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A copula method for modeling directional dependence of genes

机译:建立基因方向依赖性的copula方法

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摘要

BackgroundGenes interact with each other as basic building blocks of life, forming a complicated network. The relationship between groups of genes with different functions can be represented as gene networks. With the deposition of huge microarray data sets in public domains, study on gene networking is now possible. In recent years, there has been an increasing interest in the reconstruction of gene networks from gene expression data. Recent work includes linear models, Boolean network models, and Bayesian networks. Among them, Bayesian networks seem to be the most effective in constructing gene networks. A major problem with the Bayesian network approach is the excessive computational time. This problem is due to the interactive feature of the method that requires large search space. Since fitting a model by using the copulas does not require iterations, elicitation of the priors, and complicated calculations of posterior distributions, the need for reference to extensive search spaces can be eliminated leading to manageable computational affords. Bayesian network approach produces a discretely expression of conditional probabilities. Discreteness of the characteristics is not required in the copula approach which involves use of uniform representation of the continuous random variables. Our method is able to overcome the limitation of Bayesian network method for gene-gene interaction, i.e. information loss due to binary transformation.
机译:背景基因彼此相互作用,构成生命的基本组成部分,形成一个复杂的网络。具有不同功能的基因组之间的关系可以表示为基因网络。随着公共领域中大量微阵列数据的沉积,基因联网的研究现在成为可能。近年来,从基因表达数据重建基因网络的兴趣日益浓厚。最近的工作包括线性模型,布尔网络模型和贝叶斯网络。其中,贝叶斯网络似乎是构建基因网络最有效的方法。贝叶斯网络方法的主要问题是过多的计算时间。此问题是由于该方法的交互功能需要较大的搜索空间。由于通过使用copulas拟合模型不需要迭代,先验的启发以及后验分布的复杂计算,因此可以消除对大量搜索空间的引用,从而可实现可管理的计算能力。贝叶斯网络方法产生条件概率的离散表达。在copula方法中不需要离散特性,因为copula方法需要使用连续随机变量的统一表示。我们的方法能够克服贝叶斯网络方法对基因-基因相互作用的局限性,即由于二进制转换而导致的信息丢失。

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