Wang Junyu, Nikolaou Nikolaos, An der Heiden Matthias, Irrgang Christopher
Centre for Artificial Intelligence in Public Health Research, Robert Koch Institute, Berlin, Germany.
Institute of Epidemiology, Helmholtz Munich, German Research Center for Environmental Health, Neuherberg, Germany.
Commun Med (Lond). 2024 Oct 21;4(1):206. doi: 10.1038/s43856-024-00643-3.
Heat has become a leading cause of preventable deaths during summer. Understanding the link between high temperatures and excess mortality is crucial for designing effective prevention and adaptation plans. Yet, data analyses are challenging due to often fragmented data archives over different agglomeration levels.
Using Germany as a case study, we develop a multi-scale machine learning model to estimate heat-related mortality with variable temporal and spatial resolution. This approach allows us to estimate heat-related mortality at different scales, such as regional heat risk during a specific heatwave, annual and nationwide heat risk, or future heat risk under climate change scenarios.
We estimate a total of 48,000 heat-related deaths in Germany during the last decade (2014-2023), and the majority of heat-related deaths occur during specific heatwave events. Aggregating our results over larger regions, we reach good agreement with previously published reports from Robert Koch Institute (RKI). In 2023, the heatwave of July 7-14 contributes approximately 1100 cases (28%) to a total of approximately 3900 heat-related deaths for the whole year. Combining our model with shared socio-economic pathways (SSPs) of future climate change provides evidence that heat-related mortality in Germany could further increase by a factor of 2.5 (SSP245) to 9 (SSP370) without adaptation to extreme heat under static sociodemographic developments assumptions.
Our approach is a valuable tool for climate-driven public health strategies, aiding in the identification of local risks during heatwaves and long-term resilience planning.
在夏季,高温已成为可预防死亡的主要原因。了解高温与超额死亡率之间的联系对于制定有效的预防和适应计划至关重要。然而,由于不同集聚水平的数据档案往往零散,数据分析具有挑战性。
以德国为例,我们开发了一种多尺度机器学习模型,以可变的时间和空间分辨率估计与高温相关的死亡率。这种方法使我们能够在不同尺度上估计与高温相关的死亡率,例如特定热浪期间的区域高温风险、年度和全国范围的高温风险,或气候变化情景下的未来高温风险。
我们估计在过去十年(2014 - 2023年)德国共有48000例与高温相关的死亡,且大多数与高温相关的死亡发生在特定的热浪事件期间。将我们在更大区域的结果汇总后,我们与罗伯特·科赫研究所(RKI)之前发表的报告达成了良好的一致性。在2023年,7月7日至14日的热浪导致全年约3900例与高温相关的死亡病例中约有1100例(28%)。将我们的模型与未来气候变化的共享社会经济路径(SSP)相结合表明,在静态社会人口发展假设下,如果不适应极端高温,德国与高温相关的死亡率可能会进一步增加2 . 5倍(SSP245)至9倍(SSP370)。
我们的方法是气候驱动的公共卫生策略的宝贵工具,有助于识别热浪期间的局部风险和长期恢复力规划。