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A mixture model-based strategy for selecting sets of genes in multiclass response microarray experiments

机译:基于混合物模型的策略在多类反应微阵列实验中选择基因集

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Motivation: Multiclass response (MCR) experiments are those in which there are more than two classes to be compared. In these experiments, though the null hypothesis is simple, there are typically many patterns of gene expression changes across the different classes that led to complex alternatives. In this paper, we propose a new strategy for selecting genes in MCR that is based on a flexible mixture model for the marginal distribution of a modified F-statistic. Using this model, false positive and negative discovery rates can be estimated and combined to produce a rule for selecting a subset of genes. Moreover, the method proposed allows calculation of these rates for any predefined subset of genes.Results: We illustrate the performance our approach using simulated datasets and a real breast cancer microarray dataset. In this latter study, we investigate predefined subset of genes and point out interesting differences between three distinct biological pathways.
机译:动机:多类别响应(MCR)实验是要比较两个以上类别的实验。在这些实验中,尽管零假设很简单,但跨不同类别的基因表达变化通常会有许多模式,从而导致复杂的选择。在本文中,我们提出了一种在MCR中选择基因的新策略,该策略基于灵活的混合模型,用于修正F统计量的边际分布。使用此模型,可以估计和组合错误的阳性和阴性发现率,以产生选择基因子集的规则。此外,提出的方法可以计算任何预定义的基因子集的这些比率。结果:我们使用模拟数据集和真实的乳腺癌微阵列数据集说明了该方法的性能。在后面的研究中,我们研究了基因的预定义子集,并指出了三种不同生物学途径之间的有趣差异。

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