Department of Biomedical Informatics, Harvard Medical School, Boston, MA, USA.
Department of Biomedical Informatics, Harvard Medical School, Boston, MA, USA; School of Public Health and Primary Care, The Chinese University of Hong Kong, Hong Kong SAR, China; Institute of Environment, Energy and Sustainability, The Chinese University of Hong Kong, Hong Kong, China.
Environ Res. 2023 Nov 15;237(Pt 2):116984. doi: 10.1016/j.envres.2023.116984. Epub 2023 Aug 28.
Robust spatio-temporal delineation of extreme climate events and accurate identification of areas that are impacted by an event is a prerequisite for identifying population-level and health-related risks. In prior research, attributes such as temperature and humidity have often been linearly assigned to the population of the study unit from the closest weather station. This could result in inaccurate event delineation and biased assessment of extreme heat exposure. We have developed a spatio-temporal model to dynamically delineate boundaries for Extreme Heat Events (EHE) across space and over time, using a relative measure of Apparent Temperature (AT). Our surface interpolation approach offers a higher spatio-temporal resolution compared to the standard nearest-station (NS) assignment method. We show that the proposed approach can provide at least 80.8 percent improvement in identification of areas and populations impacted by EHEs. This improvement in average adjusts the misclassification of about one million Californians per day of an extreme event, who would be either unidentified or misidentified under EHEs between 2017 and 2021.
稳健的极端气候事件时空划分,以及准确识别受事件影响的区域,是识别人群层面和与健康相关风险的前提条件。在之前的研究中,温度和湿度等属性通常是根据最近的气象站将研究单位的人群线性分配。这可能导致事件划分不准确和对极端热暴露的评估存在偏差。我们开发了一种时空模型,使用相对体感温度(AT)对极端热事件(EHE)进行跨时空的边界动态划分。与标准最近气象站(NS)分配方法相比,我们的表面插值方法具有更高的时空分辨率。我们表明,所提出的方法可以至少提高 80.8%的 EHE 影响地区和人群的识别率。这种平均改进调整了每天约 100 万加利福尼亚人因极端事件而产生的错误分类,在 2017 年至 2021 年间,这些人要么无法识别,要么错误识别为 EHE。