一项基于经典因素和乳腺密度的 143 个单核苷酸多态性用于乳腺癌风险分层的病例对照评估。

A case-control evaluation of 143 single nucleotide polymorphisms for breast cancer risk stratification with classical factors and mammographic density.

机构信息

Centre for Cancer Prevention, Wolfson Institute of Preventive Medicine, Charterhouse Square, Barts and The London, Queen Mary University of London, London, United Kingdom.

Division of Evolution and Genomic Sciences, School of Biological Sciences, Faculty of Biology, Medicine and Health, University of Manchester, Manchester Academic Health Science Centre, Manchester, United Kingdom.

出版信息

Int J Cancer. 2020 Apr 15;146(8):2122-2129. doi: 10.1002/ijc.32541. Epub 2019 Jul 13.

Abstract

Panels of single nucleotide polymorphisms (SNPs) stratify risk for breast cancer in women from the general population, but studies are needed assess their use in a fully comprehensive model including classical risk factors, mammographic density and more than 100 SNPs associated with breast cancer. A case-control study was designed (1,668 controls, 405 cases) in women aged 47-73 years attending routine screening in Manchester UK, and enrolled in a wider study to assess methods for risk assessment. Risk from classical questionnaire risk factors was assessed using the Tyrer-Cuzick model; mean percentage visual mammographic density was scored by two independent readers. DNA extracted from saliva was genotyped at selected SNPs using the OncoArray. A predefined polygenic risk score based on 143 SNPs was calculated (SNP143). The odds ratio (OR, and 95% confidence interval, CI) per interquartile range (IQ-OR) of SNP143 was estimated unadjusted and adjusted for Tyrer-Cuzick and breast density. Secondary analysis assessed risk by oestrogen receptor (ER) status. The primary polygenic risk score was well calibrated (O/E OR 1.10, 95% CI 0.86-1.34) and accuracy was retained after adjustment for Tyrer-Cuzick risk and mammographic density (IQ-OR unadjusted 2.12, 95% CI% 1.75-2.42; adjusted 2.06, 95% CI 1.75-2.42). SNP143 was a risk factor for ER+ and ER- breast cancer (adjusted IQ-OR, ER+ 2.11, 95% CI 1.78-2.51; ER- 1.81, 95% CI 1.16-2.84). In conclusion, polygenic risk scores based on a large number of SNPs improve risk stratification in combination with classical risk factors and mammographic density, and SNP143 was similarly predictive for ER-positive and ER-negative disease.

摘要

面板单核苷酸多态性 (SNP) 将普通人群中乳腺癌的风险分层,但需要进行研究以评估其在包括经典风险因素、乳房 X 线照相密度和 100 多个与乳腺癌相关的 SNP 的综合模型中的使用情况。在英国曼彻斯特进行常规筛查的 47-73 岁女性中设计了一项病例对照研究(对照组 1668 例,病例组 405 例),并纳入了一项更广泛的研究,以评估风险评估方法。使用 Tyrer-Cuzick 模型评估来自经典问卷风险因素的风险;由两名独立读者评分平均视觉乳房 X 线照相密度。从唾液中提取的 DNA 使用 OncoArray 对选定的 SNP 进行基因分型。根据 143 个 SNP 计算了预先定义的多基因风险评分(SNP143)。未调整和调整 Tyrer-Cuzick 和乳房密度后,SNP143 的每个四分位间距(IQ-OR)的比值比(OR 和 95%置信区间,CI)进行估计。二次分析根据雌激素受体 (ER) 状态评估风险。主要多基因风险评分具有良好的校准能力(O/E OR 1.10,95%CI 0.86-1.34),并且在调整 Tyrer-Cuzick 风险和乳房 X 线照相密度后保留了准确性(未调整的 IQ-OR 2.12,95%CI%1.75-2.42;调整的 IQ-OR 2.06,95%CI 1.75-2.42)。SNP143 是 ER+和 ER-乳腺癌的危险因素(调整后的 IQ-OR,ER+2.11,95%CI 1.78-2.51;ER-1.81,95%CI 1.16-2.84)。总之,基于大量 SNP 的多基因风险评分与经典风险因素和乳房 X 线照相密度相结合可提高风险分层,SNP143 对 ER 阳性和 ER 阴性疾病同样具有预测性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/478f/7065068/9a2d6323b732/IJC-146-2122-g001.jpg

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