差异基因表达研究中差异的结构混合模型。

Florence Jaffrézic, Guillemette Marot, Séverine Degrelle, Isabelle Hue, Jean-Louis Foulley
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引用次数: 36

摘要

对于微阵列数据的分析,方差建模的重要性现在已经广为人知。特别是,差异基因表达的统计测试的能力和准确性高度依赖于方差建模。本文的目的是使用一个结构模型的方差,其中包括条件效应和随机基因效应,并提出了一个简单的估计程序,这些参数的经验方差的工作。并在实际数据和模拟数据上与各种方法进行了比较。事实证明,它比逐基因分析更有效,对假阳性数量的稳健性比齐次方差模型更强。与最近提出的方法(如SAM和varmix)相比,即使对于少量的重复,它也表现良好,并且与Limma相似。结构模型的主要优点是,由于对方差的对数使用了线性混合模型,因此可以很容易地将各种变化因素纳入模型,这是以前提出的经验贝叶斯方法所不能做到的。它的计算速度也非常快,并且适用于两个以上条件的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A structural mixed model for variances in differential gene expression studies.

The importance of variance modelling is now widely known for the analysis of microarray data. In particular the power and accuracy of statistical tests for differential gene expressions are highly dependent on variance modelling. The aim of this paper is to use a structural model on the variances, which includes a condition effect and a random gene effect, and to propose a simple estimation procedure for these parameters by working on the empirical variances. The proposed variance model was compared with various methods on both real and simulated data. It proved to be more powerful than the gene-by-gene analysis and more robust to the number of false positives than the homogeneous variance model. It performed well compared with recently proposed approaches such as SAM and VarMixt even for a small number of replicates, and performed similarly to Limma. The main advantage of the structural model is that, thanks to the use of a linear mixed model on the logarithm of the variances, various factors of variation can easily be incorporated in the model, which is not the case for previously proposed empirical Bayes methods. It is also very fast to compute and is adapted to the comparison of more than two conditions.

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