School of Mathematics and Statistics, Shandong University at Weihai, Weihai, China.
School of Statistics and Applied Mathematics, Anhui University of Finance & Economics, 233030, Bengbu, Anhui Province, China.
Interdiscip Sci. 2019 Dec;11(4):636-644. doi: 10.1007/s12539-018-0314-3. Epub 2019 Jan 2.
Complex diseases are generally caused by disorders of biological networks or/and mutations in multiple genes. The efficient and systematic identification of functional modules can not only supply effective diagnosis and treatment in clinic, but also benefit in further in-depth analysis of the pathological mechanism of complex diseases. In this study, we applied the method of differential network to identify functional modules between control and disease samples, which are different from most of the current approaches that focus on differential expression. In particular, we applied our approach to analyze transcriptome data of liver cancer in The Cancer Genome Atlas (TCGA, https://cancergenome.nih.gov/), and we obtained two modules associated with liver cancer. One is a functional gene module that contains a set of liver cancer-related genes, and another is an lncRNA (long non-coding RNA) module that includes liver cancer-related lncRNAs. The results of survival analysis and classification show that the functional modules cannot only be used as effective modular biomarkers to identifying liver cancer, but also predict the prognosis of liver cancer. The method can identify functional modules in genes and lncRNA from liver cancer, and these modules can be used to do prognosis detection and further study in mechanism of liver cancer.
复杂疾病通常是由生物网络的紊乱和/或多个基因的突变引起的。有效的、系统的功能模块识别不仅可以为临床提供有效的诊断和治疗,也有助于深入分析复杂疾病的病理机制。在本研究中,我们应用差异网络方法来识别对照和疾病样本之间的功能模块,这与目前大多数专注于差异表达的方法不同。特别是,我们将该方法应用于分析癌症基因组图谱(TCGA,https://cancergenome.nih.gov/)中的肝癌转录组数据,并获得了两个与肝癌相关的模块。一个是包含一组肝癌相关基因的功能基因模块,另一个是包含肝癌相关 lncRNA 的 lncRNA 模块。生存分析和分类的结果表明,这些功能模块不仅可以作为有效的模块化生物标志物来识别肝癌,还可以预测肝癌的预后。该方法可以识别肝癌中基因和 lncRNA 的功能模块,这些模块可用于进行预后检测和进一步研究肝癌的机制。