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Predicting risk of breast cancer recurrence using gene-expression profiling.

机译:使用基因表达谱分析预测乳腺癌复发的风险。

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摘要

The molecular profiling of breast tumors using the powerful microarray technology has uncovered the molecular heterogeneity of breast tumors and has offered novel insight into breast tumorigenesis. The estrogen receptor (ER) has been shown to be the most important discriminator dichotomizing breast cancer into two main subsets. At the same time, proliferation, as captured by the recently developed Genomic Grade Index (GGI) has been found to be the most important prognostic factor in breast cancer, far beyond ER status. Interestingly, this index encompasses a significant portion of the predictive power of many published prognostic signatures. The challenge now is to integrate all the prognostic gene signatures available to date towards a comprehensive genomic fingerprint of the primary tumor. In the future, we should be able to offer individualized treatment to our patients based on a clinical decision-making algorithm that takes into account the clinicopathological parameters, the genomic profile of the primary tumor, the presence of micrometastatic cells and pharmacogenetic data for drug response.
机译:使用功能强大的微阵列技术对乳腺肿瘤进行分子分析,揭示了乳腺肿瘤的分子异质性,为乳腺肿瘤的发生提供了新颖的见解。雌激素受体(ER)已被证明是将乳腺癌分为两个主要亚群的最重要的识别剂。同时,最近发现的基因组等级指数(GGI)显示,增生是乳腺癌中最重要的预后因素,远远超出了ER状态。有趣的是,该指数涵盖了许多已发表的预后签名的预测能力的重要部分。现在的挑战是将迄今为止可用的所有预后基因特征整合到原发肿瘤的全面基因组指纹中。将来,我们应该能够根据临床决策算法为患者提供个性化治疗,其中要考虑到临床病理参数,原发肿瘤的基因组概况,微转移细胞的存在以及药物反应的药理学数据。

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