From the Department of Epidemiology, Herbert Wertheim School of Public Health, University of California San Diego, La Jolla, CA.
Department of Epidemiology and Biostatistics, San Diego State University, San Diego, CA.
Epidemiology. 2022 Nov 1;33(6):788-796. doi: 10.1097/EDE.0000000000001539. Epub 2022 Sep 27.
Traditional epidemiologic approaches such as time-series or case-crossover designs are often used to estimate the effects of extreme weather events but can be limited by unmeasured confounding. Quasi-experimental methods are a family of methods that leverage natural experiments to adjust for unmeasured confounding indirectly. The recently developed generalized synthetic control method that exploits the timing of an exposure is well suited to estimate the impact of acute environmental events on health outcomes. To demonstrate how this method can be used to study extreme weather events, we examined the impact of the 20-26 October 2007 Southern California wildfire storm on respiratory hospitalizations.
We used generalized synthetic control to compare the average number of ZIP code-level respiratory hospitalizations during the wildfire storm between ZIP codes that were classified as exposed versus unexposed to wildfire smoke. We considered wildfire exposure eligibility for each ZIP code using fire perimeters and satellite-based smoke plume data. We retrieved respiratory hospitalization discharge data from the Office of Statewide Health Planning and Development. R code to implement the generalized synthetic control method is included for reproducibility.
The analysis included 172 exposed and 578 unexposed ZIP codes. We estimated that the average effect of the wildfire storm among the exposed ZIP codes was an 18% (95% confidence interval: 10% to 29%) increase in respiratory hospitalizations.
We illustrate the use of generalized synthetic control to leverage natural experiments to quantify the health impacts of extreme weather events when traditional approaches are unavailable or limited by assumptions.
传统的流行病学方法,如时间序列或病例交叉设计,通常用于估计极端天气事件的影响,但可能受到未测量混杂因素的限制。准实验方法是一类利用自然实验来间接调整未测量混杂因素的方法。最近开发的利用暴露时间的广义综合控制方法非常适合估计急性环境事件对健康结果的影响。为了演示如何使用这种方法来研究极端天气事件,我们研究了 2007 年 10 月 20 日至 26 日南加州野火风暴对呼吸住院的影响。
我们使用广义综合控制来比较野火风暴期间暴露于野火烟雾的邮政编码与未暴露于野火烟雾的邮政编码的呼吸道住院人数。我们使用火灾周边和基于卫星的烟雾羽流数据来确定每个邮政编码的野火暴露资格。我们从全州卫生规划与发展办公室检索呼吸道住院出院数据。为了可重复性,包含了实施广义综合控制方法的 R 代码。
分析包括 172 个暴露和 578 个未暴露的邮政编码。我们估计,暴露于野火的邮政编码中,野火风暴的平均影响是呼吸道住院人数增加 18%(95%置信区间:10%至 29%)。
我们说明了如何使用广义综合控制来利用自然实验来量化极端天气事件对健康的影响,当传统方法不可用或受到假设限制时。