Department of Microbiology, Khon Kaen University, Khon Kaen, Thailand.
Department of Medical Entomology, Faculty of Tropical Medicine, Mahidol University, Bangkok, Thailand.
BMC Infect Dis. 2019 Aug 23;19(1):743. doi: 10.1186/s12879-019-4379-3.
Dengue, a viral disease transmitted by Aedes mosquitoes, is an important public health concern throughout Thailand. Climate variables are potential predictors of dengue transmission. Associations between climate variables and dengue have usually been performed on large-scale first-level national administrative divisions, i.e. provinces. Here we analyze data on a finer spatial resolution in one province, which is often more relevant for effective disease control design. The objective of this study was to investigate the effect of seasonal variations, monthly climate variability, and to identify local clusters of symptomatic disease at the sub-district level based on reported dengue cases.
Data on dengue cases were retrieved from the national communicable disease surveillance system in Thailand. Between 2006 and 2016, 15,167 cases were recorded in 199 sub-districts of Khon Kaen Province, northeastern Thailand. Descriptive analyses included demographic characteristics and temporal patterns of disease and climate variables. The association between monthly disease incidence and climate variations was analyzed at the sub-district level using Bayesian Poisson spatial regression. A hotspot analysis was used to assess the spatial patterns (clustered/dispersed/random) of dengue incidence.
Dengue was predominant in the 5-14 year-old age group (51.1%). However, over time, dengue incidence in the older age groups (> 15 years) gradually increased and was the most affected group in 2013. Dengue outbreaks coincide with the rainy season. In the spatial regression model, maximum temperature was associated with higher incidence. The hotspot analysis showed clustering of cases around the urbanized area of Khon Kaen city and in rural areas in the southwestern portion of the province.
There was an increase in the number of reported dengue cases in older age groups over the study period. Dengue incidence was highly seasonal and positively associated with maximum ambient temperature. However, climatic variables did not explain all the spatial variation of dengue in the province. Further analyses are needed to clarify the detailed effects of urbanization and other potential environmental risk factors. These results provide useful information for ongoing prediction modeling and developing of dengue early warning systems to guide vector control operations.
登革热是一种由埃及伊蚊传播的病毒性疾病,是整个泰国的一个重要公共卫生关注点。气候变量是登革热传播的潜在预测因子。气候变量与登革热之间的关联通常在大规模的一级国家行政区域(即省份)上进行。在这里,我们在一个省份的更精细空间分辨率上分析数据,这对于有效的疾病控制设计通常更相关。本研究的目的是调查季节性变化、每月气候变异性的影响,并根据报告的登革热病例确定区级以下水平的症状性疾病的局部集群。
从泰国国家传染病监测系统中检索登革热病例数据。在 2006 年至 2016 年间,泰国东北部孔敬府的 199 个区级记录了 15167 例病例。描述性分析包括疾病和气候变量的人口统计学特征和时间模式。在区级水平上,使用贝叶斯泊松空间回归分析了每月疾病发病率与气候变化之间的关联。热点分析用于评估登革热发病率的空间模式(集群/分散/随机)。
登革热主要发生在 5-14 岁年龄组(51.1%)。然而,随着时间的推移,年龄较大组(>15 岁)的登革热发病率逐渐增加,在 2013 年成为受影响最严重的组。登革热爆发与雨季相吻合。在空间回归模型中,最高温度与更高的发病率相关。热点分析显示病例围绕孔敬市的城市化地区和该省西南部的农村地区呈聚集性。
在研究期间,报告的登革热病例数量在年龄较大的组中有所增加。登革热发病率具有高度季节性,与环境温度最大值呈正相关。然而,气候变量并不能解释该省登革热的所有空间变化。需要进一步分析以阐明城市化和其他潜在环境风险因素的详细影响。这些结果为正在进行的预测建模和登革热预警系统的开发提供了有用的信息,以指导病媒控制行动。