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The time series seasonal patterns of dengue fever and associated weather variables in Bangkok (2003-2017).
BMC Infectious Diseases ( IF 3.7 ) Pub Date : 2020-03-12 , DOI: 10.1186/s12879-020-4902-6
Sittisede Polwiang 1, 2
Affiliation  

In Thailand, dengue fever is one of the most well-known public health problems. The objective of this study was to examine the epidemiology of dengue and determine the seasonal pattern of dengue and its associate to climate factors in Bangkok, Thailand, from 2003 to 2017. The dengue cases in Bangkok were collected monthly during the study period. The time-series data were extracted into the trend, seasonal, and random components using the seasonal decomposition procedure based on loess. The Spearman correlation analysis and artificial neuron network (ANN) were used to determine the association between climate variables (humidity, temperature, and rainfall) and dengue cases in Bangkok. The seasonal-decomposition procedure showed that the seasonal component was weaker than the trend component for dengue cases during the study period. The Spearman correlation analysis showed that rainfall and humidity played a role in dengue transmission with correlation efficiency equal to 0.396 and 0.388, respectively. ANN showed that precipitation was the most crucial factor. The time series multivariate Poisson regression model revealed that increasing 1% of rainfall corresponded to an increase of 3.3% in the dengue cases in Bangkok. There were three models employed to forecast the dengue case, multivariate Poisson regression, ANN, and ARIMA. Each model displayed different accuracy, and multivariate Poisson regression was the most accurate approach in this study. This work demonstrates the significance of weather in dengue transmission in Bangkok and compares the accuracy of the different mathematical approaches to predict the dengue case. A single model may insufficient to forecast precisely a dengue outbreak, and climate factor may not only indicator of dengue transmissibility.

中文翻译:

曼谷(2003-2017)登革热的时间序列季节性模式及相关天气变量

在泰国,登革热是最著名的公共卫生问题之一。这项研究的目的是检查登革热的流行病学,并确定2003年至2017年泰国曼谷的登革热的季节性模式及其与气候因素的关系。在研究期间,每月收集曼谷的登革热病例。使用基于黄土的季节分解程序将时间序列数据提取到趋势,季节和随机分量中。使用Spearman相关分析和人工神经元网络(ANN)确定曼谷的气候变量(湿度,温度和降雨量)与登革热病例之间的关联。季节性分解程序显示,在研究期间,登革热病例的季节性成分比趋势成分弱。Spearman相关分析表明,降雨和湿度在登革热传播中起着一定的作用,相关效率分别为0.396和0.388。ANN表明,降水是最关键的因素。时间序列多元Poisson回归模型显示,在曼谷登革热病例中,降雨增加1%对应增加3.3%。共有三种模型用于预测登革热病例,多元Poisson回归,ANN和ARIMA。每个模型显示出不同的准确性,多元Poisson回归是这项研究中最准确的方法。这项工作证明了天气对曼谷登革热传播的重要性,并比较了预测登革热病例的不同数学方法的准确性。
更新日期:2020-03-12
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