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PNAS Plus: Prospective forecasts of annual dengue hemorrhagic fever incidence in Thailand 2010–2014

机译:PNAS Plus:2010-2014年泰国年度登革热出血热发生率的前瞻性预测

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摘要

Dengue hemorrhagic fever (DHF), a severe manifestation of dengue viral infection that can cause severe bleeding, organ impairment, and even death, affects between 15,000 and 105,000 people each year in Thailand. While all Thai provinces experience at least one DHF case most years, the distribution of cases shifts regionally from year to year. Accurately forecasting where DHF outbreaks occur before the dengue season could help public health officials prioritize public health activities. We develop statistical models that use biologically plausible covariates, observed by April each year, to forecast the cumulative DHF incidence for the remainder of the year. We perform cross-validation during the training phase (2000–2009) to select the covariates for these models. A parsimonious model based on preseason incidence outperforms the 10-y median for 65% of province-level annual forecasts, reduces the mean absolute error by 19%, and successfully forecasts outbreaks (area under the receiver operating characteristic curve = 0.84) over the testing period (2010–2014). We find that functions of past incidence contribute most strongly to model performance, whereas the importance of environmental covariates varies regionally. This work illustrates that accurate forecasts of dengue risk are possible in a policy-relevant timeframe.
机译:登革出血热(DHF)是登革热病毒感染的一种严重表现,可引起严重的出血,器官损伤甚至死亡,每年在泰国影响15,000至105,000人。尽管大多数泰国省份大多数年份至少经历过一次DHF病例,但病例分布每年都在区域间变化。准确预测登革热季节之前发生DHF的地点,可以帮助公共卫生官员确定公共卫生活动的优先顺序。我们开发了统计模型,这些模型使用每年4月观察到的生物学上合理的协变量来预测该年剩余时间的累积DHF发生率。我们在训练阶段(2000-2009)进行交叉验证,以选择这些模型的协变量。基于季前发病率的简约模型在省级年度预测中占65%,优于10年平均值,将平均绝对误差降低19%,并在测试中成功预测了暴发(接收者工作特征曲线下的面积= 0.84)期间(2010-2014年)。我们发现,过去发生的功能对模型性能的贡献最大,而环境协变量的重要性则因地区而异。这项工作表明,在与政策相关的时间范围内可以准确预测登革热风险。

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