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首页> 外文期刊>The pharmacogenomics journal >Background gene expression networks significantly enhance drug response prediction by transcriptional profiling
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Background gene expression networks significantly enhance drug response prediction by transcriptional profiling

机译:背景基因表达网络通过转录谱分析显着增强了药物反应的预测

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摘要

A central goal of gene expression studies coupled with drug response screens is to identify predictive profiles that can be exploited to stratify patients. Numerous methods have been proposed towards this end, most of them focusing on novel statistical methods and model selection techniques that attempt to uncover groups of genes, whose expression profiles are directly and robustly correlated with drug response. However, biological systems process information through the crosstalk of multiple signaling networks, whose ultimate phenotypic consequences may only be determined by the combined input of relevant interacting systems. By restricting predictive signatures to direct gene-drug correlations, biologically meaningful interactions that may serve as superior predictors are ignored. Here we demonstrate that predictive signatures, which incorporate the interaction between background gene expression patterns and individual predictive probes, can provide superior models than those that directly relate gene expression levels to pharmacological response, and thus should be more widely utilized in pharmacogenetic studies.
机译:基因表达研究与药物反应筛查相结合的主要目标是确定可用于对患者进行分层的预测特征。为此,已经提出了许多方法,其中大多数集中于试图发现基因组的新型统计方法和模型选择技术,这些基因的表达谱与药物反应直接且牢固地相关。然而,生物系统通过多个信号网络的串扰来处理信息,其最终表型后果只能由相关相互作用系统的组合输入来确定。通过将预测标记限制为直接的基因-药物相关性,可以忽略可能用作高级预测因子的生物学上有意义的相互作用。在这里,我们证明了结合背景基因表达模式和单个预测探针之间相互作用的预测特征,可以提供比直接将基因表达水平与药理反应相关的模型更好的模型,因此应在药理研究中更广泛地利用。

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