Tongbai Ron, Idelman Gila, Nordgard Silje H, Cui Wenwu, Jacobs Jonathan L, Haggerty Cynthia M, Chanock Stephen J, Børresen-Dale Anne-Lise, Livingston Gary, Shaunessy Patrick, Chiang Chih-Hung, Kristensen Vessela N, Bilke Sven, Gardner Kevin
National Cancer Institute, Bethesda, MD 20892-5065, USA.
Am J Pathol. 2008 Feb;172(2):495-509. doi: 10.2353/ajpath.2008.061079. Epub 2008 Jan 10.
Global genomic approaches in cancer research have provided new and innovative strategies for the identification of signatures that differentiate various types of human cancers. Computational analysis of the promoter composition of the genes within these signatures may provide a powerful method for deducing the regulatory transcriptional networks that mediate their collective function. In this study we have systematically analyzed the promoter composition of gene classes derived from previously established genetic signatures that recently have been shown to reliably and reproducibly distinguish five molecular subtypes of breast cancer associated with distinct clinical outcomes. Inferences made from the trends of transcription factor binding site enrichment in the promoters of these gene groups led to the identification of regulatory pathways that implicate discrete transcriptional networks associated with specific molecular subtypes of breast cancer. One of these inferred pathways predicted a role for nuclear factor-kappaB in a novel feed-forward, self-amplifying, autoregulatory module regulated by the ERBB family of growth factor receptors. The existence of this pathway was verified in vivo by chromatin immunoprecipitation and shown to be deregulated in breast cancer cells overexpressing ERBB2. This analysis indicates that approaches of this type can provide unique insights into the differential regulatory molecular programs associated with breast cancer and will aid in identifying specific transcriptional networks and pathways as potential targets for tumor subtype-specific therapeutic intervention.
癌症研究中的全球基因组学方法为识别区分各类人类癌症的特征提供了全新的创新策略。对这些特征内基因的启动子组成进行计算分析,可能为推导介导其共同功能的调控转录网络提供一种强大的方法。在本研究中,我们系统地分析了源自先前建立的基因特征的基因类别的启动子组成,这些特征最近已被证明能够可靠且可重复地区分与不同临床结果相关的乳腺癌的五种分子亚型。从这些基因组启动子中转录因子结合位点富集趋势得出的推论,导致了调控途径的识别,这些途径涉及与乳腺癌特定分子亚型相关的离散转录网络。其中一条推断出的途径预测核因子-κB在由ERBB家族生长因子受体调控的新型前馈、自我放大、自动调节模块中发挥作用。该途径的存在通过染色质免疫沉淀在体内得到验证,并显示在过表达ERBB2的乳腺癌细胞中失调。该分析表明,这类方法能够为与乳腺癌相关的差异调控分子程序提供独特的见解,并将有助于识别特定的转录网络和途径,作为肿瘤亚型特异性治疗干预的潜在靶点。