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使用行为符号网络和中心性特征对肝细胞癌中的基因共表达进行建模和分析。

Modeling and analyzing gene co-expression in hepatocellular carcinoma using actor-semiotic networks and centrality signatures.

作者信息

Fung David C Y

机构信息

Faculty of Engineering and Information Technologies, School of Information Technologies, The University of Sydney, Sydney, New South Wales, Australia.

出版信息

Cancer Inform. 2008;6:463-74. doi: 10.4137/cin.s1043. Epub 2008 Nov 5.

Abstract

Primary hepatocellular carcinoma (HCC) is currently the fifth most common malignancy and the third most common cause of cancer mortality worldwide. Because of its high prevalence in developing nations, there have been numerous efforts made in the molecular characterization of primary HCC. However, a better understanding into the pathology of HCC required software-assisted network modeling and analysis. In this paper, the author presented his first attempt in exploring the biological implication of gene co-expression in HCC using actor-semiotic network modeling and analysis. The network was first constructed by integrating inter-actor relationships, e.g. gene co-expression, microRNA-to-gene, and protein interactions, with semiotic relationships, e.g. gene-to-Gene Ontology Process. Topological features that are highly discriminative of the HCC phenotype were identified by visual inspection. Finally, the author devised a graph signature-based analysis method to supplement the network exploration.

摘要

原发性肝细胞癌(HCC)目前是全球第五大常见恶性肿瘤,也是癌症死亡的第三大常见原因。由于其在发展中国家的高发病率,人们在原发性肝癌的分子特征研究方面做出了许多努力。然而,要更好地理解肝癌的病理,需要软件辅助的网络建模和分析。在本文中,作者首次尝试使用行为符号网络建模和分析来探索基因共表达在肝癌中的生物学意义。该网络首先通过整合行为者之间的关系构建,例如基因共表达、microRNA与基因的关系以及蛋白质相互作用,以及符号关系,例如基因与基因本体过程的关系。通过视觉检查识别出对肝癌表型具有高度判别性的拓扑特征。最后,作者设计了一种基于图特征的分析方法来补充网络探索。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a771/2623292/98f70d64a2d4/cin-6-0463f1.jpg

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