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Gaussian graphical model for identifying significantly responsive regulatory networks from time course high-throughput data

机译:高斯图形模型,用于从时程高通量数据中识别响应迅速的监管网络

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摘要

With rapid accumulation of functional relationships between biological molecules, knowledge-based networks have been constructed and stocked in many databases. These networks provide curated and comprehensive information for functional linkages among genes and proteins, whereas their activities are highly related with specific phenotypes and conditions. To evaluate a knowledge-based network in a specific condition, the consistency between its structure and conditionally specific gene expression profiling data are an important criterion. In this study, the authors propose a Gaussian graphical model to evaluate the documented regulatory networks by the consistency between network architectures and time course gene expression profiles. They derive a dynamic Bayesian network model to evaluate gene regulatory networks in both simulated and true time course microarray data. The regulatory networks are evaluated by matching network structure with gene expression to achieve consistency measurement. To demonstrate the effectiveness of the authors method, they identify significant regulatory networks in response to the time course of circadian rhythm. The knowledge-based networks are screened and ranked by their structural consistencies with dynamic gene expression profiling.
机译:随着生物分子之间功能关系的快速积累,基于知识的网络已经构建并存储在许多数据库中。这些网络为基因和蛋白质之间的功能连接提供了详尽而全面的信息,而它们的活性与特定的表型和条件高度相关。为了在特定条件下评估基于知识的网络,其结构与有条件的特定基因表达谱数据之间的一致性是重要的标准。在这项研究中,作者提出了一个高斯图形模型,通过网络架构和时程基因表达谱之间的一致性来评估已记录的调控网络。他们导出了动态贝叶斯网络模型,以评估模拟和实时过程微阵列数据中的基因调控网络。通过使网络结构与基因表达匹配来评估调节网络,以实现一致性测量。为了证明作者方法的有效性,他们确定了重要的调节网络,以响应昼夜节律的时程。基于知识的网络通过其结构一致性与动态基因表达谱进行筛选和排名。

著录项

  • 来源
    《IET systems biology》 |2013年第5期|143-152|共10页
  • 作者单位

    School of Control Science and Engineering, Shandong University, Jinan, Shandong 250061, China;

    Key Laboratory of Systems Biology, SIBS-Novo Nordisk Translational Research Centre for PreDiabetes, Shanghai Institutes for Biological Sciences, Chinese Academy of Sciences, Shanghai 200031, People's Republic of China;

    Computational Biology Research Center, National Institute of Advanced Industrial Science and Technology, Tokyo 135-0064, Japan;

    Key Laboratory of Systems Biology, SIBS-Novo Nordisk Translational Research Centre for PreDiabetes, Shanghai Institutes for Biological Sciences, Chinese Academy of Sciences, Shanghai 200031, People's Republic of China;

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