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A novel method for crosstalk analysis of biological networks: improving accuracy of pathway annotation

机译:一种新型生物网络串扰分析的新方法:提高途径注释的准确性

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摘要

Analyzing gene expression patterns is a mainstay to gain functional insights of biological systems. A plethora of tools exist to identify significant enrichment of pathways for a set of differentially expressed genes. Most tools analyze gene overlap between gene sets and are therefore severely hampered by the current state of pathway annotation, yet at the same time they run a high risk of false assignments. A way to improve both true positive and false positive rates (FPRs) is to use a functional association network and instead look for enrichment of network connections between gene sets. We present a new network crosstalk analysis method BinoX that determines the statistical significance of network link enrichment or depletion between gene sets, using the binomial distribution. This is a much more appropriate statistical model than previous methods have employed, and as a result BinoX yields substantially better true positive and FPRs than was possible before. A number of benchmarks were performed to assess the accuracy of BinoX and competing methods. We demonstrate examples of how BinoX finds many biologically meaningful pathway annotations for gene sets from cancer and other diseases, which are not found by other methods.
机译:分析基因表达模式是获得生物系统功能见解的主体。存在一种血清的工具,以确定一组差异表达基因的途径的显着富集。大多数工具分析基因集之间的基因重叠,因此通过当前的途径注释状态严重阻碍,但同时它们运行了高风险的虚假分配。一种改善真正的阳性和假阳性率(FPRS)的方法是使用功能关联网络,而是寻找基因集之间的网络连接的富集。我们使用二项式分布,提出了一种新的网络串扰分析方法Binox,它决定了基因集之间的网络链路富集或耗尽的统计学意义。这是比以前的方法所用的更合适的统计模型,因此宾耐力产率基本上比以前的真实阳性和FPRS产生基本上更好。进行了许多基准,以评估Binox和竞争方法的准确性。我们展示了Binox如何找到许多生物有意义的途径注释的癌症和其他疾病的基因集,这些疾病未被其他方法发现。

著录项

  • 来源
    《Nucleic Acids Research》 |2017年第2期|共9页
  • 作者单位

    Stockholm Univ Dept Biochem &

    Biophys Stockholm Bioinformat Ctr Sci Life Lab Box 1031 S-17121 Solna Sweden;

    Stockholm Univ Dept Biochem &

    Biophys Stockholm Bioinformat Ctr Sci Life Lab Box 1031 S-17121 Solna Sweden;

    Karolinska Inst Div Translat Med &

    Chem Biol Dept Med Biochem &

    Biophys Sci Life Lab Box 1031 S-17121 Solna Sweden;

    Stockholm Univ Dept Biochem &

    Biophys Stockholm Bioinformat Ctr Sci Life Lab Box 1031 S-17121 Solna Sweden;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物化学;
  • 关键词

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