首页> 外文期刊>JAMA: the Journal of the American Medical Association >Gene expression signatures, clinicopathological features, and individualized therapy in breast cancer.
【24h】

Gene expression signatures, clinicopathological features, and individualized therapy in breast cancer.

机译:乳腺癌的基因表达特征,临床病理特征和个体化治疗。

获取原文
获取原文并翻译 | 示例
       

摘要

CONTEXT: Gene expression profiling may be useful for prognostic and therapeutic strategies in breast carcinoma. OBJECTIVES: To demonstrate the value in integrating genomic information with clinical and pathological risk factors, to refine prognosis, and to improve therapeutic strategies for early stage breast cancer. DESIGN, SETTING, AND PATIENTS: Retrospective study of patients with early stage breast carcinoma who were candidates for adjuvant chemotherapy; 964 clinically annotated breast tumor samples (573 in the initial discovery set and 391 in the validation cohort) with corresponding microarray data were used. All patients were assigned relapse risk scores based on their respective clinicopathological features. Signatures representing oncogenic pathway activation and tumor biology/microenvironment status were applied to these samples to obtain patterns of deregulation that correspond with relapse risk scores to refine prognosis with the clinicopathological prognostic model alone. Predictors of chemotherapeutic response were also applied to further characterize clinically relevant heterogeneity in early stage breast cancer. MAIN OUTCOME MEASURES: Gene expression signatures and clinicopathological variables in early stage breast cancer to determine a refined estimation of relapse-free survival and sensitivity to chemotherapy. RESULTS: In the initial data set of 573 patients, prognostically significant clusters representing patterns of oncogenic pathway activation and tumor biology/microenvironment states were identified within the low-risk (log-rank P = .004), intermediate-risk (log-rank P = .01), and high-risk (log-rank P = .003) model cohorts, representing clinically important genomic subphenotypes of breast cancer. As an example, in the low-risk cohort, of 6 prognostically significant clusters, patients in cluster 4 had an inferior relapse-free survival vs patients in cluster 1 (log-rank P = .004) and cluster 5 (log-rank P = .03). Median relapse-free survival for patients in cluster 4 was 16 months less than for patients in cluster 1 (95% CI, 7.5-24.5 months) and 19 months less than for patients in cluster 5 (95% CI, 10.5-27.5 months). Multivariate analyses confirmed the independent prognostic value of the genomic clusters (low risk, P = .05; high risk, P = .02). The reproducibility and validity of these patterns of pathway deregulation in predicting relapse risk was established using related but not identical clusters in the independent validation cohort. The prognostic clinicogenomic clusters also have unique sensitivity patterns to commonly used cytotoxic therapies. CONCLUSIONS: These results provide preliminary evidence that incorporation of gene expression signatures into clinical risk stratification can refine prognosis. Prospective studies are needed to determine the value of this approach for individualizing therapeutic strategies.
机译:背景:基因表达谱分析可能对乳腺癌的预后和治疗策略有用。目的:证明将基因组信息与临床和病理风险因素相结合的价值,以改善预后并改善早期乳腺癌的治疗策略。设计,地点和患者:对早期乳腺癌患者进行辅助化疗的回顾性研究。使用了964个带有临床注释的乳腺肿瘤样品(初始发现组中为573个,验证队列中为391个)以及相应的微阵列数据。根据患者各自的临床病理特征为所有患者分配复发风险评分。将代表致癌途径激活和肿瘤生物学/微环境状态的签名应用于这些样品,以获得与复发风险评分相对应的失调模式,以仅通过临床病理学预后模型改善预后。化疗反应的预测因子也用于进一步表征早期乳腺癌的临床相关异质性。主要观察指标:早期乳腺癌的基因表达特征和临床病理变量,用于确定无复发生存率和对化疗敏感性的精确估计。结果:在573例患者的初始数据集中,在低风险(log-rank P = .004),中度风险(log-rank)中鉴定出了代表致癌途径激活和肿瘤生物学/微环境状态的预后显着的聚类。 P = .01)和高风险(对数秩P = .003)模型队列,代表了临床上重要的乳腺癌基因组亚表型。例如,在6个预后显着的低危人群中,第4组患者的无复发生存率较第1组(对数P = .004)和第5组(对数P = .03)。第4组患者的中位无复发生存期比第1组患者(16%CI,7.5-24.5个月)少16个月,比第5组患者(95%CI,10.5-27.5个月)少19个月。多变量分析证实了基因组的独立预后价值(低风险,P = .05;高风险,P = .02)。在独立验证队列中,使用相关但不相同的聚类确定了这些路径失调模式在预测复发风险中的可重复性和有效性。预后的临床基因组簇对常用的细胞毒性疗法也具有独特的敏感性模式。结论:这些结果提供了初步的证据,证明将基因表达特征纳入临床风险分层可以改善预后。需要进行前瞻性研究以确定这种方法对个体化治疗策略的价值。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号