Hiatt Robert A, Porco Travis C, Liu Fengchen, Balke Kaya, Balmain Allan, Barlow Janice, Braithwaite Dejana, Diez-Roux Ana V, Kushi Lawrence H, Moasser Mark M, Werb Zena, Windham Gayle C, Rehkopf David H
Department of Epidemiology and Biostatistics, Helen Diller Family Comprehensive Cancer Center, University of California San Francisco, San Francisco, California.
Department of Epidemiology and Biostatistics, Helen Diller Family Comprehensive Cancer Center, University of California San Francisco, San Francisco, California. Francis I. Proctor Foundation, University of California San Francisco, San Francisco, California.
Cancer Epidemiol Biomarkers Prev. 2014 Oct;23(10):2078-92. doi: 10.1158/1055-9965.EPI-14-0403. Epub 2014 Jul 13.
Breast cancer has a complex etiology that includes genetic, biologic, behavioral, environmental, and social factors. Etiologic factors are frequently studied in isolation with adjustment for confounding, mediating, and moderating effects of other factors. A complex systems model approach may present a more comprehensive picture of the multifactorial etiology of breast cancer.
We took a transdisciplinary approach with experts from relevant fields to develop a conceptual model of the etiology of postmenopausal breast cancer. The model incorporated evidence of both the strength of association and the quality of the evidence. We operationalized this conceptual model through a mathematical simulation model with a subset of variables, namely, age, race/ethnicity, age at menarche, age at first birth, age at menopause, obesity, alcohol consumption, income, tobacco use, use of hormone therapy (HT), and BRCA1/2 genotype.
In simulating incidence for California in 2000, the separate impact of individual variables was modest, but reduction in HT, increase in the age at menarche, and to a lesser extent reduction in excess BMI >30 kg/m(2) were more substantial.
Complex systems models can yield new insights on the etiologic factors involved in postmenopausal breast cancer. Modification of factors at a population level may only modestly affect risk estimates, while still having an important impact on the absolute number of women affected.
This novel effort highlighted the complexity of breast cancer etiology, revealed areas of challenge in the methodology of developing complex systems models, and suggested additional areas for further study.
乳腺癌具有复杂的病因,包括遗传、生物、行为、环境和社会因素。病因因素通常在对其他因素的混杂、中介和调节作用进行调整的情况下单独进行研究。复杂系统模型方法可能会更全面地呈现乳腺癌多因素病因的情况。
我们采用跨学科方法,与相关领域的专家共同开发了一个绝经后乳腺癌病因的概念模型。该模型纳入了关联强度和证据质量两方面的证据。我们通过一个包含部分变量的数学模拟模型将这个概念模型进行了实际应用,这些变量包括年龄、种族/民族、初潮年龄、首次生育年龄、绝经年龄、肥胖、饮酒、收入、吸烟、激素疗法(HT)的使用以及BRCA1/2基因型。
在模拟2000年加利福尼亚州的发病率时,单个变量的单独影响较小,但激素疗法的减少、初潮年龄的增加以及在较小程度上超重BMI>30 kg/m²的减少影响更为显著。
复杂系统模型可以对绝经后乳腺癌所涉及的病因因素产生新的见解。在人群层面改变因素可能只会对风险估计产生较小影响,但对受影响女性的绝对数量仍有重要影响。
这项新的研究突出了乳腺癌病因的复杂性,揭示了开发复杂系统模型方法中的挑战领域,并提出了更多有待进一步研究的领域。