College of Chemistry, Sichuan University, Chengdu, China.
College of Life Sciences, Sichuan University, Chengdu, China.
Sci Rep. 2016 Jun 28;6:28720. doi: 10.1038/srep28720.
The interactions among the genes within a disease are helpful for better understanding the hierarchical structure of the complex biological system of it. Most of the current methodologies need the information of known interactions between genes or proteins to create the network connections. However, these methods meet the limitations in clinical cancer researches because different cancers not only share the common interactions among the genes but also own their specific interactions distinguished from each other. Moreover, it is still difficult to decide the boundaries of the sub-networks. Therefore, we proposed a strategy to construct a gene network by using the sparse inverse covariance matrix of gene expression data, and divide it into a series of functional modules by an adaptive partition algorithm. The strategy was validated by using the microarray data of three cancers and the RNA-sequencing data of glioblastoma. The different modules in the network exhibited specific functions in cancers progression. Moreover, based on the gene expression profiles in the modules, the risk of death was well predicted in the clustering analysis and the binary classification, indicating that our strategy can be benefit for investigating the cancer mechanisms and promoting the clinical applications of network-based methodologies in cancer researches.
疾病相关基因之间的相互作用有助于更好地理解其复杂生物系统的层次结构。目前大多数方法都需要已知基因或蛋白质之间相互作用的信息来创建网络连接。然而,这些方法在临床癌症研究中存在局限性,因为不同的癌症不仅共享基因之间的共同相互作用,而且还具有与其他癌症区分开来的特定相互作用。此外,仍然难以确定子网络的边界。因此,我们提出了一种通过使用基因表达数据的稀疏逆协方差矩阵来构建基因网络的策略,并通过自适应分区算法将其划分为一系列功能模块。该策略通过使用三种癌症的微阵列数据和胶质母细胞瘤的 RNA 测序数据进行了验证。网络中的不同模块在癌症进展中表现出特定的功能。此外,基于模块中的基因表达谱,聚类分析和二分类能够很好地预测死亡风险,表明我们的策略有助于研究癌症机制,并促进基于网络的方法在癌症研究中的临床应用。