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通过肿瘤亚型利用临床和基因标志物预测乳腺癌生存率。

Prediction of breast cancer survival using clinical and genetic markers by tumor subtypes.

作者信息

Song Nan, Choi Ji-Yeob, Sung Hyuna, Jeon Sujee, Chung Seokang, Park Sue K, Han Wonshik, Lee Jong Won, Kim Mi Kyung, Lee Ji-Young, Yoo Keun-Young, Han Bok-Ghee, Ahn Sei-Hyun, Noh Dong-Young, Kang Daehee

机构信息

Cancer Research Institute, Seoul National University College of Medicine, Seoul, Korea.

Cancer Research Institute, Seoul National University College of Medicine, Seoul, Korea; Department of Biomedical Sciences, Seoul National University College of Medicine, Seoul, Korea; Department of Preventive Medicine, Seoul National University College of Medicine, Seoul, Korea.

出版信息

PLoS One. 2015 Apr 13;10(4):e0122413. doi: 10.1371/journal.pone.0122413. eCollection 2015.

Abstract

PURPOSE

To identify the genetic variants associated with breast cancer survival, a genome-wide association study (GWAS) was conducted of Korean breast cancer patients.

METHODS

From the Seoul Breast Cancer Study (SEBCS), 3,226 patients with breast cancer (1,732 in the discovery and 1,494 in the replication set) were included in a two-stage GWAS on disease-free survival (DFS) by tumor subtypes based on hormone receptor (HR) and human epidermal growth factor receptor 2 (HER2). The associations of the re-classified combined prognostic markers through recursive partitioning analysis (RPA) of DFS for breast cancer were assessed with the Cox proportional hazard model. The prognostic predictive values of the clinical and genetic models were evaluated by Harrell's C.

RESULTS

In the two-stage GWAS stratified by tumor subtypes, rs166870 and rs10825036 were consistently associated with DFS in the HR+ HER2- and HR- HER2- breast cancer subtypes, respectively (Prs166870 = 2.88 × 10(-7) and Prs10825036 = 3.54 × 10(-7) in the combined set). When patients were classified by the RPA in each subtype, genetic factors contributed significantly to differentiating the high risk group associated with DFS inbreast cancer, specifically the HR+ HER2- (P discovery=1.18 × 10(-8) and P replication = 2.08 × 10(-5)) and HR- HRE2- subtypes (P discovery = 2.35 × 10(-4) and P replication = 2.60 × 10(-2)). The inclusion of the SNPs tended to improve the performance of the prognostic models consisting of age, TNM stage and tumor subtypes based on ER, PR, and HER2 status.

CONCLUSION

Combined prognostic markers that include clinical and genetic factors by tumor subtypes could improve the prediction of survival in breast cancer.

摘要

目的

为了确定与乳腺癌生存相关的基因变异,对韩国乳腺癌患者进行了一项全基因组关联研究(GWAS)。

方法

在首尔乳腺癌研究(SEBCS)中,3226例乳腺癌患者(发现队列1732例,验证队列1494例)被纳入一项两阶段的GWAS,根据激素受体(HR)和人表皮生长因子受体2(HER2)对肿瘤亚型进行无病生存期(DFS)分析。通过对乳腺癌DFS进行递归划分分析(RPA),重新分类的联合预后标志物的相关性用Cox比例风险模型进行评估。临床和基因模型的预后预测价值用Harrell's C进行评估。

结果

在按肿瘤亚型分层的两阶段GWAS中,rs166870和rs10825036分别与HR + HER2-和HR - HER2-乳腺癌亚型的DFS持续相关(合并队列中Prs166870 = 2.88×10(-7),Prs10825036 = 3.54×10(-7))。当根据RPA对每个亚型的患者进行分类时,基因因素对区分乳腺癌DFS相关的高危组有显著贡献,特别是HR + HER2-(发现队列P = 1.18×10(-8),验证队列P = 2.08×10(-5))和HR - HRE2-亚型(发现队列P = 2.35×10(-4),验证队列P = 2.60×10(-2))。纳入这些单核苷酸多态性(SNP)倾向于改善由年龄、TNM分期和基于雌激素受体(ER)、孕激素受体(PR)和HER2状态的肿瘤亚型组成的预后模型的性能。

结论

按肿瘤亚型综合临床和基因因素的预后标志物可改善乳腺癌生存预测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a6be/4395109/8aef8eda0944/pone.0122413.g001.jpg

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