Department of Biomedical Informatics, The Ohio State University, Columbus, Ohio, USA.
PLoS Comput Biol. 2012;8(8):e1002656. doi: 10.1371/journal.pcbi.1002656. Epub 2012 Aug 30.
Gene co-expression network analysis is an effective method for predicting gene functions and disease biomarkers. However, few studies have systematically identified co-expressed genes involved in the molecular origin and development of various types of tumors. In this study, we used a network mining algorithm to identify tightly connected gene co-expression networks that are frequently present in microarray datasets from 33 types of cancer which were derived from 16 organs/tissues. We compared the results with networks found in multiple normal tissue types and discovered 18 tightly connected frequent networks in cancers, with highly enriched functions on cancer-related activities. Most networks identified also formed physically interacting networks. In contrast, only 6 networks were found in normal tissues, which were highly enriched for housekeeping functions. The largest cancer network contained many genes with genome stability maintenance functions. We tested 13 selected genes from this network for their involvement in genome maintenance using two cell-based assays. Among them, 10 were shown to be involved in either homology-directed DNA repair or centrosome duplication control including the well-known cancer marker MKI67. Our results suggest that the commonly recognized characteristics of cancers are supported by highly coordinated transcriptomic activities. This study also demonstrated that the co-expression network directed approach provides a powerful tool for understanding cancer physiology, predicting new gene functions, as well as providing new target candidates for cancer therapeutics.
基因共表达网络分析是预测基因功能和疾病生物标志物的有效方法。然而,很少有研究系统地鉴定涉及各种类型肿瘤的分子起源和发展的共表达基因。在这项研究中,我们使用网络挖掘算法从 16 个器官/组织中提取的 33 种癌症的微阵列数据集识别紧密连接的基因共表达网络。我们将结果与多种正常组织类型中的网络进行比较,发现癌症中有 18 个紧密连接的频繁网络,这些网络与癌症相关的活动高度富集。大多数鉴定的网络也形成了物理相互作用的网络。相比之下,在正常组织中只发现了 6 个网络,这些网络高度富集了管家功能。最大的癌症网络包含许多具有基因组稳定性维持功能的基因。我们使用两种基于细胞的测定法测试了来自该网络的 13 个选定基因在基因组维持中的参与情况。其中,有 10 个基因参与同源定向 DNA 修复或中心体复制控制,包括众所周知的癌症标志物 MKI67。我们的结果表明,高度协调的转录组活性支持癌症的普遍公认特征。这项研究还表明,共表达网络指导方法为理解癌症生理学、预测新基因功能以及为癌症治疗提供新的靶候选物提供了强大的工具。