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Subpathway Analysis based on Signaling-Pathway Impact Analysis of Signaling Pathway

机译:基于信令路径的子路径分析信令路径影响分析

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摘要

Pathway analysis is a common approach to gain insight from biological experiments. Signaling-pathway impact analysis (SPIA) is one such method and combines both the classical enrichment analysis and the actual perturbation on a given pathway. Because this method focuses on a single pathway, its resolution generally is not very high because the differentially expressed genes may be enriched in a local region of the pathway. In the present work, to identify cancer-related pathways, we incorporated a recent subpathway analysis method into the SPIA method to form the “sub-SPIA method.” The original subpathway analysis uses the k-clique structure to define a subpathway. However, it is not sufficiently flexible to capture subpathways with complex structure and usually results in many overlapping subpathways. We therefore propose using the minimal-spanning-tree structure to find a subpathway. We apply this approach to colorectal cancer and lung cancer datasets, and our results show that sub-SPIA can identify many significant pathways associated with each specific cancer that other methods miss. Based on the entire pathway network in the Kyoto Encyclopedia of Genes and Genomes, we find that the pathways identified by sub-SPIA not only have the largest average degree, but also are more closely connected than those identified by other methods. This result suggests that the abnormality signal propagating through them might be responsible for the specific cancer or disease.
机译:途径分析是从生物学实验中获得洞察力的常用方法。信号通路影响分析(SPIA)就是这样一种方法,它将经典的富集分析与给定通路上的实际扰动结合起来。由于此方法只关注单个途径,因此其分辨率通常不是很高,因为差异表达的基因可能会富集在该途径的局部区域中。在当前的工作中,为了确定与癌症相关的途径,我们将最新的子途径分析方法整合到了SPIA方法中,形成了“ sub-SPIA方法”。原始子路径分析使用k-clique结构定义子路径。但是,捕获具有复杂结构的子路径不够灵活,通常会导致许多重叠的子路径。因此,我们建议使用最小生成树结构来查找子路径。我们将这种方法应用于结直肠癌和肺癌数据集,我们的结果表明,sub-SPIA可以识别与其他方法遗漏的每种特定癌症相关的许多重要途径。基于《京都基因与基因组百科全书》中的整个途径网络,我们发现,用sub-SPIA鉴定的途径不仅具有最大的平均程度,而且比其他方法所鉴定的途径更为紧密。该结果表明,通过它们传播的异常信号可能与特定的癌症或疾病有关。

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