Department of Chemical and Biological Engineering, McCormick School of Engineering, Northwestern University, Evanston, Illinois, United States of America.
PLoS One. 2013 Apr 8;8(4):e57180. doi: 10.1371/journal.pone.0057180. Print 2013.
The epithelial-mesenchymal transition (EMT) is a complex change in cell differentiation that allows breast carcinoma cells to acquire invasive properties. EMT involves a cascade of regulatory changes that destabilize the epithelial phenotype and allow mesenchymal features to manifest. As transcription factors (TFs) are upstream effectors of the genome-wide expression changes that result in phenotypic change, understanding the sequential changes in TF activity during EMT provides rich information on the mechanism of this process. Because molecular interactions will vary as cells progress from an epithelial to a mesenchymal differentiation program, dynamic networks are needed to capture the changing context of molecular processes. In this study we applied an emerging high-throughput, dynamic TF activity array to define TF activity network changes in three cell-based models of EMT in breast cancer based on HMLE Twist ER and MCF-7 mammary epithelial cells. The TF array distinguished conserved from model-specific TF activity changes in the three models. Time-dependent data was used to identify pairs of TF activities with significant positive or negative correlation, indicative of interdependent TF activity throughout the six-day study period. Dynamic TF activity patterns were clustered into groups of TFs that change along a time course of gene expression changes and acquisition of invasive capacity. Time-dependent TF activity data was combined with prior knowledge of TF interactions to construct dynamic models of TF activity networks as epithelial cells acquire invasive characteristics. These analyses show EMT from a unique and targetable vantage and may ultimately contribute to diagnosis and therapy.
上皮-间充质转化(EMT)是细胞分化的一种复杂变化,使乳腺癌细胞获得侵袭性。EMT 涉及一系列调节变化,破坏上皮表型并允许间充质特征表现出来。由于转录因子(TFs)是导致表型变化的全基因组表达变化的上游效应物,因此了解 EMT 过程中 TF 活性的顺序变化为该过程的机制提供了丰富的信息。由于分子相互作用将随着细胞从上皮向间充质分化程序进展而变化,因此需要动态网络来捕获分子过程不断变化的上下文。在这项研究中,我们应用了一种新兴的高通量、动态 TF 活性阵列,根据 HMLE Twist ER 和 MCF-7 乳腺上皮细胞的三种基于细胞的 EMT 模型,定义了 TF 活性网络变化。TF 阵列区分了三种模型中保守的和特定于模型的 TF 活性变化。时间依赖性数据用于识别具有显著正相关或负相关的 TF 活性对,这表明在整个六天研究期间 TF 活性具有相互依赖性。动态 TF 活性模式被聚类为沿基因表达变化和获得侵袭能力的时间过程变化的 TF 组。将时间依赖性 TF 活性数据与 TF 相互作用的先验知识相结合,构建了 TF 活性网络的动态模型,因为上皮细胞获得了侵袭特征。这些分析从独特和可靶向的角度展示了 EMT,并可能最终有助于诊断和治疗。