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Statistical Modeling Reveals the Effect of Absolute Humidity on Dengue in Singapore

机译:统计模型揭示了绝对湿度对新加坡登革热的影响

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Weather factors are widely studied for their effects on indicating dengue incidence trends. However, these studies have been limited due to the complex epidemiology of dengue, which involves dynamic interplay of multiple factors such as herd immunity within a population, distinct serotypes of the virus, environmental factors and intervention programs. In this study, we investigate the impact of weather factors on dengue in Singapore, considering the disease epidemiology and profile of virus serotypes. A Poisson regression combined with Distributed Lag Non-linear Model (DLNM) was used to evaluate and compare the impact of weekly Absolute Humidity (AH) and other weather factors (mean temperature, minimum temperature, maximum temperature, rainfall, relative humidity and wind speed) on dengue incidence from 2001 to 2009. The same analysis was also performed on three sub-periods, defined by predominant circulating serotypes. The performance of DLNM regression models were then evaluated through the Akaike's Information Criterion. From the correlation and DLNM regression modeling analyses of the studied period, AH was found to be a better predictor for modeling dengue incidence than the other unique weather variables. Whilst mean temperature (MeanT) also showed significant correlation with dengue incidence, the relationship between AH or MeanT and dengue incidence, however, varied in the three sub-periods. Our results showed that AH had a more stable impact on dengue incidence than temperature when virological factors were taken into consideration. AH appeared to be the most consistent factor in modeling dengue incidence in Singapore. Considering the changes in dominant serotypes, the improvements in vector control programs and the inconsistent weather patterns observed in the sub-periods, the impact of weather on dengue is modulated by these other factors. Future studies on the impact of climate change on dengue need to take all the other contributing factors into consideration in order to make meaningful public policy recommendations.
机译:广泛研究了天气因素对指示登革热发病趋势的影响。但是,由于登革热的流行病学复杂,这些研究受到限制,其中涉及多种因素的动态相互作用,例如人群中的猪群免疫力,病毒的不同血清型,环境因素和干预计划。在这项研究中,我们考虑到疾病流行病学和病毒血清型的概况,研究了天气因素对新加坡登革热的影响。使用Poisson回归结合分布式滞后非线性模型(DLNM)来评估和比较每周绝对湿度(AH)和其他天气因素(平均温度,最低温度,最高温度,降雨量,相对湿度和风速)的影响)对2001年至2009年的登革热发病率进行了分析。还对三个主要流行的血清型定义的亚时段进行了相同的分析。然后通过Akaike的信息准则对DLNM回归模型的性能进行评估。根据研究期间的相关性和DLNM回归建模分析,与其他独特的天气变量相比,发现AH是模拟登革热发病率的更好预测指标。虽然平均温度(MeanT)也与登革热发病率显示显着相关,但是AH或MeanT与登革热发病率之间的关系在三个子时期有所不同。我们的结果表明,考虑到病毒学因素,AH对登革热的影响比温度更稳定。 AH似乎是新加坡登革热发病率模型中最一致的因素。考虑到主要血清型的变化,病媒控制程序的改进以及在子时期观察到的天气模式不一致,这些其他因素调节了天气对登革热的影响。未来有关气候变化对登革热影响的研究需要考虑所有其他促成因素,以便提出有意义的公共政策建议。

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