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A practical false discovery rate approach to identifying patterns of differential expression in microarray data

机译:一种实用的错误发现率方法,用于识别微阵列数据中差异表达的模式

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Searching for differentially expressed genes is one of the most common applications for microarrays, yet statistically there are difficult hurdles to achieving adequate rigor and practicality. False discovery rate (FDR) approaches have become relatively standard; however, how to define and control the FDR has been hotly debated. Permutation estimation approaches such as SAM and PaGE can be effective; however, they leave much room for improvement. We pursue the permutation estimation method and describe a convenient definition for the FDR that can be estimated in a straightforward manner. We then discuss issues regarding the choice of statistic and data transformation. It is impossible to optimize the power of any statistic for thousands of genes simultaneously, and we look at the practical consequences of this. For example, the log transform can both help and hurt at the same time, depending on the gene. We examine issues surrounding the SAM 'fudge factor' parameter, and how to handle these issues by optimizing with respect to power.
机译:寻找差异表达的基因是微阵列最常见的应用之一,但从统计学上来说,要达到足够的严格性和实用性是有困难的。错误发现率(FDR)方法已经变得相对标准。但是,如何定义和控制FDR一直是热门话题。诸如SAM和PaGE之类的排列估计方法可能是有效的;但是,它们还有很多改进的余地。我们采用置换估计方法,并描述了可以直接方式估计的FDR的便捷定义。然后,我们讨论有关统计和数据转换选择的问题。无法同时优化数千个基因的任何统计量的功效,我们将研究其实际后果。例如,对数转换可以同时帮助和伤害,这取决于基因。我们研究了有关SAM“模糊因子”参数的问题,以及如何通过针对功耗进行优化来处理这些问题。

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