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Furthering a Partnership: Air quality modeling and improving public health.
Journal of the Air & Waste Management Association ( IF 2.7 ) Pub Date : 2021-01-14
Sherri W. Hunt, Darrell A. Winner, Karen Wesson, James T. Kelly

Abstract

Air pollution is one of the top five risk factors for population health globally (Health Effects Institute 2019). In recent years, advances in air pollution data and modeling have occurred simultaneously with advances in data and methods available for health studies. To realize the potential of such advances, the air quality modeling and public health communities should continue to strengthen their engagements and build effective interdisciplinary teams. These partnerships recognize the tight coupling between air quality and health data and methods and the value of expertise from multiple fields to ensure that this information is applied appropriately with a deep understanding of its capabilities and limitations. Building effective multidisciplinary teams takes a sustained commitment to engage with partners with different expertise to establish working partnerships and collaborations to better address public exposures to air pollution. Effective partnerships enable better targeting of research resources to answer important questions and provide essential information to protect public health.

Implications Statement

Air quality models are an effective tool that can be used to estimate air pollution exposure in epidemiologic studies and risk assessments. Working together in collaborative multidisciplinary teams will lead to greater advancements in understanding of air pollution impacts and in useful information informing actions to improve public health.



中文翻译:

促进合作:空气质量建模和改善公共卫生。

摘要

空气污染是全球人口健康的五大风险因素之一(Health Effects Institute 2019)。近年来,空气污染数据和建模的进步与健康研究可用的数据和方法的进步同时发生。为了实现这种进步的潜力,空气质量建模和公共卫生界应继续加强其参与并建立有效的跨学科团队。这些伙伴关系认识到空气质量与健康数据和方法之间的紧密联系,以及来自多个领域的专业知识的价值,以确保在深入了解其功能和局限性的前提下正确应用这些信息。建立有效的多学科团队将持续致力于与具有不同专业知识的合作伙伴建立合作关系,以更好地解决公众对空气污染的影响。有效的伙伴关系可以更好地确定研究资源的用途,以回答重要问题并提供必要的信息来保护公共卫生。

暗示声明

空气质量模型是一种有效的工具,可用于在流行病学研究和风险评估中估算空气污染暴露。与多学科协作小组的共同努力将使人们在了解空气污染影响和提供有益信息以采取行动改善公共卫生方面取得更大的进步。

更新日期:2021-01-14
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