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基于生物先验数据融合构建非平稳基因调控网络(英文)

Modelling non-stationary gene regulatory networks by combining microarrys with biological knowledge
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摘要 为了构建基因调控网络,提出一个基于生物先验数据融合构建非平稳动态贝叶斯网络结构的方法.该方法基于高斯混合网络模型,改变点过程和独立的能量函数.利用可逆跳跃马尔科夫蒙特卡罗抽样算法,把整个非平稳过程分解成若干平稳子片断,推断网络结构以及先验数据对网络的影响.在仿真和生物数据上测试该方法,结果显示该方法提高了网络重构的精度. In order to construct gene regulatory network, we propose a non-stationary dynamic Bayesian networks method that systematically integrates expression data with multiple sources of prior knowledge. Our method is based on Gaussian mixture Bayesian network model, change point process, and separate energy function of prior knowledge. Using an reversible jump Markov chain Monte Carlo sampling algorithm, we divide data into disjunct compartments, infer network structures, and measure the influence of the respective prior knowledge. Finally, we apply our approach to treat both synthetic data and biological data. The results show that the proposed method improves the network reconstruction accuracy.
出处 《中国科学院大学学报(中英文)》 CAS CSCD 北大核心 2013年第6期806-812,共7页 Journal of University of Chinese Academy of Sciences
基金 Supported by the National Nature Science Foundation of China(60702035) Nature Science Foundation of Zhejiang Province(Y6090164)
关键词 贝叶斯网络 基因调控网络 马尔科夫蒙特卡罗抽样 改变点过程 Bayesian networks gene regulatory networks Markov chain Monte Carlo changepoint process
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参考文献16

  • 1Bernard A,Hartemink A. Informative structure priors:Joint learning of dynamic regulatiory networks from multiple types of data[A].New Jersey:World Scientific,2005.459-470.
  • 2Wethli A V,Husmeier D. Reconstructing gene regulatory networks with Bayesian networks by combining expression data with multiple sources of prior knowledge[J].{H}STATISTICAL APPLICATIONS IN GENETICS AND MOLECULAR BIOLOGY,2007,(01):Article15.
  • 3Nariai N,Kim S,Imoto S. Using protein-protein interactions for refining gene networks estimated from microarray data by Bayesian networks[A].New Jersey:World Scientific,2004.336-347.
  • 4Robinson J W,Hartemink A J. Learning non-stationary dynamic Bayesian networks[J].{H}JOURNAL OF MACHINE LEARNING RESEARCH,2010.3647-3680.
  • 5Grzegorczyk M,Husmeier D. Modelling non-stationary dynamic gene regulatory processes with the BGM model[J].Comput Star,2011.199-218.
  • 6Yi J,Jun H. Constructing non-stationary dynamic Bayesian networks with a flexible lag choosing mechanism[J].{H}BIOINFORMATICS,2010,(06):S27.
  • 7Green P. Reversible jump Markov chain Monte Carlo computation and Bayesian model determination[J].{H}BIOMETRIKA,1995.711-732.
  • 8Green P. Trans-dimensional Markov chain Monte Carlo[J].Oxford Statistical Science Series,2003.179-198.
  • 9Husmeier D,Dondelinger F,Lébre S. Inter-time segment information sharing for non-homogeneous dynamic Bayesian networks[J].Advances in Neural Information Processing Systems,2010.901-909.
  • 10Cantone 1,Marucci L,Iorio F. A yeast synthetic network for in vivo assessment of reverse-engineering and modeling approaches[J].{H}CELL,2009,(01):172-181.

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