Kim Honghyok, Bell Michelle L
Division of Environmental and Occupational Health Sciences, School of Public Health, University of Illinois Chicago, Chicago, IL 60612, United States.
School of the Environment, Yale University, New Haven, CT 06511, United States.
Am J Epidemiol. 2024 Dec 2;193(12):1814-1822. doi: 10.1093/aje/kwae078.
Defining the effect of an exposure of interest and selecting an appropriate estimation method are prerequisites for causal inference. Current understanding of the ways in which an association between heat waves (ie, consecutive days of extremely high temperature) and an outcome depends on whether adjustment was made for temperature and how such adjustment was conducted is limited. In this paper we aim to investigate this dependency, demonstrate that temperature is a confounder in heat-wave-outcome associations, and introduce a new modeling approach with which to estimate a new heat-wave-outcome relationship: E[R(Y)|HW = 1, Z]/E[R(Y)|T = OT, Z], where HW is a daily binary variable used to indicate the presence of a heat wave; R(Y) is the risk of an outcome, Y; T is a temperature variable; OT is optimal temperature; and Z is a set of confounders including typical confounders but also some types of T as a confounder. We recommend characterization of heat-wave-outcome relationships and careful selection of modeling approaches to understand the impacts of heat waves under climate change. We demonstrate our approach using real-world data for Seoul, South Korea. Our demonstration suggests that the total effect of heat waves may be larger than what may be inferred from the extant literature. An R package, HEAT, has been developed and made publicly available. This article is part of a Special Collection on Environmental Epidemiology.
确定感兴趣暴露因素的效应并选择合适的估计方法是因果推断的前提条件。目前对于热浪(即连续多日极高温度)与结果之间的关联如何取决于是否对温度进行了调整以及这种调整是如何进行的了解有限。在本文中,我们旨在研究这种依赖性,证明温度是热浪与结果关联中的混杂因素,并引入一种新的建模方法来估计一种新的热浪与结果的关系:E[R(Y)|HW = 1, Z]/E[R(Y)|T = OT, Z],其中HW是用于表示热浪存在的每日二元变量;R(Y)是结果Y的风险;T是温度变量;OT是最佳温度;Z是一组混杂因素,包括典型的混杂因素,也包括某些类型作为混杂因素的T。我们建议对热浪与结果的关系进行特征描述,并谨慎选择建模方法,以了解气候变化下热浪的影响。我们使用韩国首尔的实际数据来展示我们的方法。我们的展示表明,热浪的总体效应可能比现有文献推断的更大。已经开发并公开了一个R包HEAT。本文是环境流行病学特刊的一部分。