CRS4 Bioinformatica, Parco Scientifico e Technologico POLARIS, 09010 Pula (CA), Italy.
BMC Genomics. 2009 Dec 13;10:601. doi: 10.1186/1471-2164-10-601.
Elucidating the sequence of molecular events underlying breast cancer formation is of enormous value for understanding this disease and for design of an effective treatment. Gene expression measurements have enabled the study of transcriptome-wide changes involved in tumorigenesis. This usually occurs through identification of differentially expressed genes or pathways.
We propose a novel approach that is able to delineate new cancer-related cellular processes and the nature of their involvement in tumorigenesis. First, we define modules as densely interconnected and functionally enriched areas of a Protein Interaction Network. Second, 'differential expression' and 'differential co-expression' analyses are applied to the genes in these network modules, allowing for identification of processes that are up- or down-regulated, as well as processes disrupted (low co-expression) or invoked (high co-expression) in different tumor stages. Finally, we propose a strategy to identify regulatory miRNAs potentially responsible for the observed changes in module activities. We demonstrate the potential of this analysis on expression data from a mouse model of mammary gland tumor, monitored over three stages of tumorigenesis. Network modules enriched in adhesion and metabolic processes were found to be inactivated in tumor cells through the combination of dysregulation and down-regulation, whereas the activation of the integrin complex and immune system response modules is achieved through increased co-regulation and up-regulation. Additionally, we confirmed a known miRNA involved in mammary gland tumorigenesis, and present several new candidates for this function.
Understanding complex diseases requires studying them by integrative approaches that combine data sources and different analysis methods. The integration of methods and data sources proposed here yields a sensitive tool, able to pinpoint new processes with a role in cancer, dissect modulation of their activity and detect the varying assignments of genes to functional modules over the course of a disease.
阐明乳腺癌形成的分子事件顺序对于理解这种疾病和设计有效的治疗方法具有巨大的价值。基因表达测量使人们能够研究肿瘤发生中涉及的转录组广泛变化。这通常是通过识别差异表达的基因或途径来实现的。
我们提出了一种新的方法,能够描绘出新的与癌症相关的细胞过程及其在肿瘤发生中的参与性质。首先,我们将模块定义为蛋白质相互作用网络中密集连接且功能丰富的区域。其次,对这些网络模块中的基因进行“差异表达”和“差异共表达”分析,以识别上调或下调的过程,以及在不同肿瘤阶段受到破坏(低共表达)或调用(高共表达)的过程。最后,我们提出了一种策略来识别可能负责观察到的模块活动变化的调节 miRNA。我们在一个乳腺肿瘤小鼠模型的表达数据上演示了这种分析的潜力,该模型在肿瘤发生的三个阶段进行了监测。发现富含粘附和代谢过程的网络模块通过失调和下调的组合在肿瘤细胞中失活,而整合素复合物和免疫系统反应模块的激活是通过增加共调节和上调来实现的。此外,我们证实了一种已知的 miRNA 参与乳腺肿瘤发生,并提出了几种新的候选 miRNA。
理解复杂疾病需要通过整合方法来研究它们,这些方法结合了数据源和不同的分析方法。这里提出的方法和数据源的整合产生了一种敏感的工具,能够精确定位癌症中具有作用的新过程,剖析其活性的调节,并检测基因在疾病过程中向功能模块的不同分配。