI" could result in an increase in DF cases.
In this study, we presented an effect analysis of socioeconomic and environmental factors on DF occurrence at the smallest administrative unit (township level) for the first time in China. GAM was used to effectively detect the nonlinear impact of the predictors on the outcome. The results showed that the relative importance of different risk factors may vary across the PRD. This work improves our understanding of the differences and effects of socioeconomic and environmental factors on DF and supports effectively targeted prevention and control measures.
2013年中国广东省爆发登革热疫情,病例数为过去十年最高。登革热病例集中在广东省珠江三角洲经济区(珠三角),该区域占2013年广东省全部病例的99.6%。珠三角的主要病媒是白纹伊蚊。我们调查了乡镇层面的社会经济和环境因素,并探讨了这些自变量如何共同影响珠三角的登革热疫情。
方法/主要发现:本项目确定了六个与登革热发病率相关的因素,代表城市化、贫困、可达性和植被,从社会经济和环境角度被认为是登革热发生的核心因素。使用广义相加模型(GAM)进行分析,以拟合响应变量与预测变量之间关系的参数和非参数函数。我们采用样条平滑技术,并绘制预测值与观测协变量值的关系图。登革热病例的分布呈过度离散,更符合负二项式函数。所有六个社会经济和环境变量的影响在0.001水平上均具有显著性,该模型解释了登革热发病率偏差的45.1%。生活在地区边界或城市地区的人群感染登革热的风险高于珠三角其他地区的人群。生活在地区边界的相对风险高于生活在城市地区的相对风险。登革热病例与人口密度、人均GDP、道路密度和归一化植被指数(NDVI)之间的关联是非线性的。一般来说,较高的“道路密度”或较低的“人均GDP”被认为是一致的风险因素。此外,“人口密度”和“NDVI”的较高或较低值都可能导致登革热病例增加。
在本研究中,我们首次在中国最小行政单位(乡镇层面)对社会经济和环境因素对登革热发生的影响进行了分析。使用GAM有效地检测了预测变量对结果的非线性影响。结果表明,不同风险因素的相对重要性在珠三角各地可能有所不同。这项工作增进了我们对社会经济和环境因素对登革热的差异和影响的理解,并支持有效的针对性防控措施。