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On correcting the overestimation of the permutation-based false discovery rate estimator

机译:关于纠正基于排列的错误发现率估计器的过高估计

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Motivation: Recent attempts to account for multiple testing in the analysis of microarray data have focused on controlling the false discovery rate (FDR), which is defined as the expected percentage of the number of false positive genes among the claimed significant genes. As a consequence, the accuracy of the FDR estimators will be important for correctly controlling FDR. Xie et al. found that the standard permutation method of estimating FDR is biased and proposed to delete the predicted differentially expressed (DE) genes in the estimation of FDR for one-sample comparison. However, we notice that the formula of the FDR used in their paper is incorrect. This makes the comparison results reported in their paper unconvincing. Other problems with their method include the biased estimation of FDR caused by over- or under-deletion of DE genes in the estimation of FDR and by the implicit use of an unreasonable estimator of the true proportion of equivalently expressed (EE) genes. Due to the great importance of accurate FDR estimation in microarray data analysis, it is necessary to point out such problems and propose improved methods.Results: Our results confirm that the standard permutation method overestimates the FDR. With the correct FDR formula, we show the method of Xie et al. always gives biased estimation of FDR: it overestimates when the number of claimed significant genes is small, and underestimates when the number of claimed significant genes is large. To overcome these problems, we propose two modifications. The simulation results show that our estimator gives more accurate estimation.
机译:动机:最近在微阵列数据分析中考虑多重测试的尝试集中在控制错误发现率(FDR),该错误率定义为所声称的重要基因中错误阳性基因数目的预期百分比。因此,FDR估算器的准确性对于正确控制FDR至关重要。谢等。他发现,估计FDR的标准排列方法是有偏见的,并建议删除FDR估计中的预测差异表达(DE)基因以进行一样本比较。但是,我们注意到他们论文中使用的FDR公式不正确。这使得他们的论文中报告的比较结果令人信服。他们的方法还存在其他问题,包括FDE估算中DE基因的过度缺失或缺失不足以及对等效表达(EE)基因真实比例的不合理估算器的隐式使用导致的FDR估算偏差。由于精确的FDR估计在微阵列数据分析中非常重要,因此有必要指出这些问题并提出改进的方法。结果:我们的结果证实了标准置换方法高估了FDR。使用正确的FDR公式,我们将展示Xie等人的方法。总是对FDR有偏倚的估计:当声称的重要基因的数量少时,它会高估;而当声称的重要基因的数量较大时,它会低估。为了克服这些问题,我们提出了两种修改方法。仿真结果表明,我们的估计器给出了更准确的估计。

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