贝叶斯整合生物先验知识,用贝叶斯网络重构基因调控网络。

Dirk Husmeier, Adriano V Werhli
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引用次数: 0

摘要

通过对生物先验知识的系统整合,已经有各种各样的尝试来改进从微阵列数据中重建基因调控网络。我们的方法基于Imoto等人的开创性工作,其中先验知识以能量函数表示,从中获得网络结构上的Gibbs分布形式的先验分布。该分布的超参数表示与相对于数据的先验知识相关的权重。为了补充Imoto等人的工作,我们从后验分布中推导并测试了同时用于采样网络和超参数的MCMC方案。我们通过利用细胞术蛋白浓度和KEGG的先验知识重建RAF通路,评估了这种方法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian integration of biological prior knowledge into the reconstruction of gene regulatory networks with Bayesian networks.

There have been various attempts to improve the reconstruction of gene regulatory networks from microarray data by the systematic integration of biological prior knowledge. Our approach is based on pioneering work by Imoto et al., where the prior knowledge is expressed in terms of energy functions, from which a prior distribution over network structures is obtained in the form of a Gibbs distribution. The hyperparameters of this distribution represent the weights associated with the prior knowledge relative to the data. To complement the work of Imoto et al., we have derived and tested an MCMC scheme for sampling networks and hyperparameters simultaneously from the posterior distribution. We have assessed the viability of this approach by reconstructing the RAF pathway from cytometry protein concentrations and prior knowledge from KEGG.

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