Division of Cancer Epidemiology and Genetics, National Cancer Institute, 6120 Executive Blvd., EPS 5050, MSC-7244, Bethesda, MD 20892, USA.
N Engl J Med. 2010 Mar 18;362(11):986-93. doi: 10.1056/NEJMoa0907727.
Genomewide association studies have identified multiple genetic variants associated with breast cancer. The extent to which these variants add to existing risk-assessment models is unknown.
We used information on traditional risk factors and 10 common genetic variants associated with breast cancer in 5590 case subjects and 5998 control subjects, 50 to 79 years of age, from four U.S. cohort studies and one case-control study from Poland to fit models of the absolute risk of breast cancer. With the use of receiver-operating-characteristic curve analysis, we calculated the area under the curve (AUC) as a measure of discrimination. By definition, random classification of case and control subjects provides an AUC of 50%; perfect classification provides an AUC of 100%. We calculated the fraction of case subjects in quintiles of estimated absolute risk after the addition of genetic variants to the traditional risk model.
The AUC for a risk model with age, study and entry year, and four traditional risk factors was 58.0%; with the addition of 10 genetic variants, the AUC was 61.8%. About half the case subjects (47.2%) were in the same quintile of risk as in a model without genetic variants; 32.5% were in a higher quintile, and 20.4% were in a lower quintile.
The inclusion of newly discovered genetic factors modestly improved the performance of risk models for breast cancer. The level of predicted breast-cancer risk among most women changed little after the addition of currently available genetic information.
全基因组关联研究已经确定了多个与乳腺癌相关的遗传变异。这些变异在多大程度上增加了现有的风险评估模型尚不清楚。
我们使用了来自四个美国队列研究和一个来自波兰的病例对照研究的 5590 例病例和 5998 例对照的传统风险因素和 10 个常见的与乳腺癌相关的遗传变异信息,年龄在 50 至 79 岁之间,以拟合乳腺癌绝对风险的模型。通过接受者操作特征曲线分析,我们计算了曲线下面积(AUC)作为区分度的衡量标准。根据定义,病例和对照的随机分类提供 AUC 为 50%;完全分类提供 AUC 为 100%。我们计算了在将遗传变异添加到传统风险模型后,病例患者在估计的绝对风险五分位数中的比例。
年龄、研究和入组年份以及四个传统风险因素的风险模型的 AUC 为 58.0%;添加 10 个遗传变异后,AUC 为 61.8%。约有一半的病例患者(47.2%)处于与无遗传变异模型相同的风险五分位数;32.5%处于更高的五分位数,20.4%处于更低的五分位数。
新发现的遗传因素的纳入适度提高了乳腺癌风险模型的性能。在添加目前可用的遗传信息后,大多数女性的预测乳腺癌风险水平变化不大。