Individual- and county-level determinants of high breast cancer incidence rates
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Date
2019-07
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Abstract
Background: Age-adjusted breast cancer rates vary across and within states. However, most statistical models inherently identify either individual- or area-level determinants to explain geographic disparities in breast cancer rates and ignore the effects of the other level of determinants. We present a micro-macro modelling approach that incorporates both levels of determinants to better explain this variability and to discover opportunities to reduce breast cancer rates. Methods: Individual-level data about breast cancer risk factors from eligible Arkansas Rural Community Health (ARCH) study participants (n=13,554) was supplemented with publicly available county-level data using a novel micro-macro statistical approach. This model uses individual-level data to account for aggregation-induced biases, to predict county-level breast cancer incidence rates across Arkansas. Results: County-level breast cancer incidence rates ranged from 80.9 to 161.6 per 100,000 population. The best-fit model, which included individual-level predicted risk based on the Gail/CARE models, county-level population density (log transformed), and lead exposure (log transformed), explained 14.1% of the county variance. Conclusions: Our results support theoretical models that maintain that area-level determinants of breast cancer incidence are key risk factors in addition to established individual risks.
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This record is for a(n) offprint of an article published in Translational Cancer Research in 2019-07; the version of record is available at https://doi.org/10.21037/tcr.2019.06.08.
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Schootman, Mario, et al. "Individual- and county-level determinants of high breast cancer incidence rates." Translational Cancer Research, vol. 8, no. 4, pp. S323-S333, 2019-07, https://doi.org/10.21037/tcr.2019.06.08.
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Translational Cancer Research