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Article: Improving population attributable fraction methods: Examining smoking-attributable mortality for 87 geographic regions in Canada

TitleImproving population attributable fraction methods: Examining smoking-attributable mortality for 87 geographic regions in Canada
Authors
KeywordsBias (epidemiology)
Effect modifiers (epidemiology)
Epidemiologic methods
Mortality
Prevalence
Risk
Smoking
Issue Date2005
Citation
American Journal of Epidemiology, 2005, v. 161, n. 8, p. 787-798 How to Cite?
AbstractSmoking-attributable mortality (SAM) is the number of deaths in a population caused by smoking. In this study, the authors examined and empirically quantified the effects of methodological problems in the estimation of SAM through population attributable fraction methods. In addition to exploring common concerns regarding generalizability and residual confounding in relative risks, the authors considered errors in measuring estimates of risk exposure prevalence and mortality in target populations and estimates of relative risks from etiologic studies. They also considered errors resulting from combining these three sources of data. By modifying SAM estimates calculated using smoking prevalence obtained from the 2000-2001 Canadian Community Health Survey, a population-based survey of 131,535 Canadian households, the authors observed the following effects of potential errors on estimated national SAM (and the range of effects on 87 regional SAMs): 1) using a slightly biased, mismatched definition of former smoking: 5.3% (range, 1.8% to 11.6%); 2) using age-collapsed prevalence and relative risks: 6.9% (range, 1.1% to 15.5%) and -15.4% (range, -7.9% to -21.0%), respectively; 3) using relative risks derived from the same cohort but with a shorter follow-up period: 8.7% (range, 4.5% to 11.8%); 4) using relative risks for all diseases with age-collapsed prevalence: 49.7% (range, 24.1% to 82.2%); and 5) using prevalence estimates unadjusted for exposure-outcome lag: -14.5% (range, -20.8% to 42.6%) to -1.4% (range, -0.8% to -2.7%), depending on the method of adjustment. Applications of the SAM estimation method should consider these sources of potential error. Copyright © 2005 by the Johns Hopkins Bloomberg School of Public Health All rights reserved.
Persistent Identifierhttp://hdl.handle.net/10722/346531
ISSN
2023 Impact Factor: 5.0
2023 SCImago Journal Rankings: 0.837

 

DC FieldValueLanguage
dc.contributor.authorTanuseputro, Peter-
dc.contributor.authorManuel, Douglas G.-
dc.contributor.authorSchultz, Susan E.-
dc.contributor.authorJohansen, Helen-
dc.contributor.authorMustard, Cameron A.-
dc.date.accessioned2024-09-17T04:11:32Z-
dc.date.available2024-09-17T04:11:32Z-
dc.date.issued2005-
dc.identifier.citationAmerican Journal of Epidemiology, 2005, v. 161, n. 8, p. 787-798-
dc.identifier.issn0002-9262-
dc.identifier.urihttp://hdl.handle.net/10722/346531-
dc.description.abstractSmoking-attributable mortality (SAM) is the number of deaths in a population caused by smoking. In this study, the authors examined and empirically quantified the effects of methodological problems in the estimation of SAM through population attributable fraction methods. In addition to exploring common concerns regarding generalizability and residual confounding in relative risks, the authors considered errors in measuring estimates of risk exposure prevalence and mortality in target populations and estimates of relative risks from etiologic studies. They also considered errors resulting from combining these three sources of data. By modifying SAM estimates calculated using smoking prevalence obtained from the 2000-2001 Canadian Community Health Survey, a population-based survey of 131,535 Canadian households, the authors observed the following effects of potential errors on estimated national SAM (and the range of effects on 87 regional SAMs): 1) using a slightly biased, mismatched definition of former smoking: 5.3% (range, 1.8% to 11.6%); 2) using age-collapsed prevalence and relative risks: 6.9% (range, 1.1% to 15.5%) and -15.4% (range, -7.9% to -21.0%), respectively; 3) using relative risks derived from the same cohort but with a shorter follow-up period: 8.7% (range, 4.5% to 11.8%); 4) using relative risks for all diseases with age-collapsed prevalence: 49.7% (range, 24.1% to 82.2%); and 5) using prevalence estimates unadjusted for exposure-outcome lag: -14.5% (range, -20.8% to 42.6%) to -1.4% (range, -0.8% to -2.7%), depending on the method of adjustment. Applications of the SAM estimation method should consider these sources of potential error. Copyright © 2005 by the Johns Hopkins Bloomberg School of Public Health All rights reserved.-
dc.languageeng-
dc.relation.ispartofAmerican Journal of Epidemiology-
dc.subjectBias (epidemiology)-
dc.subjectEffect modifiers (epidemiology)-
dc.subjectEpidemiologic methods-
dc.subjectMortality-
dc.subjectPrevalence-
dc.subjectRisk-
dc.subjectSmoking-
dc.titleImproving population attributable fraction methods: Examining smoking-attributable mortality for 87 geographic regions in Canada-
dc.typeArticle-
dc.description.naturelink_to_subscribed_fulltext-
dc.identifier.doi10.1093/aje/kwi093-
dc.identifier.pmid15800272-
dc.identifier.scopuseid_2-s2.0-17044371484-
dc.identifier.volume161-
dc.identifier.issue8-
dc.identifier.spage787-
dc.identifier.epage798-

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