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首页> 外文期刊>plos computational biology >Meteorological factors and non-pharmaceutical interventions explain local differences in the spread of SARS-CoV-2 in Austria
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Meteorological factors and non-pharmaceutical interventions explain local differences in the spread of SARS-CoV-2 in Austria

机译:气象因素和非药物干预措施解释了奥地利SARS-CoV-2传播的局部差异

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摘要

The drivers behind regional differences of SARS-CoV-2 spread on finer spatio-temporal scales are yet to be fully understood. Here we develop a data-driven modelling approach based on an age-structured compartmental model that compares 116 Austrian regions to a suitably chosen control set of regions to explain variations in local transmission rates through a combination of meteorological factors, non-pharmaceutical interventions and mobility. We find that more than 60 of the observed regional variations can be explained by these factors. Decreasing temperature and humidity, increasing cloudiness, precipitation and the absence of mitigation measures for public events are the strongest drivers for increased virus transmission, leading in combination to a doubling of the transmission rates compared to regions with more favourable weather. We conjecture that regions with little mitigation measures for large events that experience shifts toward unfavourable weather conditions are particularly predisposed as nucleation points for the next seasonal SARS-CoV-2 waves.
机译:SARS-CoV-2在更精细的时空尺度上传播的区域差异背后的驱动因素尚未完全了解。在这里,我们开发了一种基于年龄结构区室模型的数据驱动的建模方法,该模型将 116 个奥地利地区与适当选择的对照区域集进行比较,以通过气象因素、非药物干预和流动性的组合来解释当地传播率的变化。我们发现,超过60%的观测到的区域差异可以用这些因素来解释。温度和湿度降低、云量增加、降水增加以及缺乏针对公共活动的缓解措施是病毒传播增加的最强驱动因素,与天气更有利的地区相比,导致传播率翻了一番。我们推测,对经历不利天气条件转变的大型事件几乎没有缓解措施的地区特别容易成为下一个季节性 SARS-CoV-2 浪潮的成核点。

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