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Improvement of Disease Prediction and Modeling through the Use of Meteorological Ensembles: Human Plague in Uganda

机译:人间鼠疫乌干达:通过使用气象系综的疾病预测和模拟的改进

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摘要

Climate and weather influence the occurrence, distribution, and incidence of infectious diseases, particularly those caused by vector-borne or zoonotic pathogens. Thus, models based on meteorological data have helped predict when and where human cases are most likely to occur. Such knowledge aids in targeting limited prevention and control resources and may ultimately reduce the burden of diseases. Paradoxically, localities where such models could yield the greatest benefits, such as tropical regions where morbidity and mortality caused by vector-borne diseases is greatest, often lack high-quality in situ local meteorological data. Satellite- and model-based gridded climate datasets can be used to approximate local meteorological conditions in data-sparse regions, however their accuracy varies. Here we investigate how the selection of a particular dataset can influence the outcomes of disease forecasting models. Our model system focuses on plague (Yersinia pestis infection) in the West Nile region of Uganda. The majority of recent human cases have been reported from East Africa and Madagascar, where meteorological observations are sparse and topography yields complex weather patterns. Using an ensemble of meteorological datasets and model-averaging techniques we find that the number of suspected cases in the West Nile region was negatively associated with dry season rainfall (December-February) and positively with rainfall prior to the plague season. We demonstrate that ensembles of available meteorological datasets can be used to quantify climatic uncertainty and minimize its impacts on infectious disease models. These methods are particularly valuable in regions with sparse observational networks and high morbidity and mortality from vector-borne diseases.
机译:气候和天气会影响传染病的发生,分布和发生率,尤其是由媒介传播或人畜共患病原体引起的传染病。因此,基于气象数据的模型有助于预测何时最可能发生人类病例。这些知识有助于将有限的预防和控制资源作为目标,并最终减轻疾病负担。矛盾的是,这种模式可能产生最大效益的地区,例如媒介传播疾病引起的发病率和死亡率最大的热带地区,通常缺乏高质量的当地气象数据。基于卫星和基于模型的栅格化气候数据集可用于在数据稀疏地区近似当地的气象条件,但是其准确性会有所不同。在这里,我们调查特定数据集的选择如何影响疾病预测模型的结果。我们的模型系统着重于乌干达西尼罗河地区的鼠疫(鼠疫耶尔森氏菌感染)。最近的大多数人类病例是由东非和马达加斯加报道的,那里的气象观测稀疏,地势复杂。使用一组气象数据集和模型平均技术,我们发现西尼罗河地区可疑病例的数量与旱季降雨量(12月至2月)呈负相关,而与鼠疫季节之前的降雨量呈正相关。我们证明,可用的气象数据集可用于量化气候不确定性,并将其对传染病模型的影响降至最低。这些方法在观测网络稀疏,病媒传播疾病发病率和死亡率高的地区特别有价值。

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