Tsuji Shingo, Ihara Sigeo, Aburatani Hiroyuki
Genome Science Division, Research Center for Advanced Science and Technology (RCAST), The University of Tokyo, 4-6-1 Komaba, Meguro-ku, Tokyo 153-8904, Japan.
BMC Syst Biol. 2012 Sep 15;6:124. doi: 10.1186/1752-0509-6-124.
In the functional genomics analysis domain, various methodologies are available for interpreting the results produced by high-throughput biological experiments. These methods commonly use a list of genes as an analysis input, and most of them produce a more complicated list of genes or pathways as the results of the analysis. Although there are several network-based methods, which detect key nodes in the network, the results tend to include well-studied, major hub genes.
To mine the molecules that have biological meaning but to fewer degrees than major hubs, we propose, in this study, a new network-based method for selecting these hidden key molecules based on virtual information flows circulating among the input list of genes. The human biomolecular network was constructed from the Pathway Commons database, and a calculation method based on betweenness centrality was newly developed. We validated the method with the ErbB pathway and applied it to practical cancer research data. We were able to confirm that the output genes, despite having fewer edges than major hubs, have biological meanings that were able to be invoked by the input list of genes.
The developed method, named NetHiKe (Network-based Hidden Key molecule miner), was able to detect potential key molecules by utilizing the human biomolecular network as a knowledge base. Thus, it is hoped that this method will enhance the progress of biological data analysis in the whole-genome research era.
在功能基因组学分析领域,有多种方法可用于解释高通量生物学实验产生的结果。这些方法通常将基因列表作为分析输入,并且大多数方法会生成更复杂的基因或通路列表作为分析结果。尽管有几种基于网络的方法可以检测网络中的关键节点,但结果往往包含研究充分的主要枢纽基因。
为了挖掘那些具有生物学意义但程度低于主要枢纽基因水平的分子,在本研究中,我们提出了一种基于网络的新方法,用于根据在输入基因列表之间循环的虚拟信息流来选择这些隐藏的关键分子。人类生物分子网络是从Pathway Commons数据库构建的,并且新开发了一种基于介数中心性的计算方法。我们用ErbB通路对该方法进行了验证,并将其应用于实际的癌症研究数据。我们能够确认,输出基因尽管与主要枢纽基因相比边较少,但具有能够由输入基因列表引发的生物学意义。
所开发的方法名为NetHiKe(基于网络的隐藏关键分子挖掘器),能够通过将人类生物分子网络用作知识库来检测潜在的关键分子。因此,希望该方法将促进全基因组研究时代生物学数据分析的进展。