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Discriminatory Accuracy From Single-Nucleotide Polymorphisms in Models to Predict Breast Cancer Risk

机译:从模型中的单核苷酸多态性的歧视性准确性来预测乳腺癌风险

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摘要

One purpose for seeking common alleles that are associated with disease is to use them to improve models for projecting individualized disease risk. Two genome-wide association studies and a study of candidate genes recently identified seven common single-nucleotide polymorphisms (SNPs) that were associated with breast cancer risk in independent samples. These seven SNPs were located in FGFR2, TNRC9 (now known as TOX3), MAP3K1, LSP1, CASP8, chromosomal region 8q, and chromosomal region 2q35. I used estimates of relative risks and allele frequencies from these studies to estimate how much these SNPs could improve discriminatory accuracy measured as the area under the receiver operating characteristic curve (AUC). A model with these seven SNPs (AUC = 0.574) and a hypothetical model with 14 such SNPs (AUC = 0.604) have less discriminatory accuracy than a model, the National Cancer Institute’s Breast Cancer Risk Assessment Tool (BCRAT), that is based on ages at menarche and at first live birth, family history of breast cancer, and history of breast biopsy examinations (AUC = 0.607). Adding the seven SNPs to BCRAT improved discriminatory accuracy to an AUC of 0.632, which was, however, less than the improvement from adding mammographic density. Thus, these seven common alleles provide less discriminatory accuracy than BCRAT but have the potential to improve the discriminatory accuracy of BCRAT modestly. Experience to date and quantitative arguments indicate that a huge increase in the numbers of case patients with breast cancer and control subjects would be required in genome-wide association studies to find enough SNPs to achieve high discriminatory accuracy.
机译:寻找与疾病相关的常见等位基因的目的之一是使用它们来改善预测个体化疾病风险的模型。两项全基因组关联研究和一项候选基因研究最近确定了七个独立样本中与乳腺癌风险相关的常见单核苷酸多态性(SNP)。这七个SNP位于FGFR2,TNRC9(现在称为TOX3),MAP3K1,LSP1,CASP8,染色体区域8q和染色体区域2q35中。我从这些研究中使用相对风险和等位基因频率的估计值来估计这些SNPs可以提高区分准确度的多少,以接收器工作特征曲线(AUC)下的面积衡量。具有这七个SNP的模型(AUC = 0.574)和具有14个这样的SNP的假设模型(AUC = 0.604)具有比基于年龄的美国国家癌症研究所的乳腺癌风险评估工具(BCRAT)更低的区分准确性。在初潮和首次活产时,有乳腺癌家族病史,以及乳房活检的病史(AUC = 0.607)。将7个SNP添加到BCRAT中,可将判别精度提高到0.632的AUC,但是,这不如增加乳房X线密度所带来的提高。因此,这七个共同的等位基因提供的鉴别准确度低于BCRAT,但具有适度提高BCRAT鉴别准确度的潜力。迄今为止的经验和定量论证表明,在全基因组关联研究中,要找到足够的SNP来实现高辨别力,将需要大量增加患乳腺癌的病例和对照组的病例。

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