Publication related to RSI or an RSI staff member

Exploring bias in a generalized additive model for spatial air pollution data.

During the past few years, the generalized additive model (GAM) has become a standard tool for epidemiologic analysis exploring the effect of air pollution on population health. Recently, the use of the GAM has been extended from time-series data to spatial data. Still more recently, it has been suggested that the use of GAMs to analyze time-series data results in air pollution risk estimates being biased upward and that concurvity in the time-series data results in standard error estimates being biased downward. We show that concurvity in spatial data can lead to underestimation of the standard error of the estimated air pollution effect, even when using an asymptotically unbiased standard error estimator. We also show that both the magnitude and direction of the bias in the air pollution effect depend, at least in part, on the nature of the concurvity. We argue that including a nonparametric function of location in a GAM for spatial epidemiologic data can be expected to result in concurvity. As a result, we recommend caution in using the GAM to analyze this type of data.

Authors

  • Ramsay, Timothy, Ramsay T, R. Samuel McLaughlin Centre for Population Health Risk Assessment, Ottawa, Ontario, Canada. tramsay@uottawa.ca

  • Burnett, Richard, Burnett R,

  • Krewski, Daniel, Krewski D,

YEAR OF PUBLICATION: 2003
SOURCE: Environ Health Perspect. 2003 Aug;111(10):1283-8. doi: 10.1289/ehp.6047.
JOURNAL TITLE ABBREVIATION: Environ Health Perspect
JOURNAL TITLE: Environmental health perspectives
ISSN: 0091-6765 (Print) 0091-6765 (Linking)
VOLUME: 111
ISSUE: 10
PAGES: 1283-8
PLACE OF PUBLICATION: United States
ABSTRACT:
During the past few years, the generalized additive model (GAM) has become a standard tool for epidemiologic analysis exploring the effect of air pollution on population health. Recently, the use of the GAM has been extended from time-series data to spatial data. Still more recently, it has been suggested that the use of GAMs to analyze time-series data results in air pollution risk estimates being biased upward and that concurvity in the time-series data results in standard error estimates being biased downward. We show that concurvity in spatial data can lead to underestimation of the standard error of the estimated air pollution effect, even when using an asymptotically unbiased standard error estimator. We also show that both the magnitude and direction of the bias in the air pollution effect depend, at least in part, on the nature of the concurvity. We argue that including a nonparametric function of location in a GAM for spatial epidemiologic data can be expected to result in concurvity. As a result, we recommend caution in using the GAM to analyze this type of data.
LANGUAGE: eng
DATE OF PUBLICATION: 2003 Aug
DATE COMPLETED: 20030916
DATE REVISED: 20181113
MESH DATE: 2003/09/17 05:00
EDAT: 2003/08/05 05:00
STATUS: MEDLINE
PUBLICATION STATUS: ppublish
OWNER: NLM

Related RSI Experts

Daniel Krewski

Chief Risk Scientist

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...
Read More about Daniel Krewski