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Flexible empirical Bayes models for differential gene expression

机译:差异基因表达的灵活经验贝叶斯模型

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Motivation: Inference about differential expression is a typical objective when analyzing gene expression data. Recently, Bayesian hierarchical models have become increasingly popular for this type of problem. The two most common hierarchical models are the hierarchical Gamma-Gamma (GG) and Lognormal-Normal (LNN) models. However, to facilitate inference, some unrealistic assumptions have been made. One such assumption is that of a common coefficient of variation across genes, which can adversely affect the resulting inference. Results: In this paper, we extend both the GG and LNN modeling frameworks to allow for gene-specific variances and propose EM based algorithms for parameter estimation. The proposed methodology is evaluated on three experimental datasets: one cDNA microarray experiment and two Affymetrix spike-in experiments. The two extended models significantly reduce the false positive rate while keeping a high sensitivity when compared to the originals. Finally, using a simulation study we show that the new frameworks are also more robust to model misspecification.
机译:动机:关于差异表达的推断是分析基因表达数据时的典型目标。最近,贝叶斯分层模型已针对此类问题变得越来越流行。两种最常见的分层模型是分层Gamma-Gamma(GG)模型和对数正态-普通(LNN)模型。但是,为便于推断,做出了一些不切实际的假设。一种这样的假设是,基因之间存在共同的变异系数,这可能会对结果推断产生不利影响。结果:在本文中,我们扩展了GG和LNN建模框架,以允许特定于基因的方差,并提出了基于EM的参数估计算法。在三个实验数据集上对提出的方法进行了评估:一个cDNA芯片实验和两个Affymetrix插入实验。与原始模型相比,这两个扩展模型显着降低了误报率,同时保持了较高的灵敏度。最后,通过仿真研究,我们证明了新框架对于模型错误指定也更加健壮。

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