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A novel algorithm for detecting differentially regulated paths based on gene set enrichment analysis

机译:基于基因集富集分析的差分调节路径检测新算法

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Motivation: Deregulated signaling cascades are known to play a crucial role in many pathogenic processes, among them are tumor initiation and progression. In the recent past, modern experimental techniques that allow for measuring the amount of mRNA transcripts of almost all known human genes in a tissue or even in a single cell have opened new avenues for studying the activity of the signaling cascades and for understanding the information flow in the networks.Results: We present a novel dynamic programming algorithm for detecting deregulated signaling cascades. The so-called FiDePa (Finding Deregulated Paths) algorithm interprets differences in the expression profiles of tumor and normal tissues. It relies on the well-known gene set enrichment analysis (GSEA) and efficiently detects all paths in a given regulatory or signaling network that are significantly enriched with differentially expressed genes or proteins. Since our algorithm allows for comparing a single tumor expression profile with the control group, it facilitates the detection of specific regulatory features of a tumor that may help to optimize tumor therapy. To demonstrate the capabilities of our algorithm, we analyzed a glioma expression dataset with respect to a directed graph that combined the regulatory networks of the KEGG and TRANSPATH database. The resulting glioma consensus network that encompasses all detected deregulated paths contained many genes and pathways that are known to be key players in glioma or cancer-related pathogenic processes. Moreover, we were able to correlate clinically relevant features like necrosis or metastasis with the detected paths.
机译:动机:失控的信号级联反应在许多致病过程中起着至关重要的作用,其中包括肿瘤的发生和发展。在最近的过去,现代实验技术可以测量组织甚至单个细胞中几乎所有已知人类基因的mRNA转录物的量,为研究信号级联的活性和理解信息流开辟了新途径。结果:我们提出了一种新颖的动态编程算法,用于检测失调的信号级联。所谓的FiDePa(寻找失调的路径)算法可解释肿瘤和正常组织表达谱的差异。它依靠众所周知的基因集富集分析(GSEA),并有效地检测给定调控或信号网络中所有途径的表达差异显着丰富的基因或蛋白质。由于我们的算法允许将单个肿瘤表达谱与对照组进行比较,因此它有助于检测可能有助于优化肿瘤治疗的肿瘤特定调控特征。为了演示我们算法的功能,我们针对有向图分析了神经胶质瘤表达数据集,该图组合了KEGG和TRANSPATH数据库的调节网络。所产生的神经胶质瘤共有网络涵盖了所有检测到的失控路径,其中包含许多基因和已知是神经胶质瘤或与癌症相关的致病过程的关键角色的途径。此外,我们能够将临床相关特征(如坏死或转移)与检测到的路径相关联。

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