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Evaluating the impact of the weather conditions on the influenza propagation

机译:评估天气条件对流感繁殖的影响

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Predicting the details of how an epidemic evolves is highly valuable as health institutions need to better plan towards limiting the infection propagation effects and optimizing their prediction and response capabilities. Simulation is a cost- and time-effective way of predicting the evolution of the infection as the joint influence of many different factors: interaction patterns, personal characteristics, travel patterns, meteorological conditions, previous vaccination, etc. The work presented in this paper extends EpiGraph, our influenza epidemic simulator, by introducing a meteorological model as a modular component that interacts with the rest of EpiGraph’s modules to refine our previous simulation results. Our goal is to estimate the effects of changes in temperature and relative humidity on the patterns of epidemic influenza based on data provided by the Spanish Influenza Sentinel Surveillance System (SISSS) and the Spanish Meteorological Agency (AEMET). Our meteorological model is based on the regression model developed by AB and JS, and it is tuned with influenza surveillance data obtained from SISSS. After pre-processing this data to clean it and reconstruct missing samples, we obtain new values for the reproduction number of each urban region in Spain, every 10 minutes during 2011. We simulate the propagation of the influenza by setting the date of the epidemic onset and the initial influenza-illness rates for each urban region. We show that the simulation results have the same propagation shape as the weekly influenza rates as recorded by SISSS. We perform experiments for a realistic scenario based on actual meteorological data from 2010-2011, and for synthetic values assumed under simplified predicted climate change conditions. Results show that a diminishing relative humidity of 10% produces an increment of about 1.6% in the final infection rate. The effect of temperature changes on the infection spread is also noticeable, with a decrease of 1.1% per extra degree.Conclusions: Using a tool like ours could help predict the shape of developing epidemics and its peaks, and would permit to quickly run scenarios to determine the evolution of the epidemic under different conditions. We make EpiGraph source code and epidemic data publicly available.
机译:预测流行病如何发展的细节是因为卫生机构需要更好地计划限制感染传播效应并优化它们的预测和响应能力来说,这种细节是非常有价值的。模拟是一种成本和有效的方法,可预测感染的进化作为许多不同因素的联合影响:互动模式,个人特征,旅行模式,气象条件,先前的疫苗接种等。本文提出的工作延伸通过将气象模型作为模块化成分引入与综述模块的模块化组件来改进我们之前的模拟结果的模块化组件来改善我们的仿真结果。我们的目标是估算温度和相对湿度变化对流行性流感模式的影响,这是基于西班牙流感哨兵监测系统(SISSS)和西班牙气象局(AEMET)提供的数据。我们的气象模型基于AB和JS开发的回归模型,并通过从SISSS获得的流感监控数据进行调整。在预处理此数据以清洁和重建缺少样本后,我们在2011年期间每10分钟获得西班牙每个城市地区的再现数量的新值。我们通过设定流行病的日期来模拟流感的传播以及每个城市地区的初始流感疾病率。我们表明,模拟结果具有与SISSS记录的每周流感率相同的传播形状。我们根据2010-2011的实际气象数据执行实际情况的实验,并且在简化预测气候变化条件下假设的合成值。结果表明,在最终感染率下,10%的相对湿度的相对湿度递减产生约1.6%。温度变化对感染扩散的影响也是明显的,下降1.1%,每个额外的程度为1.1%。结论:使用像我们这样的工具可以帮助预测开发流行病的形状及其峰值,并允许快速运行场景在不同条件下确定流行病的演变。我们将公开可用的凭证源代码和疫情数据。

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