School of Public Health and Social Work, Queensland University of Technology, Brisbane, Australia; Institute for Health and Biomedical Innovation, Queensland University of Technology, Brisbane, Australia.
Department of Disease Control, London School of Hygiene and Tropical Medicine, London, UK.
Sci Total Environ. 2019 Mar 15;656:889-901. doi: 10.1016/j.scitotenv.2018.11.395. Epub 2018 Nov 30.
The burden of dengue fever in Thailand is considerable, yet there are few large-scale studies exploring the drivers of transmission. This study aimed to investigate the spatiotemporal patterns and climatic drivers of severe dengue in Thailand.
Geographic Information System (GIS) techniques and spatial cluster analysis were used to visualize the spatial distribution and detect high-risk clusters of severe dengue in 76 provinces of Thailand from January 1999 to December 2014. The seasonal patterns of severe dengue cases in different provinces were identified. A two-stage modelling approach combining a generalized linear model with a distributed lag non-linear model was used to quantify the effects of monthly mean temperature and relative humidity on the occurrence of severe dengue cases in 51 provinces of Thailand.
Significant severe dengue clustering was detected, especially during epidemic years, and the location of these clusters showed substantial inter-annual variation. Severe dengue cases in Northern and Northeastern Thailand peaked in June to August and this pattern was stable across the study period, whereas the seasonality of severe dengue cases in other regions (especially Central Thailand) was less predictable. The risk of the occurrence of severe dengue cases increased with an increase in mean temperature in Northeastern Thailand, Central Thailand, and Southern Thailand, with peaks occurring between 24 °C to 30 °C in Northeastern Thailand and 27 °C to 29 °C in Southern Thailand West Coast, respectively. Relative humidity significantly affected the occurrence of severe dengue cases in Northeastern and Central Thailand, with optimal ranges observed for each region.
Our findings substantiate the potential for developing climate-based dengue early warning systems for Thailand, and have implications for informing pre-emptive vector control.
泰国登革热负担沉重,但鲜有大规模研究探索其传播驱动因素。本研究旨在调查泰国严重登革热的时空模式和气候驱动因素。
使用地理信息系统(GIS)技术和空间聚类分析,可视化显示了 1999 年 1 月至 2014 年 12 月泰国 76 个省的严重登革热的空间分布和高风险聚集区。确定了不同省份严重登革热病例的季节性模式。采用结合广义线性模型和分布式滞后非线性模型的两阶段建模方法,量化了每月平均温度和相对湿度对泰国 51 个省严重登革热病例发生的影响。
检测到显著的严重登革热聚集,特别是在流行年份,这些聚集的位置具有很大的年际变化。泰国北部和东北部的严重登革热病例在 6 月至 8 月达到高峰,这一模式在整个研究期间保持稳定,而其他地区(特别是泰国中部)的严重登革热季节性则不太可预测。在泰国东北部、泰国中部和泰国南部,随着平均温度的升高,严重登革热病例的发生风险增加,东北部的峰值出现在 24°C 至 30°C 之间,泰国南部西海岸的峰值出现在 27°C 至 29°C 之间。相对湿度对泰国东北部和中部严重登革热病例的发生有显著影响,每个地区都有最佳的范围。
我们的研究结果证实了为泰国开发基于气候的登革热预警系统的潜力,并对先发制人的病媒控制提供了信息。