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Network as biomarker Quantifying transcriptional co-expression to stratify cancer clinical phenotypes

机译:网络作为生物标记物定量转录共表达以分层癌症临床表型

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Identifying robust biomarkers for cancer phenotypes has challenged the biological and pharmacological communities for many years, more so since the availability of screening methods that reveal the expression levels of all the genes in the genome. A host of different approaches have been used to address this lack of robustness. These methods have included a spectrum of approaches from gene enrichment analysis to network inference analysis. More recently, some methods that use the network properties of genes have demonstrated an ability to provide a more robust signature. In this review, we survey different network-as-biomarker methods used to identify various biomarkers and we discuss the critical role of networks in the progress toward personalized medicine. We also discuss the ability of the network to identify misguided processes, rather than the gene itself, as the core of distinctions among phenotypes. Discussions about the importance of the molecular pathway view and about processes (rather than the gene per se) at the core of understanding cancer are not new. However, this review focuses on the set of tools available for actually measuring the pathway, or the process, when the expression levels of their components are available.
机译:多年来,鉴定出强大的癌症表型生物标志物已经对生物学和药理学界提出了挑战,更重要的是,自从能够揭示基因组中所有基因表达水平的筛选方法问世以来。已经使用了许多不同的方法来解决这种鲁棒性不足的问题。这些方法包括从基因富集分析到网络推理分析的一系列方法。最近,一些利用基因网络特性的方法已证明具有提供更强大特征的能力。在这篇综述中,我们调查了用于识别各种生物标志物的不同网络即生物标志物方法,并讨论了网络在朝着个性化医学发展的过程中的关键作用。我们还讨论了网络识别误导过程而不是基因本身作为表型差异核心的能力。关于分子途径观点的重要性以及关于理解癌症核心的过程(而不是基因本身)的讨论并不是新鲜事物。但是,本文将重点介绍在组件的表达水平可用时可用于实际测量途径或过程的一组工具。

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