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极端降水暴露评估中的一致性会因种族和社会脆弱性而有所改变。

Agreement in extreme precipitation exposure assessment is modified by race and social vulnerability.

作者信息

Aune Kyle T, Zaitchik Benjamin F, Curriero Frank C, Davis Meghan F, Smith Genee S

机构信息

Johns Hopkins Bloomberg School of Public Health, Department of Environmental Health and Engineering, Johns Hopkins University, Baltimore, MD, United States.

Johns Hopkins Krieger School of Arts and Sciences, Department of Earth and Planetary Sciences, Johns Hopkins University, Baltimore, MD, United States.

出版信息

Front Epidemiol. 2023 Mar 2;3:1128501. doi: 10.3389/fepid.2023.1128501. eCollection 2023.

Abstract

Epidemiologic investigations of extreme precipitation events (EPEs) often rely on observations from the nearest weather station to represent individuals' exposures, and due to structural factors that determine the siting of weather stations, levels of measurement error and misclassification bias may differ by race, class, and other measures of social vulnerability. Gridded climate datasets provide higher spatial resolution that may improve measurement error and misclassification bias. However, similarities in the ability to identify EPEs among these types of datasets have not been explored. In this study, we characterize the overall and temporal patterns of agreement among three commonly used meteorological data sources in their identification of EPEs in all census tracts and counties in the conterminous United States over the 1991-2020 U.S. Climate Normals period and evaluate the association between sociodemographic characteristics with agreement in EPE identification. Daily precipitation measurements from weather stations in the Global Historical Climatology Network (GHCN) and gridded precipitation estimates from the Parameter-elevation Relationships on Independent Slopes Model (PRISM) and the North American Land Data Assimilation System (NLDAS) were compared in their ability to identify EPEs defined as the top 1% of precipitation events or daily precipitation >1 inch. Agreement among these datasets is fair to moderate from 1991 to 2020. There are spatial and temporal differences in the levels of agreement between ground stations and gridded climate datasets in their detection of EPEs in the United States from 1991 to 2020. Spatial variation in agreement is most strongly related to a location's proximity to the nearest ground station, with areas furthest from a ground station demonstrating the lowest levels of agreement. These areas have lower socioeconomic status, a higher proportion of Native American population, and higher social vulnerability index scores. The addition of ground stations in these areas may increase agreement, and future studies intending to use these or similar data sources should be aware of the limitations, biases, and potential for differential misclassification of exposure to EPEs. Most importantly, vulnerable populations should be engaged to determine their priorities for enhanced surveillance of climate-based threats so that community-identified needs are met by any future improvements in data quality.

摘要

极端降水事件(EPEs)的流行病学调查通常依赖于距离最近的气象站的观测数据来代表个体的暴露情况,并且由于决定气象站选址的结构因素,测量误差和错误分类偏差的程度可能因种族、阶层以及其他社会脆弱性指标而有所不同。网格化气候数据集提供了更高的空间分辨率,这可能会减少测量误差和错误分类偏差。然而,尚未探讨这些类型的数据集在识别极端降水事件能力方面的相似性。在本研究中,我们描述了1991 - 2020年美国气候正常值期间,美国本土所有普查区和县中,三种常用气象数据源在识别极端降水事件方面的总体和时间上的一致性模式,并评估社会人口特征与极端降水事件识别一致性之间的关联。比较了全球历史气候学网络(GHCN)气象站的日降水量测量数据,以及独立斜坡模型(PRISM)和北美陆地数据同化系统(NLDAS)的网格化降水估计数据在识别被定义为降水量最高的前1%事件或日降水量>1英寸的极端降水事件方面的能力。1991年至2020年期间,这些数据集之间的一致性为中等。1991年至2020年期间,在美国,地面站和网格化气候数据集在检测极端降水事件时的一致性水平存在空间和时间差异。一致性的空间变化与一个地点距离最近地面站的远近最为密切相关,距离地面站最远的地区一致性水平最低。这些地区社会经济地位较低,美国原住民人口比例较高,社会脆弱性指数得分也较高。在这些地区增加地面站可能会提高一致性,并且未来打算使用这些或类似数据源的研究应该意识到极端降水事件暴露的局限性、偏差以及潜在的差异错误分类。最重要的是,应该让弱势群体参与进来,以确定他们加强基于气候威胁监测的优先事项,以便未来数据质量的任何改进都能满足社区确定的需求。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7271/10911001/275eb3566e82/fepid-03-1128501-g001.jpg

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