A regression tree-based Gibbs sampler to learn the regulation programs in a transcription regulatory module network

Jianlong Qi, T. Michoel, G. Butler
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引用次数: 11

Abstract

Many algorithms have been proposed to learn transcription regulatory networks from gene expression data. Bayesian networks have obtained promising results, in particular, the module network method. The genes in a module share a regulation program (regression tree), consisting of a set of parents and conditional probability distributions. Hence, the method significantly decreases the search space of models and consequently avoids overfitting. The regulation program of a module is normally learned by a deterministic search algorithm, which performs a series of greedy operations to maximize the Bayesian score. The major shortcoming of the deterministic search algorithm is that its result may only represent one of several possible regulation programs. In order to account for the model uncertainty, we propose a regression tree-based Gibbs sampling algorithm for learning regulation programs in module networks. The novelty of this work is that a set of tree operations is defined for generating new regression trees from a given tree and we show that the set of tree operations is sufficient to generate a well mixing Gibbs sampler even in large data sets. The effectiveness of our algorithm is demonstrated by the experiments in synthetic data and real biological data.
一个基于回归树的吉布斯采样器来学习转录调控模块网络中的调控程序
已经提出了许多算法来从基因表达数据中学习转录调控网络。贝叶斯网络已经取得了很好的效果,特别是模块网络方法。模块中的基因共享一个调节程序(回归树),该程序由一组亲本和条件概率分布组成。因此,该方法显著减小了模型的搜索空间,从而避免了过拟合。模块的调节程序通常通过确定性搜索算法学习,该算法执行一系列贪心操作以最大化贝叶斯分数。确定性搜索算法的主要缺点是其结果可能只代表几种可能的调节程序中的一种。为了考虑模型的不确定性,我们提出了一种基于回归树的Gibbs抽样算法来学习模块网络中的调节程序。这项工作的新颖之处在于,我们定义了一组树操作来从给定的树中生成新的回归树,并且我们证明了一组树操作足以在大数据集中生成混合良好的吉布斯采样器。通过合成数据和真实生物数据的实验验证了算法的有效性。
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