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A novel dysregulated pathway-identification analysis based on global influence of within-pathway effects and crosstalk between pathways

机译:基于通路内效应和通路间串扰的整体影响的新型失调通路识别分析

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摘要

Identifying dysregulated pathways from high-throughput experimental data in order to infer underlying biological insights is an important task. Current pathway-identification methods focus on single pathways in isolation; however, consideration of crosstalk between pathways could improve our understanding of alterations in biological states. We propose a novel method of pathway analysis based on global influence (PAGI) to identify dysregulated pathways, by considering both within-pathway effects and crosstalk between pathways. We constructed a global gene–gene network based on the relationships among genes extracted from a pathway database. We then evaluated the extent of differential expression for each gene, and mapped them to the global network. The random walk with restart algorithm was used to calculate the extent of genes affected by global influence. Finally, we used cumulative distribution functions to determine the significance values of the dysregulated pathways. We applied the PAGI method to five cancer microarray datasets, and compared our results with gene set enrichment analysis and five other methods. Based on these analyses, we demonstrated that PAGI can effectively identify dysregulated pathways associated with cancer, with strong reproducibility and robustness. We implemented PAGI using the freely available R-based and Web-based tools ().
机译:从高通量实验数据中识别失调的途径以推断潜在的生物学见解是一项重要的任务。当前的途径识别方法集中于孤立的单一途径。然而,考虑途径之间的串扰可以增进我们对生物学状态改变的理解。我们提出一种基于全局影响(PAGI)的路径分析新方法,通过考虑路径内影响和路径之间的串扰来识别失调的路径。我们基于从途径数据库中提取的基因之间的关系,构建了一个全球基因-基因网络。然后,我们评估了每个基因差异表达的程度,并将它们映射到全球网络。重新启动的随机游走算法用于计算受全局影响的基因范围。最后,我们使用累积分布函数来确定失调通路的显着性值。我们将PAGI方法应用于五个癌症微阵列数据集,并将我们的结果与基因集富集分析和其他五种方法进行了比较。基于这些分析,我们证明了PAGI可以有效地识别与癌症相关的失调通路,并且具有强大的可重复性和鲁棒性。我们使用免费的基于R和基于Web的工具()实施了PAGI。

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