利用基因网络的进化特性研究胶质母细胞瘤的生存预后

A. Upton, Theodoros N. Arvanitis
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引用次数: 6

摘要

近年来,人们对图论技术在构建和分析来自癌细胞系数据集的生物学信息基因网络中的应用产生了广泛的兴趣和大量的出版物。目前的研究工作主要着眼于网络的整体静态、拓扑表示,并没有研究图论技术在癌症进化研究中的应用。其中一些研究使用图论度量,如度、中间性和接近中心性,来识别这些网络中的重要枢纽基因。然而,这些还没有完全调查基因在疾病不同阶段的重要性。先前的人类胶质母细胞瘤出版物已经根据特征基因确定了成人胶质母细胞瘤的四种亚型。在一篇这样的文章中,Verhaak等人发现,这些亚型对应于一个狭窄的中位生存范围,从最具侵袭性的亚型的11.3个月到最不具侵袭性的13.1个月。在这项工作中,我们提出了一项基于生存数据分类的胶质母细胞瘤进化图理论研究,确认了使用既定图理论指标识别的与不同生存时间相关的基因。这项工作扩展了图论方法在癌细胞系数据进化研究中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating survival prognosis of glioblastoma using evolutional properties of gene networks
In recent years, there has been widespread interest and a large number of publications on the application of graph theory techniques into constructing and analyzing biologically-informed gene networks from cancer cell line data sets. Current research efforts have predominantly looked at an overall static, topological, representation of the network, and have not investigated the application of graph theoretical techniques to evolutionary investigations of cancer. A number of these studies have used graph theory metrics, such as degree, betweenness, and closeness centrality, to identify important hub genes in these networks. However, these have not fully investigated the importance of genes across the different stages of the disease. Previous human glioblastoma publications have identified four subtypes of glioblastoma in adults, based on signature genes. In one such publication, Verhaak et al. found that the subtypes correspond to a narrow median survival range, from 11.3 months for the most aggressive subtype, to 13.1 months for the least aggressive one. In this work, we present an evolutionary graph theory study of glioblastoma based on survival data categorization, confirming genes associated with different survival times identified using established graph theory metrics. The work is extending the application of graph theory approaches to evolutionary studies of cancer cell line data.
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