Publication related to RSI or an RSI staff member

Spatial analysis of the air pollution-mortality relationship in the context of ecologic confounders.

Authors

  • Jerrett, Michael, Jerrett M, School of Geography and Geology, McMaster University, Hamilton, Ontario, Canada. jerrettm@mcmaster.ca

  • Burnett, Richard T, Burnett RT,

  • Willis, Alette, Willis A,

  • Krewski, Daniel, Krewski D,

  • Goldberg, Mark S, Goldberg MS,

  • DeLuca, Patrick, DeLuca P,

  • Finkelstein, Norm, Finkelstein N,

YEAR OF PUBLICATION: 2003
SOURCE: J Toxicol Environ Health A. 2003 Aug 22-Oct 10;66(16-19):1735-77. doi: 10.1080/15287390306438.
JOURNAL TITLE ABBREVIATION: J Toxicol Environ Health A
JOURNAL TITLE: Journal of toxicology and environmental health. Part A
ISSN: 1528-7394 (Print) 0098-4108 (Linking)
VOLUME: 66
ISSUE: 16-19
PAGES: 1735-77
PLACE OF PUBLICATION: England
ABSTRACT:

Lack of control for confounding by ecological covariates that may relate to sulfate air pollution and mortality was a key criticism of the two studies that were the focus of the Particle Reanalysis Project. To assess the validity of this criticism, we address the question: "Does sulfate air pollution exert health effects when the impact of other individual and ecologic variables thought to influence health is taken into account?" A related question arises from the possibility of autocorrelation in the mortality risks and ecologic covariates. Failure to control for autocorrelation can lead to false positive significance tests and may indicate bias resulting from a missing variable or group of variables. We control for more than 25 individual risk factors and for 20 ecologic variables representing environmental, socioeconomic, demographic, health- care, and lifestyle determinants of health in a two-stage multilevel analysis. Four modeling strategies are used to control for spatial autocorrelation. Of the 20 ecologic variables tested, only sulfate and sulfur dioxide are significant in models that incorporate spatial autocorrelation. Accounting for autocorrelation also reduces the size and certainty of the sulfate effect on mortality when compared to results generated from Cox models where independent observations are assumed. Confidence limits for the sulfate relative risk include unity in models that simultaneously control for sulfur dioxide and autocorrelation.

LANGUAGE: eng
DATE OF PUBLICATION: 2003 Aug 22-Oct 10
DATE COMPLETED: 20031027
DATE REVISED: 20060216
MESH DATE: 2003/10/28 05:00
EDAT: 2003/09/10 05:00
STATUS: MEDLINE
PUBLICATION STATUS: ppublish
COMMENT IN:
OWNER: NLM

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Daniel Krewski

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Dr. Daniel Krewski is Chief Risk Scientist and co-founder of Risk Sciences International (RSI), a firm established in 2006 to bring evidence-based, multidisciplinary expertise to the challenge of understanding, managing, and communicating risk. As RSI’s inaugural CEO and long-time scientific...
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