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Network Analysis of Cancer-focused Association Network Reveals Distinct Network Association Patterns

机译:以癌症为中心的关联网​​络的网络分析揭示了独特的网络关联模式

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Cancer is a complex and heterogeneous disease. Genetic methods have uncovered thousands of complex tissue-specific mutation-induced effects and identified multiple disease gene targets. Important associations between cancer and other biological entities (eg, genes and drugs) in cancer network, however, are usually scattered in biomedical publications. Systematic analyses of these cancer-specific associations can help highlight the hidden associations between different cancer types and related genes/drugs. In this paper, we proposed a novel network-based computational framework to identify statistically over-expressed subnetwork patterns called network motifs (NMs) in an integrated cancer-specific drug–disease–gene network extracted from Semantic MEDLINE, a database containing extracted associations from MEDLINE abstracts. Eight significant NMs were identified and considered as the backbone of the cancer association network. Each NM corresponds to specific biological meanings. We demonstrated that such approaches will facilitate the formulization of novel cancer research hypotheses, which is critical for translational medicine research and personalized medicine in cancer.
机译:癌症是一种复杂而异质的疾病。遗传方法已经发现了数千种复杂的组织特异性突变诱导的效应,并确定了多个疾病基因靶标。然而,癌症与癌症网络中其他生物实体(例如基因和药物)之间的重要关联通常散布在生物医学出版物中。对这些癌症特异性关联的系统分析可以帮助突出显示不同癌症类型与相关基因/药物之间的隐藏关联。在本文中,我们提出了一个新颖的基于网络的计算框架,以在从语义MEDLINE提取的综合癌症特异性药物-疾病-基因网络中识别统计上过分表达的子网络模式,称为网络主题(NMs),该数据库包含从中提取的关联MEDLINE摘要。确定了八个重要的NM,并将其视为癌症关联网络的骨干。每个NM对应于特定的生物学含义。我们证明了这种方法将促进新的癌症研究假说的形成,这对于癌症中的转化医学研究和个性化医学至关重要。

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