Ligue Nationale Contre le Cancer, Cartes d'Identité des Tumeurs program, Paris, France.
Oncogene. 2012 Mar 1;31(9):1196-206. doi: 10.1038/onc.2011.301. Epub 2011 Jul 25.
The current histoclinical breast cancer classification is simple but imprecise. Several molecular classifications of breast cancers based on expression profiling have been proposed as alternatives. However, their reliability and clinical utility have been repeatedly questioned, notably because most of them were derived from relatively small initial patient populations. We analyzed the transcriptomes of 537 breast tumors using three unsupervised classification methods. A core subset of 355 tumors was assigned to six clusters by all three methods. These six subgroups overlapped with previously defined molecular classes of breast cancer, but also showed important differences, notably the absence of an ERBB2 subgroup and the division of the large luminal ER+ group into four subgroups, two of them being highly proliferative. Of the six subgroups, four were ER+/PR+/AR+, one was ER-/PR-/AR+ and one was triple negative (AR-/ER-/PR-). ERBB2-amplified tumors were split between the ER-/PR-/AR+ subgroup and the highly proliferative ER+ LumC subgroup. Importantly, each of these six molecular subgroups showed specific copy-number alterations. Gene expression changes were correlated to specific signaling pathways. Each of these six subgroups showed very significant differences in tumor grade, metastatic sites, relapse-free survival or response to chemotherapy. All these findings were validated on large external datasets including more than 3000 tumors. Our data thus indicate that these six molecular subgroups represent well-defined clinico-biological entities of breast cancer. Their identification should facilitate the detection of novel prognostic factors or therapeutical targets in breast cancer.
目前的组织临床乳腺癌分类方法简单但不够精确。已经提出了几种基于表达谱的乳腺癌分子分类作为替代方法。然而,它们的可靠性和临床实用性一再受到质疑,尤其是因为它们大多数都是基于相对较小的初始患者人群得出的。我们使用三种无监督分类方法分析了 537 个乳腺癌肿瘤的转录组。所有三种方法都将 355 个核心肿瘤亚群分配到了六个聚类中。这六个亚组与以前定义的乳腺癌分子类型重叠,但也显示出重要的差异,尤其是缺乏 ERBB2 亚组和将大的 luminal ER+ 组分为四个亚组,其中两个亚组具有高增殖性。在这六个亚组中,四个是 ER+/PR+/AR+,一个是 ER-/PR-/AR+,一个是三阴性(AR-/ER-/PR-)。ERBB2 扩增的肿瘤在 ER-/PR-/AR+亚组和高增殖性 ER+LumC 亚组之间分裂。重要的是,这六个分子亚组中的每一个都显示出特定的拷贝数改变。基因表达变化与特定的信号通路相关。这六个亚组中的每一个在肿瘤分级、转移部位、无复发生存或对化疗的反应方面都显示出非常显著的差异。所有这些发现都在包括 3000 多个肿瘤在内的大型外部数据集上得到了验证。因此,我们的数据表明,这六个分子亚组代表了乳腺癌的明确临床生物学实体。它们的鉴定应该有助于在乳腺癌中发现新的预后因素或治疗靶点。