Platzer Alexander, Perco Paul, Lukas Arno, Mayer Bernd
Institute for Theoretical Chemistry, University of Vienna, Vienna, Austria.
BMC Bioinformatics. 2007 Jun 27;8:224. doi: 10.1186/1471-2105-8-224.
Analyzing differential-gene-expression data in the context of protein-interaction networks (PINs) yields information on the functional cellular status. PINs can be formally represented as graphs, and approximating PINs as undirected graphs allows the network properties to be characterized using well-established graph measures. This paper outlines features of PINs derived from 29 studies on differential gene expression in cancer. For each study the number of differentially regulated genes was determined and used as a basis for PIN construction utilizing the Online Predicted Human Interaction Database.
Graph measures calculated for the largest subgraph of a PIN for a given differential-gene-expression data set comprised properties reflecting the size, distribution, biological relevance, density, modularity, and cycles. The values of a distinct set of graph measures, namely Closeness Centrality, Graph Diameter, Index of Aggregation, Assortative Mixing Coefficient, Connectivity, Sum of the Wiener Number, modified Vertex Distance Number, and Eigenvalues differed clearly between PINs derived on the basis of differential gene expression data sets characterizing malignant tissue and PINs derived on the basis of randomly selected protein lists.
Cancer PINs representing differentially regulated genes are larger than those of randomly selected protein lists, indicating functional dependencies among protein lists that can be identified on the basis of transcriptomics experiments. However, the prevalence of hub proteins was not increased in the presence of cancer. Interpretation of such graphs in the context of robustness may yield novel therapies based on synthetic lethality that are more effective than focusing on single-action drugs for cancer treatment.
在蛋白质相互作用网络(PINs)的背景下分析差异基因表达数据可产生有关细胞功能状态的信息。PINs可以形式化为图形,将PINs近似为无向图允许使用成熟的图形度量来表征网络属性。本文概述了从29项癌症差异基因表达研究中得出的PINs的特征。对于每项研究,确定差异调节基因的数量,并将其用作利用在线预测的人类相互作用数据库构建PINs的基础。
针对给定差异基因表达数据集的PINs最大子图计算的图形度量包括反映大小、分布、生物学相关性、密度、模块性和循环的属性。一组独特的图形度量值,即接近中心性、图形直径、聚集指数、 assortative混合系数、连通性、维纳数之和、修改后的顶点距离数和特征值,在基于表征恶性组织的差异基因表达数据集得出的PINs与基于随机选择的蛋白质列表得出的PINs之间明显不同。
代表差异调节基因的癌症PINs比随机选择的蛋白质列表的PINs更大,表明可以基于转录组学实验识别蛋白质列表之间的功能依赖性。然而,在癌症存在的情况下,枢纽蛋白的普遍性并未增加。在稳健性背景下对这些图形的解释可能会产生基于合成致死性的新疗法,这些疗法比专注于单一作用的癌症治疗药物更有效。