Zhang Xiao-Fei, Ou-Yang Le, Zhao Xing-Ming, Yan Hong
School of Mathematics and Statistics &Hubei Key Laboratory of Mathematical Sciences, Central China Normal University, Wuhan, 430079, China.
Department of Electronic Engineering, City University of Hong Kong, Hong Kong, China.
Sci Rep. 2016 Sep 28;6:34112. doi: 10.1038/srep34112.
Understanding how the structure of gene dependency network changes between two patient-specific groups is an important task for genomic research. Although many computational approaches have been proposed to undertake this task, most of them estimate correlation networks from group-specific gene expression data independently without considering the common structure shared between different groups. In addition, with the development of high-throughput technologies, we can collect gene expression profiles of same patients from multiple platforms. Therefore, inferring differential networks by considering cross-platform gene expression profiles will improve the reliability of network inference. We introduce a two dimensional joint graphical lasso (TDJGL) model to simultaneously estimate group-specific gene dependency networks from gene expression profiles collected from different platforms and infer differential networks. TDJGL can borrow strength across different patient groups and data platforms to improve the accuracy of estimated networks. Simulation studies demonstrate that TDJGL provides more accurate estimates of gene networks and differential networks than previous competing approaches. We apply TDJGL to the PI3K/AKT/mTOR pathway in ovarian tumors to build differential networks associated with platinum resistance. The hub genes of our inferred differential networks are significantly enriched with known platinum resistance-related genes and include potential platinum resistance-related genes.
了解基因依赖网络结构在两个特定患者群体之间如何变化是基因组研究的一项重要任务。尽管已经提出了许多计算方法来完成这项任务,但其中大多数方法都是独立地从特定群体的基因表达数据估计相关网络,而没有考虑不同群体之间共享的共同结构。此外,随着高通量技术的发展,我们可以从多个平台收集同一患者的基因表达谱。因此,通过考虑跨平台基因表达谱来推断差异网络将提高网络推断的可靠性。我们引入了一种二维联合图形套索(TDJGL)模型,以同时从不同平台收集的基因表达谱中估计特定群体的基因依赖网络,并推断差异网络。TDJGL可以在不同患者群体和数据平台之间借用优势,以提高估计网络的准确性。模拟研究表明,TDJGL比以前的竞争方法能更准确地估计基因网络和差异网络。我们将TDJGL应用于卵巢肿瘤中的PI3K/AKT/mTOR通路,以构建与铂耐药相关的差异网络。我们推断的差异网络中的枢纽基因显著富集了已知的铂耐药相关基因,并且包括潜在的铂耐药相关基因。