Department of Cell Biology, Harvard Medical School, Boston, MA 02115.
Ludwig Center at Harvard, Harvard Medical School, Boston, MA 02115.
Proc Natl Acad Sci U S A. 2017 Dec 26;114(52):E11276-E11284. doi: 10.1073/pnas.1714877115. Epub 2017 Dec 11.
Large, multidimensional cancer datasets provide a resource that can be mined to identify candidate therapeutic targets for specific subgroups of tumors. Here, we analyzed human breast cancer data to identify transcriptional programs associated with tumors bearing specific genetic driver alterations. Using an unbiased approach, we identified thousands of genes whose expression was enriched in tumors with specific genetic alterations. However, expression of the vast majority of these genes was not enriched if associations were analyzed within individual breast tumor molecular subtypes, across multiple tumor types, or after gene expression was normalized to account for differences in proliferation or tumor lineage. Together with linear modeling results, these findings suggest that most transcriptional programs associated with specific genetic alterations in oncogenes and tumor suppressors are highly context-dependent and are predominantly linked to differences in proliferation programs between distinct breast cancer subtypes. We demonstrate that such proliferation-dependent gene expression dominates tumor transcriptional programs relative to matched normal tissues. However, we also identified a relatively small group of cancer-associated genes that are both proliferation- and lineage-independent. A subset of these genes are attractive candidate targets for combination therapy because they are essential in breast cancer cell lines, druggable, enriched in stem-like breast cancer cells, and resistant to chemotherapy-induced down-regulation.
大型多维癌症数据集提供了一种可挖掘的资源,可以识别特定肿瘤亚组的候选治疗靶点。在这里,我们分析了人类乳腺癌数据,以确定与具有特定遗传驱动改变的肿瘤相关的转录程序。使用一种无偏的方法,我们鉴定了数千个在具有特定遗传改变的肿瘤中表达丰富的基因。然而,如果在单个乳腺癌肿瘤分子亚型、多个肿瘤类型内或在对增殖或肿瘤谱系进行基因表达归一化以解释差异后分析相关性,这些基因中的绝大多数的表达都没有富集。这些发现与线性模型结果一起表明,与致癌基因和肿瘤抑制基因的特定遗传改变相关的大多数转录程序高度依赖于上下文,并且主要与不同乳腺癌亚型之间的增殖程序差异有关。我们证明,与匹配的正常组织相比,这种与增殖相关的基因表达在肿瘤转录程序中占主导地位。然而,我们还确定了一小部分与癌症相关的基因,它们既与增殖无关,也与谱系无关。这些基因中的一部分是有吸引力的联合治疗候选靶点,因为它们在乳腺癌细胞系中是必需的,可用药,富集在干细胞样乳腺癌细胞中,并且对化疗诱导的下调有抗性。