Program in Molecular and Genetic Epidemiology,Department of Epidemiology, Harvard School of Public Health, Boston, Massachusetts 02115, USA.
Cancer Epidemiol Biomarkers Prev. 2012 Mar;21(3):437-44. doi: 10.1158/1055-9965.EPI-11-1038. Epub 2012 Jan 11.
One of the goals of personalized medicine is to generate individual risk profiles that could identify individuals in the population that exhibit high risk. The discovery of more than two-dozen independent single-nucleotide polymorphism markers in prostate cancer has raised the possibility for such risk stratification. In this study, we evaluated the discriminative and predictive ability for prostate cancer risk models incorporating 25 common prostate cancer genetic markers, family history of prostate cancer, and age.
We fit a series of risk models and estimated their performance in 7,509 prostate cancer cases and 7,652 controls within the National Cancer Institute Breast and Prostate Cancer Cohort Consortium (BPC3). We also calculated absolute risks based on SEER incidence data.
The best risk model (C-statistic = 0.642) included individual genetic markers and family history of prostate cancer. We observed a decreasing trend in discriminative ability with advancing age (P = 0.009), with highest accuracy in men younger than 60 years (C-statistic = 0.679). The absolute ten-year risk for 50-year-old men with a family history ranged from 1.6% (10th percentile of genetic risk) to 6.7% (90th percentile of genetic risk). For men without family history, the risk ranged from 0.8% (10th percentile) to 3.4% (90th percentile).
Our results indicate that incorporating genetic information and family history in prostate cancer risk models can be particularly useful for identifying younger men that might benefit from prostate-specific antigen screening.
Although adding genetic risk markers improves model performance, the clinical utility of these genetic risk models is limited.
个体化医学的目标之一是生成个体风险概况,以识别人群中表现出高风险的个体。在前列腺癌中发现了二十多个独立的单核苷酸多态性标记物,这增加了进行这种风险分层的可能性。在这项研究中,我们评估了纳入 25 个常见前列腺癌遗传标记物、前列腺癌家族史和年龄的前列腺癌风险模型的判别和预测能力。
我们拟合了一系列风险模型,并在国立癌症研究所乳腺癌和前列腺癌队列联盟(BPC3)中的 7509 例前列腺癌病例和 7652 例对照中估计了它们的性能。我们还根据 SEER 发病率数据计算了绝对风险。
最佳风险模型(C 统计量=0.642)包括个体遗传标记物和前列腺癌家族史。我们观察到随着年龄的增长,判别能力呈下降趋势(P=0.009),60 岁以下男性的准确性最高(C 统计量=0.679)。有家族史的 50 岁男性的十年绝对风险从遗传风险的第 10 个百分位(1.6%)到第 90 个百分位(6.7%)不等。对于没有家族史的男性,风险从遗传风险的第 10 个百分位(0.8%)到第 90 个百分位(3.4%)不等。
我们的结果表明,将遗传信息和家族史纳入前列腺癌风险模型对于识别可能受益于前列腺特异性抗原筛查的年轻男性特别有用。
尽管添加遗传风险标志物可以提高模型性能,但这些遗传风险模型的临床实用性有限。