Rúa-Uribe Guillermo L, Suárez-Acosta Carolina, Chauca José, Ventosilla Palmira, Almanza Rita
Grupo Entomología Médica, Facultad de Medicina, Universidad de Antioquia, Medellín, Colombia.
Instituto de Medicina Tropical Alexander von Humboldt, Universidad Peruana Cayetano Heredia, Lima, Perú
Biomedica. 2013 Sep;33 Suppl 1:142-52.
Dengue fever is a major impact on public health vector-borne disease, and its transmission is influenced by entomological, sociocultural and economic factors. Additionally, climate variability plays an important role in the transmission dynamics. A large scientific consensus has indicated that the strong association between climatic variables and disease could be used to develop models to explain the incidence of the disease.
To develop a model that provides a better understanding of dengue transmission dynamics in Medellin and predicts increases in the incidence of the disease.
The incidence of dengue fever was used as dependent variable, and weekly climatic factors (maximum, mean and minimum temperature, relative humidity and precipitation) as independent variables. Expert Modeler was used to develop a model to better explain the behavior of the disease. Climatic variables with significant association to the dependent variable were selected through ARIMA models.
The model explains 34% of observed variability. Precipitation was the climatic variable showing statistically significant association with the incidence of dengue fever, but with a 20 weeks delay.
In Medellin, the transmission of dengue fever was influenced by climate variability, especially precipitation. The strong association dengue fever/precipitation allowed the construction of a model to help understand dengue transmission dynamics. This information will be useful to develop appropriate and timely strategies for dengue control.
登革热是一种对公共卫生有重大影响的媒介传播疾病,其传播受到昆虫学、社会文化和经济因素的影响。此外,气候变异性在传播动态中起着重要作用。大量科学共识表明,气候变量与疾病之间的强关联可用于建立模型来解释疾病的发病率。
建立一个能更好地理解麦德林登革热传播动态并预测疾病发病率上升的模型。
将登革热发病率作为因变量,每周的气候因素(最高、平均和最低温度、相对湿度和降水量)作为自变量。使用专家建模器建立一个能更好地解释疾病行为的模型。通过自回归积分移动平均(ARIMA)模型选择与因变量有显著关联的气候变量。
该模型解释了34%的观测变异性。降水量是与登革热发病率显示出统计学显著关联的气候变量,但有20周的延迟。
在麦德林,登革热的传播受到气候变异性的影响,尤其是降水量。登革热与降水量之间的强关联使得能够构建一个有助于理解登革热传播动态的模型。这些信息将有助于制定适当和及时的登革热控制策略。