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CONTEXT-SPECIFIC GENE REGULATIONS IN CANCER GENE EXPRESSION DATA

机译:癌基因表达数据中特定于上下文的基因调控

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Learning or inferring networks of genomic regulation specific to a cellular state, such as a subtype of tumor, can yield insight above and beyond that resulting from network-learning techniques which do not acknowledge the adaptive nature of the cellular system. In this study we show that Cellular Context Mining, which is based on a mathematical model of contextual genomic regulation, produces gene regulatory networks (GRNs) from steady-state expression microarray data which are specific to the varying cellular contexts hidden in the data; we show that these GRNs not only model gene interactions, but that they are also readily annotated with context-specific genomic information. We propose that these context-specific GRNs provide advantages over other techniques, such as clustering and Bayesian networks, when applied to gene expression data of cancer patients.
机译:学习或推断特定于细胞状态的基因组调控网络,例如肿瘤的亚型,可以产生超越网络学习技术所产生的见解,而网络学习技术不能承认细胞系统的适应性。在这项研究中,我们显示基于上下文基因组调控数学模型的细胞上下文挖掘可从稳态表达微阵列数据产生基因调控网络(GRN),这些基因对于隐藏在数据中的变化的细胞上下文具有特异性。我们表明,这些GRNs不仅可以模拟基因相互作用,而且还可以方便地用上下文相关的基因组信息进行注释。我们建议这些上下文特定的GRN在应用于癌症患者的基因表达数据时,比其他技术(例如聚类和贝叶斯网络)更具优势。

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