| Literature DB >> 31839883 |
Zhenzhen Zhang1, Jeffrey Bien2, Motomi Mori3,4, Sonali Jindal5, Raymond Bergan1.
Abstract
Cancer is characterized by genetic and molecular aberrations whose number and complexity increase dramatically as cells progress along the spectrum of carcinogenesis. The pharmacologic application of agents in the context of a lower burden of dysregulated cellular processes constitutes an efficient strategy to enhance therapeutic efficacy, and underlies the rationale for using cancer prevention agents in high-risk populations. A longstanding barrier to implementing this strategy is that the risk in the general population is low for any given cancer, many people would have to be treated in order to benefit a few. Therefore, identifying and treating high-risk individuals will improve the risk: benefit ratio. Currently, risk is defined by considering a relatively low number of factors. A strategy that considers multiple factors has the ability to define a much-higher-risk cohort than the general population. This article will review the rationale for evaluating multiple risk factors so as to identify individuals at highest risk. It will use breast and lung cancer as examples, will describe currently available risk assessment tools, and will discuss ongoing efforts to expand the impact of this approach. The high potential of this strategy to provide a way forward for developing cancer prevention therapy will be highlighted.Entities:
Keywords: cancer; multiple risk factors; prevention; prevention therapy; screening
Year: 2019 PMID: 31839883 PMCID: PMC6901339 DOI: 10.18632/oncotarget.27365
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Figure 1General statistical workflow for development and validation of a risk prediction model.
Hypothesized sample size for a prevention therapy trial for lung cancer prevention
| Risk Group | Power | Per Arm | Total | % Event in Control | % Event in Treatment | Treatment/Control Event Ratio | Alpha | % Reduction in Sample Size |
|---|---|---|---|---|---|---|---|---|
| General Population | 0.8 | 27278 | 54556 | 0.006 | 0.008 | 0.75 | 0.05 | 0.0% |
| Bach Model | 0.8 | 10795 | 21590 | 0.015 | 0.02 | 0.75 | 0.05 | 60.4% |
| Spectral Imaging | 0.8 | 5301 | 10602 | 0.03 | 0.04 | 0.75 | 0.05 | 80.6% |
Online breast cancer risk assessment model
| Model or Tool Name | Website | Risk Factors in the Assessment | Application Population | Comments |
|---|---|---|---|---|
|
The Breast Cancer Risk Assessment Tool (BCRAT) Gail Model |
|
History of Breast cancer or DCIS or LCIS or previous radiation therapy to the chest or treatment to Hodgkin lymphoma BRCA1 or BRCA2 gene mutation or a genetic syndrome diagnosis Age Race/ethnicity Ever had a breast biopsy number of breast biopsy atypical hyperplasia Age at menarche Age at first live birth of a child Number of first-degree relatives that have had breast cancer |
Women 35–74 years old Not applied for women carrying mutation in BRCA1/2, women with a previous history of invasive or |
The tool estimates a women’s risk of developing invasive breast cancer over the next 5 years and until age 90 years old. Validated for White, Black, Hispanic and Asian/Pacific Islander women in the U.S. |
|
Breast cancer Surveillance Consortium (BCSC) Risk Calculator |
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Age Race/ethnicity Family history of breast cancer in a first-degree female relative History of a breast biopsy with benign breast disease diagnoses if known BI-RADS® breast density assessed by a radiologist |
Women 35–74 years old undergoing screening. Not applied to women with previous diagnosis of breast cancer, or DCIS or those who had breast augmentation or mastectomy |
In 2015, the BCSC risk calculator has been updated to include benign breast disease diagnoses and to estimate both five-year and ten-year breast cancer risk. Developed and validated in 1.1 million U.S. women and externally validated in the Mayo Mammography Health Study |
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Tyrer-Cuzick model (IBIS tool) V8 |
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Age at menarche Parity Age at first childbirth (if parous) Age at menopause (if postmenopausal) Atypical hyperplasia Locular carcinoma in site Height BMI Family history of breast or ovarian cancer Ashkenazi descent Prior breast biopsy BRCA genes mutations Mammographic density |
General population until age 85 |
This model was first developed from U.K. population. It was validated in Sweden population as well as U.S. population. It can be used for general risk assessment as well as risk of mutation carriers. Mammographic density was recently added into the latest version of the model (V8). |
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Susan Komen Foundation Risk Factors Table |
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Established and probable factors Increases breast cancer risk Decreases breast cancer risk Not related to breast cancer risk (neither increases nor decreases risk) Possible Factors Factors with inconsistent results or insufficient evidence |
For general population’s knowledge |
The tables lists both factors linked to breast cancer and factors still under study. |
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CARE model SAS Macro |
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Number of breast biopsies Age at menarche in years (non-negative integer years) Number of first degree relatives with breast cancer (non-negative integer counts) Biopsy displays atypical hyperplasia Race Current age Projecting age in years in the set | African American | The model is being updated periodically as new data or research becomes available. |
| Breast and Ovarian Analysis of Disease Incidence and Carrier Estimation Algorithm (BOADICEA) |
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Pedigree number Clinical history (sex and status, age or age at death, year of birth), age at breast cancer diagnosis, age at ovarian cancer diagnosis, age at pancreatic cancer diagnosis, genetic testing Breast cancer pathology (ER, PR, HER2, CK14, CK5/6) | General population and individuals with family history | BOADICEA can be used to predict BRCA1/2 mutation carrier probabilities and breast cancer as well as ovarian cancer risks at specific future ages |