Wang Haiying, Zheng Huiru, Wang Jianxin, Wang Chaoyang, Wu FangXiang
IEEE Trans Nanobioscience. 2016 Jun;15(4):335-342. doi: 10.1109/TNB.2016.2556640. Epub 2016 Apr 20.
Comprehensive characterization and identification of cancer subtypes have a number of applications and implications in life science and cancer research. Technologies centered on the integration of omics data hold great promise in this endeavor. This paper proposed a multiplex network-based approach for integrative analysis of heterogeneous omics data. It represents a useful alternative network-based solution to the problem and a significant step forward to the methods in which each type of data is treated independently. It has been tested on the identification of the subtypes of glioblastoma multiforme and breast invasive carcinoma from three omics data. The results obtained have shown that it has achieved the performance comparable to state-of-the-art techniques (Normalized Mutual Information > 0.8). In comparison to traditional systems biology tools, the proposed methodology has several significant advantages. It has the ability to correlate and integrate multiple data levels in a holistic manner which may be useful to facilitate our understanding of the pathogenesis of diseases and to capture the heterogeneity of biological processes and the complexity of phenotypes.
癌症亚型的全面表征和识别在生命科学和癌症研究中有许多应用和意义。以组学数据整合为核心的技术在这一领域具有巨大潜力。本文提出了一种基于多重网络的方法,用于对异质组学数据进行综合分析。它是解决该问题的一种有用的基于网络的替代方案,也是朝着将每种类型的数据独立处理的方法迈出的重要一步。该方法已通过三种组学数据对多形性胶质母细胞瘤和乳腺浸润性癌的亚型进行识别的测试。所获得的结果表明,其性能已达到与现有技术相当的水平(归一化互信息>0.8)。与传统的系统生物学工具相比,所提出的方法具有几个显著优点。它能够以整体方式关联和整合多个数据层面,这可能有助于促进我们对疾病发病机制的理解,并捕捉生物过程的异质性和表型的复杂性。