Yang Rendong, Bai Yun, Qin Zhaohui, Yu Tianwei
Department of Biostatistics and Bioinformatics, Rollins School of Public Health, Emory University, 1518 Clifton Rd, N,E, Atlanta, GA, USA.
BMC Genomics. 2014 Apr 28;15:314. doi: 10.1186/1471-2164-15-314.
Mining novel biomarkers from gene expression profiles for accurate disease classification is challenging due to small sample size and high noise in gene expression measurements. Several studies have proposed integrated analyses of microarray data and protein-protein interaction (PPI) networks to find diagnostic subnetwork markers. However, the neighborhood relationship among network member genes has not been fully considered by those methods, leaving many potential gene markers unidentified. The main idea of this study is to take full advantage of the biological observation that genes associated with the same or similar diseases commonly reside in the same neighborhood of molecular networks.
We present EgoNet, a novel method based on egocentric network-analysis techniques, to exhaustively search and prioritize disease subnetworks and gene markers from a large-scale biological network. When applied to a triple-negative breast cancer (TNBC) microarray dataset, the top selected modules contain both known gene markers in TNBC and novel candidates, such as RAD51 and DOK1, which play a central role in their respective ego-networks by connecting many differentially expressed genes.
Our results suggest that EgoNet, which is based on the ego network concept, allows the identification of novel biomarkers and provides a deeper understanding of their roles in complex diseases.
由于样本量小且基因表达测量中存在高噪声,从基因表达谱中挖掘用于准确疾病分类的新型生物标志物具有挑战性。多项研究提出对微阵列数据和蛋白质-蛋白质相互作用(PPI)网络进行综合分析,以寻找诊断性子网标志物。然而,这些方法尚未充分考虑网络成员基因之间的邻域关系,导致许多潜在的基因标志物未被识别。本研究的主要思想是充分利用生物学观察结果,即与相同或相似疾病相关的基因通常位于分子网络的同一邻域中。
我们提出了EgoNet,一种基于自我中心网络分析技术的新方法,用于从大规模生物网络中详尽地搜索疾病子网和基因标志物,并对其进行优先级排序。当应用于三阴性乳腺癌(TNBC)微阵列数据集时,所选的顶级模块既包含TNBC中已知的基因标志物,也包含新的候选标志物,如RAD51和DOK1,它们通过连接许多差异表达基因在各自的自我网络中发挥核心作用。
我们的结果表明,基于自我网络概念的EgoNet能够识别新型生物标志物,并能更深入地理解它们在复杂疾病中的作用。