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首页> 外文期刊>Biochimica et Biophysica Acta. Gene Regulatory Mechanisms >Gene networks in cancer are biased by aneuploidies and sample impurities
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Gene networks in cancer are biased by aneuploidies and sample impurities

机译:癌症中的基因网络被非血糖和样品杂质偏压

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摘要

Gene regulatory network inference is a standard technique for obtaining structured regulatory information from, for instance, gene expression measurements. Methods performing this task have been extensively evaluated on synthetic, and to a lesser extent real data sets. In contrast to these test evaluations, applications to gene expression data of human cancers are often limited by fewer samples and more potential regulatory links, and are biased by copy number aberrations as well as cell mixtures and sample impurities. Here, we take networks inferred from TCGA cohorts as an example to show that (1) transcription factor annotations are essential to obtain reliable networks, and (2) even for state of the art methods, we expect that between 20 and 80% of edges are caused by copy number changes and cell mixtures rather than transcription factor regulation.
机译:基因调节网络推理是一种用于从例如基因表达测量获得结构化调节信息的标准技术。 执行此任务的方法已广泛评估合成综合性,以及较小的实际数据集。 与这些试验评估相比,对人类癌症的基因表达数据的应用通常限制较少的样品和更多潜在的调节链路,并且通过复制数像差和细胞混合物和样品杂质偏置。 在这里,我们采取从TCGA队列推断的网络作为示例,以表明(1)转录因子注释对于获得可靠的网络是必不可少的,并且即使是最先进的方法,我们期望在20到80%的边缘之间 是由拷贝数变化和细胞混合物而不是转录因子调节引起的。

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