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首页> 外文期刊>Nucleic acids research >Topology-based cancer classification and related pathway mining using microarray data
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Topology-based cancer classification and related pathway mining using microarray data

机译:使用微阵列数据的基于拓扑的癌症分类和相关途径挖掘

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Cancer classification is the critical basis for patient-tailored therapy, while pathway analysis is a promising method to discover the underlying molecular mechanisms related to cancer development by using microarray data. However, linking the molecular classification and pathway analysis with gene network approach has not been discussed yet. In this study, we developed a novel framework based on cancer class-specific gene networks for classification and pathway analysis. This framework involves a novel gene network construction, named ordering network, which exhibits the power-law node-degree distribution as seen in correlation networks. The results obtained from five public cancer datasets showed that the gene networks with ordering relationship are better than those with correlation relationship in terms of accuracy and stability of the classification performance. Furthermore, we integrated the ordering networks, classification information and pathway database to develop the topology-based pathway analysis for identifying cancer class-specific pathways, which might be essential in the biological significance of cancer. Our results suggest that the topology-based classification technology can precisely distinguish cancer subclasses and the topology-based pathway analysis can characterize the correspondent biochemical pathways even if there are subtle, but consistent, changes in gene expression, which may provide new insights into the underlying molecular mechanisms of tumorigenesis.
机译:癌症分类是为患者量身定制的治疗方法的关键基础,而通路分析是通过使用微阵列数据发现与癌症发展相关的潜在分子机制的有前途的方法。但是,尚未讨论将分子分类和途径分析与基因网络方法联系起来的问题。在这项研究中,我们开发了一种基于癌症类别特异性基因网络的新型框架,用于分类和途径分析。该框架涉及一种新颖的基因网络结构,即有序网络,该网络展现出了相关网络中所见的幂律节点度分布。从五个公共癌症数据集获得的结果表明,在分类性能的准确性和稳定性方面,具有顺序关系的基因网络要优于具有相关关系的基因网络。此外,我们整合了订购网络,分类信息和途径数据库,以开发基于拓扑的途径分析来识别特定于癌症类别的途径,这可能对癌症的生物学意义至关重要。我们的研究结果表明,基于拓扑的分类技术可以准确地区分癌症亚类,即使基因表达存在细微但一致的变化,基于拓扑的途径分析也可以表征相应的生化途径,这可能会为基础研究提供新的见解。肿瘤发生的分子机制。

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