Shieh Yiwey, Hu Donglei, Ma Lin, Huntsman Scott, Gard Charlotte C, Leung Jessica W T, Tice Jeffrey A, Vachon Celine M, Cummings Steven R, Kerlikowske Karla, Ziv Elad
Division of General Internal Medicine, Department of Medicine, University of California, San Francisco, Box 0320, 1545 Divisadero Street, San Francisco, CA, 94143, USA.
University of California, San Francisco, Box 1793, 550 16th Street, San Francisco, CA, 94158, USA.
Breast Cancer Res Treat. 2016 Oct;159(3):513-25. doi: 10.1007/s10549-016-3953-2. Epub 2016 Aug 26.
Breast cancer risk assessment can inform the use of screening and prevention modalities. We investigated the performance of the Breast Cancer Surveillance Consortium (BCSC) risk model in combination with a polygenic risk score (PRS) comprised of 83 single nucleotide polymorphisms identified from genome-wide association studies. We conducted a nested case-control study of 486 cases and 495 matched controls within a screening cohort. The PRS was calculated using a Bayesian approach. The contributions of the PRS and variables in the BCSC model to breast cancer risk were tested using conditional logistic regression. Discriminatory accuracy of the models was compared using the area under the receiver operating characteristic curve (AUROC). Increasing quartiles of the PRS were positively associated with breast cancer risk, with OR 2.54 (95 % CI 1.69-3.82) for breast cancer in the highest versus lowest quartile. In a multivariable model, the PRS, family history, and breast density remained strong risk factors. The AUROC of the PRS was 0.60 (95 % CI 0.57-0.64), and an Asian-specific PRS had AUROC 0.64 (95 % CI 0.53-0.74). A combined model including the BCSC risk factors and PRS had better discrimination than the BCSC model (AUROC 0.65 versus 0.62, p = 0.01). The BCSC-PRS model classified 18 % of cases as high-risk (5-year risk ≥3 %), compared with 7 % using the BCSC model. The PRS improved discrimination of the BCSC risk model and classified more cases as high-risk. Further consideration of the PRS's role in decision-making around screening and prevention strategies is merited.
乳腺癌风险评估可为筛查和预防方式的使用提供依据。我们研究了乳腺癌监测联盟(BCSC)风险模型与由全基因组关联研究中鉴定出的83个单核苷酸多态性组成的多基因风险评分(PRS)相结合的性能。我们在一个筛查队列中进行了一项巢式病例对照研究,纳入486例病例和495例匹配对照。PRS使用贝叶斯方法计算。使用条件逻辑回归检验PRS和BCSC模型中的变量对乳腺癌风险的贡献。使用受试者操作特征曲线下面积(AUROC)比较模型的鉴别准确性。PRS四分位数的增加与乳腺癌风险呈正相关,最高四分位数与最低四分位数相比,乳腺癌的OR为2.54(95%CI 1.69 - 3.82)。在多变量模型中,PRS、家族史和乳腺密度仍然是强风险因素。PRS的AUROC为0.60(95%CI 0.57 - 0.64),亚洲特异性PRS的AUROC为0.64(95%CI 0.53 - 0.74)。一个包含BCSC风险因素和PRS的联合模型比BCSC模型具有更好的鉴别能力(AUROC 0.65对0.62,p = 0.01)。BCSC - PRS模型将18%的病例分类为高风险(5年风险≥3%),而BCSC模型为7%。PRS提高了BCSC风险模型的鉴别能力,并将更多病例分类为高风险。值得进一步考虑PRS在围绕筛查和预防策略的决策中的作用。