What can be learnt from models of incidence rates?
- PMID: 16762045
- PMCID: PMC1557732
- DOI: 10.1186/bcr1414
What can be learnt from models of incidence rates?
Abstract
Models of breast cancer incidence have evolved from the observation by Armitage and Doll in the 1950s that the pattern of incidence by age differs for reproductive cancers from those of other major malignancies. Both two-stage and multistage models have been applied to breast cancer incidence. Consistent across modeling approaches, risk accumulation or the rate of increase in breast cancer incidence is most rapid from menarche to first birth. Models that account for the change in risk after menopause and the temporal sequence of reproductive events summarize risk efficiently and give added insights to potentially important mechanistic features. First pregnancy has an adverse impact on progesterone receptor negative tumors, while increasing parity reduces the risk of estrogen/progesterone receptor positive tumors but not estrogen/progesterone receptor negative tumors. Integrated prediction models that incorporate prediction of carrier status for highly penetrant genes and also account for lifestyle factors, mammographic density, and endogenous hormone levels remain to be efficiently implemented. Models that both inform and reflect the emerging understanding of the molecular and cell biology of carcinogenesis are still a long way off.
Figures
References
-
- Kaldor J, Day N. Mathematical models in cancer epidemiology. In: Schottenfeld D, Fraumeni J, editor. Cancer Epidemiology. New York:Oxford University Press; 1996. pp. 127–137.
-
- Fisher JC, Hollomon JH. A hypothesis for the origin of cancer foci. Cancer. 1951;4:916–918. - PubMed
-
- Moolgavkar S. Cancer models. Epidemiol. 1990;1:419–420. - PubMed
Publication types
MeSH terms
Substances
Grants and funding
LinkOut - more resources
Full Text Sources
Medical
Research Materials
