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A data-driven epidemiological prediction method for dengue outbreaks using local and remote sensing data

机译:基于本地和遥感数据的登革热暴发的数据驱动流行病学预测方法

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Background Dengue is the most common arboviral disease of humans, with more than one third of the world’s population at risk. Accurate prediction of dengue outbreaks may lead to public health interventions that mitigate the effect of the disease. Predicting infectious disease outbreaks is a challenging task; truly predictive methods are still in their infancy. Methods We describe a novel prediction method utilizing Fuzzy Association Rule Mining to extract relationships between clinical, meteorological, climatic, and socio-political data from Peru. These relationships are in the form of rules. The best set of rules is automatically chosen and forms a classifier. That classifier is then used to predict future dengue incidence as either HIGH (outbreak) or LOW (no outbreak), where these values are defined as being above and below the mean previous dengue incidence plus two standard deviations, respectively. Results Our automated method built three different fuzzy association rule models. Using the first two weekly models, we predicted dengue incidence three and four weeks in advance, respectively. The third prediction encompassed a four-week period, specifically four to seven weeks from time of prediction. Using previously unused test data for the period 4–7 weeks from time of prediction yielded a positive predictive value of 0.686, a negative predictive value of 0.976, a sensitivity of 0.615, and a specificity of 0.982. Conclusions We have developed a novel approach for dengue outbreak prediction. The method is general, could be extended for use in any geographical region, and has the potential to be extended to other environmentally influenced infections. The variables used in our method are widely available for most, if not all countries, enhancing the generalizability of our method.
机译:背景登革热是人类最常见的虫媒病毒性疾病,全世界三分之一以上的人口处于危险之中。对登革热暴发的准确预测可能会导致采取公共卫生干预措施,以减轻疾病的影响。预测传染病暴发是一项艰巨的任务。真正的预测方法仍处于起步阶段。方法我们描述了一种利用模糊关联规则挖掘从秘鲁提取临床,气象,气候和社会政治数据之间关系的新颖预测方法。这些关系采用规则的形式。最佳规则集将自动选择并形成分类器。然后使用该分类器将未来的登革热发病率预测为“高”(暴发)或“低”(无暴发),其中这些值分别被定义为高于和低于平均先前登革热发病率以及两个标准差。结果我们的自动化方法建立了三种不同的模糊关联规则模型。使用前两个每周模型,我们分别提前三周和四周预测了登革热的发病率。第三次预测涵盖了四个星期的时间,特别是从预测开始的四到七个星期。从预测时间开始使用4-7周之前未使用的测试数据,得出的阳性预测值为0.686,阴性预测值为0.976,敏感性为0.615,特异性为0.982。结论我们开发了一种新颖的登革热暴发预测方法。该方法是通用的,可以扩展到在任何地理区域中使用,并且有可能扩展到其他受环境影响的感染。我们的方法中使用的变量对于大多数(如果不是所有国家)都可以使用,从而增强了我们方法的可推广性。

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