4.5 Review

Current approaches used in epidemiologic studies to examine short-term multipollutant air pollution exposures

期刊

ANNALS OF EPIDEMIOLOGY
卷 27, 期 2, 页码 145-153

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.annepidem.2016.11.016

关键词

Air pollution health effects; Joint effects; Multipollutant; Dimension reduction; Nonparametric methods; Interactions; Differential effects

资金

  1. National Institute of Environmental Health Sciences [R01 ES020619, T32 ES007018]

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Purpose: Air pollution epidemiology traditionally focuses on the relationship between individual air pollutants and health outcomes (e.g., mortality). To account for potential copollutant confounding, individual pollutant associations are often estimated by adjusting or controlling for other pollutants in the mixture. Recently, the need to characterize the relationship between health outcomes and the larger multipollutant mixture has been emphasized in an attempt to better protect public health and inform more sustainable air quality management decisions. Methods: New and innovative statistical methods to examine multipollutant exposures were identified through a broad literature search, with a specific focus on those statistical approaches currently used in epidemiologic studies of short-term exposures to criteria air pollutants (i.e., particulate matter, carbon monoxide, sulfur dioxide, nitrogen dioxide, and ozone). Results: Five broad classes of statistical approaches were identified for examining associations between short-term multipollutant exposures and health outcomes, specifically additive main effects, effect measure modification, unsupervised dimension reduction, supervised dimension reduction, and nonparametric methods. These approaches are characterized including advantages and limitations in different epidemiologic scenarios. Discussion: By highlighting the characteristics of various studies in which multipollutant statistical methods have been used, this review provides epidemiologists and biostatisticians with a resource to aid in the selection of the most optimal statistical method to use when examining multipollutant exposures. Published by Elsevier Inc.

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