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Detecting Perturbed Subpathways towards Mouse Lung Regeneration Following H1N1 Influenza Infection

机译:检测H1N1流感感染后小鼠肺再生的干扰子途径

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It has already been established by the systems-level approaches that the future of predictive disease biomarkers will not be sketched by plain lists of genes or proteins or other biological entities but rather integrated entities that consider all underlying component relationships. Towards this orientation, early pathway-based approaches coupled expression data with whole pathway interaction topologies but it was the recent approaches that zoomed into subpathways (local areas of the entire biological pathway) that provided more targeted and context-specific candidate disease biomarkers. Here, we explore the application potential of PerSubs, a graph-based algorithm which identifies differentially activated disease-specific subpathways. PerSubs is applicable both for microarray and RNA-Seq data and utilizes the Kyoto Encyclopedia of Genes and Genomes (KEGG) database as reference for biological pathways. PerSubs operates in two stages: first, identifies differentially expressed genes (or uses any list of disease-related genes) and in second stage, treating each gene of the list as start point, it scans the pathway topology around to build meaningful subpathway topologies. Here, we apply PerSubs to investigate which pathways are perturbed towards mouse lung regeneration following H1N1 influenza infection.
机译:系统级方法已经确定,预测性疾病生物标志物的未来将不会由基因或蛋白质或其他生物实体的简单清单来勾勒,而是会考虑所有潜在成分关系的整合实体。朝着这种方向发展,早期的基于途径的方法将表达数据与全途径相互作用的拓扑结构结合在一起,但是最近扩展到亚途径(整个生物途径的局部区域)的方法才提供了更具针对性和针对具体情况的候选疾病生物标记。在这里,我们探索PerSubs的应用潜力,PerSubs是一种基于图的算法,可识别差异激活的疾病特异性子途径。 PerSubs适用于微阵列和RNA-Seq数据,并利用《京都议定书》的基因和基因组百科全书(KEGG)数据库作为生物学途径的参考。 PerSubs的运行分为两个阶段:第一,确定差异表达的基因(或使用任何与疾病相关的基因列表),第二阶段,将列表中的每个基因视为起点,它扫描周围的路径拓扑以构建有意义的子路径拓扑。在这里,我们应用PerSubs来调查H1N1流感感染后哪些途径被干扰导致小鼠肺再生。

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