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A Comparative Analysis of the Temperature‐Mortality Risks Using Different Weather Datasets Across Heterogeneous Regions

机译:异构地区不同天气数据集的温度死亡风险的比较分析

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New gridded climate datasets (GCDs) on spatially resolved modeled weather data have recently been released to explore the impacts of climate change. GCDs have been suggested as potential alternatives to weather station data in epidemiological assessments on health impacts of temperature and climate change. These can be particularly useful for assessment in regions that have remained understudied due to limited or low quality weather station data. However to date, no study has critically evaluated the application of GCDs of variable spatial resolution in temperature‐mortality assessments across regions of different orography, climate, and size. Here we explored the performance of population‐weighted daily mean temperature data from the global ERA5 reanalysis dataset in the 10 regions in the United Kingdom and the 26 cantons in Switzerland, combined with two local high‐resolution GCDs (HadUK‐grid UKPOC‐9 and MeteoSwiss‐grid‐product, respectively) and compared these to weather station data and unweighted homologous series. We applied quasi‐Poisson time series regression with distributed lag nonlinear models to obtain the GCD‐ and region‐specific temperature‐mortality associations and calculated the corresponding cold‐ and heat‐related excess mortality. Although the five exposure datasets yielded different average area‐level temperature estimates, these deviations did not result in substantial variations in the temperature‐mortality association or impacts. Moreover, local population‐weighted GCDs showed better overall performance, suggesting that they could be excellent alternatives to help advance knowledge on climate change impacts in remote regions with large climate and population distribution variability, which has remained largely unexplored in present literature due to the lack of reliable exposure data. Plain Language Summary Thus far, most studies attempting to study the impact of heat and cold on health have used data from weather stations around cities as a proxy for the temperature exposure of a population. Recently, new spatially resolved weather datasets have been released, which provide continuous temperature measurements at local or global scale, and can be particularly useful for supplying data in regions with limited or low quality weather station data. In this study, we aimed to explore the performance of these newly developed exposure datasets compared to weather stations in the United Kingdom and Switzerland, two regions which are heterogeneous in terms of topography and population distribution. We found that despite different temperature observations the datasets yield very similar results. In particular, high‐resolution population‐weighted temperature datasets showed better performance and thus it can be a good alternative to weather stations, especially in densely populated urban areas with large intracity temperature variability. Key Points New products on spatially resolved weather datasets have become available but little is known on their suitability in health studies Here, different exposure datasets yielded similar patterns in temperature‐mortality impacts across heterogeneous areas Globally available modeled weather data could help advance knowledge on health impacts in areas with limited weather station data
机译:最近发布了空间解决模型天气数据的新网格的气候数据集(GCDS)以探讨气候变化的影响。 GCD已被建议作为流行病学评估中的气象站数据的潜在替代方案对健康和气候变化的健康影响。这些对于由于有限或低质量的气象站数据而持续被解读的区域中的评估特别有用。然而,迄今为止,迄今为止,没有评估在不同地区,气候和大小区域的温度死亡率评估中在温度死亡率评估中应用GCD的应用。在这里,我们探讨了来自英国的10个地区的全球ERA5 Reanalysic DataSet的人口加权每日平均温度数据的表现,以及瑞士的26个州,与两种当地的高分辨率GCD(Haduk-Grid Ukpoc-9和Meteoswiss-Grid-Product分别)并将这些与气象站数据和未加权的同源系列相比。我们应用了分布式滞后非线性模型的准泊松时间序列回归,以获得GCD和区域特异性温度死亡率,并计算出相应的冷和热相关的过度死亡率。尽管五个曝光数据集产生了不同的平均面积水平温度估计,但这些偏差不会导致温度 - 死亡率结合或影响的大量变化。此外,当地的人口加权的GCD表现出更好的整体性能,这表明他们可能是帮助推进气候变化影响的偏远地区具有很大的气候和人口分配变异性的知识,这仍然在缺乏缺乏的情况下仍然很大程度上未开发。由于缺乏可靠的曝光数据。迄今为止普通语言概要,大多数试图研究热量和寒冷对健康的影响的研究已经使用来自城市周围的天气电台的数据作为群体温度暴露的代理。最近,已经释放了新的空间解决的天气数据集,该数据集在本地或全球范围内提供连续的温度测量,并且可以特别有用用于在具有有限或低质量的气象站数据中提供数据。在这项研究中,我们的旨在探讨这些新开发的曝光数据集的表现与英国和瑞士的气象站相比,两个地区在地形和人口分布方面是异质的。我们发现,尽管有不同的温度观察,但数据集产生了非常相似的结果。特别地,高分辨率群体加权温度数据集显示出更好的性能,因此它可以是气象站的良好替代方案,特别是在具有较大的血管间温度变异性的浓密的城市地区。关键点在空间附加的天气数据集上的新产品已变得可用,但在此处的适用性众所周知,不同的曝光数据集在全相区域的温度 - 死亡率影响中产生了类似的模式,这些模型可获得的天气数据可以帮助推进健康影响的知识在有限的气象站数据的地区

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