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首页> 外文期刊>PLoS Medicine >Addition of a polygenic risk score, mammographic density, and endogenous hormones to existing breast cancer risk prediction models: A nested case–control study
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Addition of a polygenic risk score, mammographic density, and endogenous hormones to existing breast cancer risk prediction models: A nested case–control study

机译:在现有乳腺癌风险预测模型中增加多基因风险评分,乳房X线密度和内源激素:一项嵌套的病例对照研究

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Background No prior study to our knowledge has examined the joint contribution of a polygenic risk score (PRS), mammographic density (MD), and postmenopausal endogenous hormone levels—all well-confirmed risk factors for invasive breast cancer—to existing breast cancer risk prediction models. Methods and findings We conducted a nested case–control study within the prospective Nurses’ Health Study and Nurses’ Health Study II including 4,006 cases and 7,874 controls ages 34–70 years up to 1 June 2010. We added a breast cancer PRS using 67 single nucleotide polymorphisms, MD, and circulating testosterone, estrone sulfate, and prolactin levels to existing risk models. We calculated area under the curve (AUC), controlling for age and stratified by menopausal status, for the 5-year absolute risk of invasive breast cancer. We estimated the population distribution of 5-year predicted risks for models with and without biomarkers. For the Gail model, the AUC improved (p-values p-values p-values Conclusions In this study, the addition of PRS, MD, and endogenous hormones substantially improved existing breast cancer risk prediction models. Further studies will be needed to confirm these findings and to determine whether improved risk prediction models have practical value in identifying women at higher risk who would most benefit from chemoprevention, screening, and other risk-reducing strategies.
机译:背景知识我们之前的研究尚未研究过多基因风险评分(PRS),乳腺X线密度(MD)和绝经后内源激素水平(所有确诊为浸润性乳腺癌的危险因素)对现有乳腺癌风险预测的共同贡献楷模。方法和结果我们在前瞻性护士健康研究和护士健康研究II中进行了嵌套病例对照研究,其中包括截至2010年6月1日的4,006例病例和7,874例年龄在34-70岁之间的对照。我们使用67个单核苷酸多态性,MD和循环睾丸激素,硫酸雌酮和催乳素水平到现有的风险模型。我们计算了曲线下的面积(AUC),以控制年龄并按绝经状态进行分层,以评估浸润性乳腺癌的5年绝对风险。我们估计了有或没有生物标志物的模型的5年预测风险的人群分布。对于盖尔模型,AUC有所改善(p值p值p值结论)在本研究中,添加PRS,MD和内源激素可显着改善现有的乳腺癌风险预测模型。将需要进一步的研究来证实这些模型。的发现,并确定改进的风险预测模型是否具有实用价值,以识别最易从化学预防,筛查和其他降低风险的策略中受益的较高风险的女性。

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