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A Marginal Mixture Model for Selecting Differentially Expressed Genes across Two Types of Tissue Samples

机译:用于在两种类型的组织样本中选择差异表达基因的边际混合模型

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摘要

Bayesian hierarchical models that characterize the distributions of (transformed) gene profiles have been proven very useful and flexible in selecting differentially expressed genes across different types of tissue samples (e.g. ). However, the marginal mean and variance of these models are assumed to be the same for different gene clusters and for different tissue types. Moreover, it is not easy to determine which of the many competing Bayesian hierarchical models provides the best fit for a specific microarray data set. To address these two issues, we propose a marginal mixture model that directly models the marginal distribution of transformed gene profiles. Specifically, we approximate the marginal distributions of transformed gene profiles via a mixture of three-component multivariate Normal distributions, each component of which has the same structures of marginal mean vector and covariance matrix as those for Bayesian hierarchical models, but the values can differ. Based on the proposed model, a method is derived to select genes differentially expressed across two types of tissue samples. The derived gene selection method performs well on a real microarray data set and consistently has the best performance (based on class agreement indices) compared with several other gene selection methods on simulated microarray data sets generated from three different mixture models.
机译:已经证明表征(已转化)基因图谱分布的贝叶斯分层模型在跨不同类型的组织样品(例如)选择差异表达的基因方面非常有用且灵活。但是,对于不同的基因簇和不同的组织类型,假定这些模型的边际均值和方差相同。此外,要确定多种竞争性贝叶斯分层模型中的哪一种为特定微阵列数据集提供最佳拟合并不容易。为了解决这两个问题,我们提出了一种边缘混合模型,该模型直接对转化基因图谱的边缘分布进行建模。具体来说,我们通过三成分多元正态分布的混合来近似估计转化基因图谱的边缘分布,该三成分正态分布的每个成分具有与贝叶斯层次模型相同的边缘平均向量和协方差矩阵结构,但是值可以不同。基于提出的模型,推导了一种方法来选择在两种类型的组织样本中差异表达的基因。与从三种不同混合物模型生成的模拟微阵列数据集上的其他几种基因选择方法相比,派生的基因选择方法在真实的微阵列数据集上表现良好,并且始终具有最佳性能(基于类别一致性指标)。

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