Prospective Evaluation of a Breast Cancer Risk Model Integrating Classical Risk Factors and Polygenic Risk in 15 Cohorts from Six Countries
Author:
Wilcox Amber N, Choudhury Parichoy Pal, Gao Chi, Hüsing Anika, Eriksson Mikael, Shi Min, Scott Christopher, Carter Brian D, Martin Kara, Harkness Elaine, Brook Mark N, Ahearn Thomas U, Mavaddat Nasim, Antoniou Antonis C, Chang-Claude Jenny, Simard Jacques, Jones Michael E, Orr Nick, Schoemaker Minouk J, Swerdlow Anthony J, Sampson Sarah, Newman William G, van Veen Elke M, Evans D. Gareth R, MacInnis Robert J, Giles Graham G, Southey Melissa, Milne Roger L, Gapstur Susan M, Gaudet Mia M, Winham Stacey J, Brandt Kathy, Norman Aaron, Vachon Celine M, Sandler Dale P, Weinberg Clarice R, Czene Kamila, Gabrielson Marike, Hall Per, van Gils Carla H, Khaw Kay-Tee, Barrdahl Myrto, Kaaks Rudolf, Ridker Paul M, Buring Julie E, Chasman Dan I, Easton Douglas F, Schmidt Marjanka K, Kraft Peter, Garcia-Closas MontserratORCID, Chatterjee Nilanjan
Abstract
ABSTRACTPURPOSERisk-stratified breast cancer prevention requires accurate identification of women at sufficiently different levels of risk. We conducted a comprehensive evaluation of a model integrating classical risk factors and a recently developed 313-variant polygenic risk score (PRS) to predict breast cancer risk.METHODSFifteen prospective cohorts from six countries with 237,632 women (7,529 incident breast cancer patients) of European ancestry aged 19-75 years at baseline were included. Calibration of five-year risk was assessed by comparing predicted and observed proportions of cases overall and within risk categories. Risk stratification for women of European ancestry aged 50-70 years in those countries was evaluated by the proportion of women and future breast cancer cases crossing clinically-relevant risk thresholds.RESULTSThe model integrating classical risk factors and PRS accurately predicted five-year risk. For women younger than 50 years, median (range) expected-to-observed ratio across the cohorts was 0.94 (0.72 to 1.01) overall and 0.9 (0.7 to 1.4) at the highest risk decile. For women 50 years or older, these ratios were 1.04 (0.73 to 1.31) and 1.2 (0.7 to 1.6), respectively. The proportion of women in the general population identified above the 3% five-year risk threshold (used for recommending risk-reducing medications in the US) ranged from 7.0% in Germany (∼841,000 of 12 million) to 17.7% in the US (∼5.3 of 30 million). At this threshold, 14.7% of US women were re-classified by the addition of PRS to classical risk factors, identifying 12.2% additional future breast cancer cases.CONCLUSIONEvaluation across multiple prospective cohorts demonstrates that integrating a 313-SNP PRS into a risk model substantially improves its ability to stratify women of European ancestry for applying current breast cancer prevention guidelines.
Publisher
Cold Spring Harbor Laboratory
Reference44 articles.
1. Visvanathan K , Fabian CJ , Bantug E , et al: Use of Endocrine Therapy for Breast Cancer Risk Reduction: ASCO Clinical Practice Guideline Update.Journal of Clinical Oncology 0:JCO.19.01472 2. Medication Use to Reduce Risk of Breast Cancer: US Preventive Services Task Force Recommendation Statement;Jama,2019 3. Familial breast cancer: classifification, care and managing breast cancer and related risks in people with a family history of breast cancer. The National Institute for Health and Care Excellence (NICE). nice.org.uk/guidance/cg164, 2013 4. Breast cancer risk models: a comprehensive overview of existing models, validation, and clinical applications 5. Louro J , Posso M , Hilton Boon M , et al: A systematic review and quality assessment of individualised breast cancer risk prediction models. Br J Cancer, 2019
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|