Use of Single-Nucleotide Polymorphisms and Mammographic Density Plus Classic Risk Factors for Breast Cancer Risk Prediction

Autor: Anthony Howell, Elaine F. Harkness, Elke M van Veen, Helen Byers, Susan M. Astley, Sarah Sampson, Jack Cuzick, William G. Newman, D. Gareth Evans, Adam R. Brentnall
Rok vydání: 2018
Předmět:
0301 basic medicine
Oncology
Cancer Research
medicine.medical_specialty
mammographic density
DNA Mutational Analysis
Population
SNP
Breast Neoplasms
Polymorphism
Single Nucleotide

Risk Assessment
Cohort Studies
risk prediction
03 medical and health sciences
breast cancer
0302 clinical medicine
Breast cancer
Predictive Value of Tests
Risk Factors
Internal medicine
Biomarkers
Tumor

Humans
Mass Screening
Medicine
Breast
Genetic Testing
Prospective cohort study
education
Aged
Breast Density
Original Investigation
education.field_of_study
Tyrer-Cuzick
business.industry
Odds ratio
Middle Aged
medicine.disease
Carcinoma
Intraductal
Noninfiltrating

030104 developmental biology
England
Risk factors for breast cancer
030220 oncology & carcinogenesis
Cohort
Female
business
Risk assessment
Follow-Up Studies
Cohort study
Zdroj: Van Veen, E, Brentnall, A R, Byers, H, Harkness, E, Astley, S, Sampson, S, Howell, A, Newman, W, Cuzick, J & Evans, D 2018, ' Use of Single-Nucleotide Polymorphisms and Mammographic Density Plus Classic Risk Factors for Breast Cancer Risk Prediction ', JAMA oncology, vol. 4, no. 4, pp. 476-482 . https://doi.org/10.1001/jamaoncol.2017.4881
ISSN: 2374-2437
Popis: Importance Single-nucleotide polymorphisms (SNPs) have demonstrated an association with breast cancer susceptibility, but there is limited evidence on how to incorporate them into current breast cancer risk prediction models. Objective To determine whether a panel of 18 SNPs (SNP18) may be used to predict breast cancer in combination with classic risk factors and mammographic density. Design, Setting, and Participants This cohort study enrolled a subcohort of 9363 women, aged 46 to 73 years, without a previous breast cancer diagnosis from the larger prospective cohort of the PROCAS study (Predicting Risk of Cancer at Screening) specifically to evaluate breast cancer risk-assessment methods. Enrollment took place from October 2009 through June 2015 from multiple population-based screening centers in Greater Manchester, England. Follow-up continued through January 5, 2017. Exposures Genotyping of 18 SNPs, visual-assessment percentage mammographic density, and classic risk assessed by the Tyrer-Cuzick risk model from a self-completed questionnaire at cohort entry. Main Outcomes and Measures The predictive ability of SNP18 for breast cancer diagnosis (invasive and ductal carcinoma in situ) was assessed using logistic regression odds ratios per interquartile range of the predicted risk. Results A total of 9363 women were enrolled in this study (mean [range] age, 59 [46-73] years). Of these, 466 were found to have breast cancer (271 prevalent; 195 incident). SNP18 was similarly predictive when unadjusted or adjusted for mammographic density and classic factors (odds ratios per interquartile range, respectively, 1.56; 95% CI, 1.38-1.77 and 1.53; 95% CI, 1.35-1.74), with observed risks being very close to expected (adjusted observed-to-expected odds ratio, 0.98; 95% CI, 0.69-1.28). A combined risk assessment indicated 18% of the subcohort to be at 5% or greater 10-year risk, compared with 30% of all cancers, 35% of interval-detected cancers, and 42% of stage 2+ cancers. In contrast, 33% of the subcohort were at less than 2% risk but accounted for only 18%, 17%, and 15% of the total, interval, and stage 2+ breast cancers, respectively. Conclusions and Relevance SNP18 added substantial information to risk assessment based on the Tyrer-Cuzick model and mammographic density. A combined risk is likely to aid risk-stratified screening and prevention strategies.
Databáze: OpenAIRE