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首页> 外文期刊>BMC Systems Biology >Integrating external biological knowledge in the construction of regulatory networks from time-series expression data
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Integrating external biological knowledge in the construction of regulatory networks from time-series expression data

机译:从时序表达数据将外部生物学知识整合到调控网络的构建中

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Background Inference about regulatory networks from high-throughput genomics data is of great interest in systems biology. We present a Bayesian approach to infer gene regulatory networks from time series expression data by integrating various types of biological knowledge. Results We formulate network construction as a series of variable selection problems and use linear regression to model the data. Our method summarizes additional data sources with an informative prior probability distribution over candidate regression models. We extend the Bayesian model averaging (BMA) variable selection method to select regulators in the regression framework. We summarize the external biological knowledge by an informative prior probability distribution over the candidate regression models. Conclusions We demonstrate our method on simulated data and a set of time-series microarray experiments measuring the effect of a drug perturbation on gene expression levels, and show that it outperforms leading regression-based methods in the literature.
机译:背景技术从高通量基因组学数据推断调控网络在系统生物学中引起了极大的兴趣。我们提出一种贝叶斯方法,通过整合各种类型的生物学知识,从时间序列表达数据中推断基因调控网络。结果我们将网络构建公式化为一系列变量选择问题,并使用线性回归对数据进行建模。我们的方法总结了其他数据源,并在候选回归模型上提供了先验的信息性分布。我们扩展了贝叶斯模型平均(BMA)变量选择方法,以在回归框架中选择调节器。我们通过候选回归模型上的信息性先验概率分布来总结外部生物学知识。结论我们在模拟数据上展示了我们的方法,并进行了一系列时间序列微阵列实验,这些实验测量了药物扰动对基因表达水平的影响,并表明它优于文献中领先的基于回归的方法。

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