Derivation of background mortality by smoking and obesity in cancer simulation models Journal Article


Authors: Wang, Y. C.; Graubard, B. I.; Rosenberg, M. A.; Kuntz, K. M.; Zauber, A. G.; Kahle, L.; Schechter, C. B.; Feuer, E. J.
Article Title: Derivation of background mortality by smoking and obesity in cancer simulation models
Abstract: Background. Simulation models designed to evaluate cancer prevention strategies make assumptions on background mortality - the competing risk of death from causes other than the cancer being studied. Researchers often use the U.S. life tables and assume homogeneous other-cause mortality rates. However, this can lead to bias because common risk factors such as smoking and obesity also predispose individuals for deaths from other causes such as cardiovascular disease. Methods. We obtained calendar year-, age-, and sex-specific other-cause mortality rates by removing deaths due to a specific cancer from U.S. all-cause life tables. Prevalence across 12 risk factor groups (3 smoking [never, past, and current smoker] and 4 body mass index [BMI] categories [<25, 25-30, 30-35, 35+ kg/m2]) were estimated from national surveys (National Health and Nutrition Examination Surveys [NHANES] 1971-2004). Using NHANES linked mortality data, we estimated hazard ratios for death by BMI/smoking using a Poisson regression model. Finally, we combined these results to create 12 sets of BMI and smoking-specific other-cause life tables for U.S. adults aged 40 years and older that can be used in simulation models of lung, colorectal, or breast cancer. Results. We found substantial differences in background mortality when accounting for BMI and smoking. Ignoring the heterogeneity in background mortality in cancer simulation models can lead to underestimation of competing risk of deaths for higher-risk individuals (e.g., male, 60-year old, white obese smokers) by as high as 45%. Conclusion. Not properly accounting for competing risks of death may introduce bias when using simulation modeling to evaluate population health strategies for prevention, screening, or treatment. Further research is warranted on how these biases may affect cancer-screening strategies targeted at high-risk individuals.
Keywords: background mortality; cancer simulation; life tables
Journal Title: Medical Decision Making
Volume: 33
Issue: 2
ISSN: 0272-989X
Publisher: Sage Publications  
Date Published: 2013-02-01
Start Page: 176
End Page: 197
Language: English
DOI: 10.1177/0272989x12458725
PROVIDER: scopus
PUBMED: 23132901
PMCID: PMC3663442
DOI/URL:
Notes: --- - "Export Date: 1 April 2013" - "CODEN: MDMAD" - "Source: Scopus"
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  1. Ann G Zauber
    314 Zauber