Duke Institute for Genome Sciences and Policy, Duke University Medical Center, Durham, NC 27710, USA.
Proc Natl Acad Sci U S A. 2010 Apr 13;107(15):6994-9. doi: 10.1073/pnas.0912708107. Epub 2010 Mar 24.
The hallmark of human cancer is heterogeneity, reflecting the complexity and variability of the vast array of somatic mutations acquired during oncogenesis. An ability to dissect this heterogeneity, to identify subgroups that represent common mechanisms of disease, will be critical to understanding the complexities of genetic alterations and to provide a framework to develop rational therapeutic strategies. Here, we describe a classification scheme for human breast cancer making use of patterns of pathway activity to build on previous subtype characterizations using intrinsic gene expression signatures, to provide a functional interpretation of the gene expression data that can be linked to therapeutic options. We show that the identified subgroups provide a robust mechanism for classifying independent samples, identifying tumors that share patterns of pathway activity and exhibit similar clinical and biological properties, including distinct patterns of chromosomal alterations that were not evident in the heterogeneous total population of tumors. We propose that this classification scheme provides a basis for understanding the complex mechanisms of oncogenesis that give rise to these tumors and to identify rational opportunities for combination therapies.
人类癌症的标志是异质性,反映了在癌变过程中获得的大量体细胞突变的复杂性和可变性。能够剖析这种异质性,识别代表疾病常见机制的亚组,对于理解遗传改变的复杂性并为制定合理的治疗策略提供框架至关重要。在这里,我们描述了一种人类乳腺癌的分类方案,该方案利用途径活性模式来建立以前基于内在基因表达特征的亚型特征,为可以与治疗选择相关联的基因表达数据提供功能解释。我们表明,所确定的亚组为分类独立样本提供了一种强大的机制,识别具有途径活性模式和表现出相似临床和生物学特性的肿瘤,包括在肿瘤的异质总群体中不明显的染色体改变的不同模式。我们提出,这种分类方案为理解导致这些肿瘤的致癌复杂机制提供了基础,并为联合治疗的合理机会提供了依据。