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Gene pathways and subnetworks distinguish between major glioma subtypes and elucidate potential underlying biology.

机译:基因途径和亚网络区分主要的神经胶质瘤亚型,并阐明潜在的潜在生物学。

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摘要

Molecular diagnostic tools are increasingly being used in an attempt to classify primary human brain tumors more accurately. While methods that are based on the analysis of individual gene expression prove to be useful for diagnostic purposes, they are devoid of biological significance since tumorgenesis is a concerted deregulation of multiple pathways rather than single genes. In a proof of concept, we utilize two large clinical data sets and show that the elucidation of enriched pathways and small differentially expressed sub-networks of protein interactions allow a reliable classification of glioblastomas and oligodendrogliomas. Applying a feature selection method, we observe that an optimized subset of pathways and subnetworks significantly improves the prediction accuracy. By determining the enrichment of altered genes in pathways and subnetworks we show that optimized subsets of genes rarely seem to be a target of genomic alteration. Our results suggest that groups of genes play a decisive role for the phenotype of the underlying tumor samples that can be utilized to reliably distinguish tumor types. In the absence of enrichment of genes that are genomically altered we assume that genetic changes largely exert an indirect rather than direct regulatory influence on a number of tumor-defining regulatory networks.
机译:越来越多地使用分子诊断工具来尝试更准确地对人类原发性脑肿瘤进行分类。尽管基于单个基因表达分析的方法被证明可用于诊断目的,但它们没有生物学意义,因为肿瘤发生是多种途径而不是单个基因的协同调节。在概念验证中,我们利用了两个较大的临床数据集,并表明阐明了丰富的途径和较小的蛋白质相互作用差异表达子网络,可以对胶质母细胞瘤和少突胶质细胞瘤进行可靠的分类。应用特征选择方法,我们观察到路径和子网的优化子集显着提高了预测准确性。通过确定途径和子网中变异基因的富集,我们表明优化的基因子集似乎很少成为基因组变异的目标。我们的结果表明,基因组对基础肿瘤样品的表型起决定性作用,可用于可靠地区分肿瘤类型。在缺乏基因组学改变的基因富集的情况下,我们假设遗传变化在许多定义肿瘤的调控网络中发挥了间接而非直接的调控作用。

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