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首页> 外文期刊>Journal of Computational Methods in Sciences and Engineering >Combining network topology with transcriptomic data for identifying radiosensitive gene signatures
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Combining network topology with transcriptomic data for identifying radiosensitive gene signatures

机译:将网络拓扑与转录组数据结合起来鉴定放射敏感基因签名

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Radiotherapy sensitivity assay can gain insight into radiation biology and clinically improve radiotherapy of cancer patients. This paper proposesd to combine gene network information and gene expression profiles for identifying radiosensitive signatures. Specifically, the association of each gene with survival fraction (SF) induced by radiation was first estimated using Spearman correlation measure and then adjusted based on network topology. We used directed random walk (DRW) algorithm to assess the topological importance of genes. Two types of molecular networks, protein-to-protein interaction network and gene network, were considered in the DRW algorithm. The identified signatures were verified via pathways enrichment analysis, shown rich in disease pathways. The findings suggested useful guidelines for the clinical practice of radiotherapy of cancer patients.
机译:放射疗法敏感性测定可以深入了解辐射生物学和临床改善癌症患者的放疗。本文提出结合基因网络信息和基因表达谱来识别放射敏感性签名。具体地,首先使用Spearman相关性测量估计通过辐射诱导的生存率级分(SF)的每个基因的关联,然后根据网络拓扑进行调整。我们使用定向随机步行(DRW)算法来评估基因的拓扑重要性。在DRW算法中考虑了两种类型的分子网络,蛋白质对蛋白质相互作用网络和基因网络。通过途径富集分析验证已鉴定的签名,富含疾病途径。该研究结果表明了癌症患者放射治疗的临床实践的有用指导。

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