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Advanced significance analysis of microarray data based on weighted resampling: a comparative study and application to gene deletions in Mycobacterium bovis

机译:基于加权重采样的微阵列数据的高级显着性分析:牛分枝杆菌基因缺失的比较研究和应用

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Motivation: When analyzing microarray data, non-biological variation introduces uncertainty in the analysis and interpretation. In this paper we focus on the validation of significant differences in gene expression levels, or normalized channel intensity levels with respect to different experimental conditions and with replicated measurements. A myriad of methods have been proposed to study differences in gene expression levels and to assign significance values as a measure of confidence. In this paper we compare several methods, including SAM, regularized t-test, mixture modeling, Wilk's lambda score and variance stabilization. From this comparison we developed a weighted resampling approach and applied it to gene deletions in Mycobacterium bovis. Results: We discuss the assumptions, model structure, computational complexity and applicability to microarray data. The results of our study justified the theoretical basis of the weighted resampling approach, which clearly outperforms the others.
机译:动机:分析微阵列数据时,非生物变异会在分析和解释中引入不确定性。在本文中,我们专注于验证基因表达水平或归一化通道强度水平相对于不同实验条件和重复测量的显着差异。已经提出了无数种方法来研究基因表达水平的差异并指定显着性值作为置信度的量度。在本文中,我们比较了几种方法,包括SAM,正则t检验,混合建模,Wilk拉姆达评分和方差稳定化。通过这种比较,我们开发了加权重采样方法,并将其应用于牛分枝杆菌中的基因缺失。结果:我们讨论了假设,模型结构,计算复杂性以及对微阵列数据的适用性。我们的研究结果证明了加权重采样方法的理论基础是正确的,该方法明显优于其他方法。

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