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A comparison of meta-analysis methods for detecting differentially expressed genes in microarray experiments

机译:在微阵列实验中检测差异表达基因的荟萃分析方法的比较

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MOTIVATION: The proliferation of public data repositories creates a need for meta-analysis methods to efficiently evaluate, integrate and validate related datasets produced by independent groups. A t-based approach has been proposed to integrate effect size from multiple studies by modeling both intra- and between-study variation. Recently, a non-parametric 'rank product' method, which is derived based on biological reasoning of fold-change criteria, has been applied to directly combine multiple datasets into one meta study. Fisher's Inverse chi(2) method, which only depends on P-values from individual analyses of each dataset, has been used in a couple of medical studies. While these methods address the question from different angles, it is not clear how they compare with each other. RESULTS: We comparatively evaluate the three methods; t-based hierarchical modeling, rank products and Fisher's Inverse chi(2) test with P-values from either the t-based or the rank product method. A simulation study shows that the rank product method, in general, has higher sensitivity and selectivity than the t-based method in both individual and meta-analysis, especially in the setting of small sample size and/or large between-study variation. Not surprisingly, Fisher's chi(2) method highly depends on the method used in the individual analysis. Application to real datasets demonstrates that meta-analysis achieves more reliable identification than an individual analysis, and rank products are more robust in gene ranking, which leads to a much higher reproducibility among independent studies. Though t-based meta-analysis greatly improves over the individual analysis, it suffers from a potentially large amount of false positives when P-values serve as threshold. We conclude that careful meta-analysis is a powerful tool for integrating multiple array studies.
机译:动机:公共数据存储库的激增产生了对元分析方法的需求,以有效地评估,整合和验证独立小组产生的相关数据集。已经提出了一种基于t的方法,通过对研究内和研究间变异建模来整合来自多个研究的效应量。最近,基于倍数变化标准的生物学推理而得出的非参数“等级积”方法已被用于将多个数据集直接组合到一个元研究中。 Fisher的逆chi(2)方法仅依赖于每个数据集的单独分析中的P值,已在一些医学研究中使用。虽然这些方法从不同角度解决了这个问题,但尚不清楚它们如何相互比较。结果:我们比较评估了这三种方法。基于t的层次建模,秩积和Fisher逆chi(2)测试,其中包含基于t或秩积方法的P值。仿真研究表明,在个体分析和荟萃分析中,尤其是在样本量较小和/或研究间差异较大的情况下,秩乘法通常比基于t的方法具有更高的灵敏度和选择性。毫不奇怪,费舍尔的chi(2)方法高度依赖于单个分析中使用的方法。在真实数据集上的应用表明,荟萃分析比单独的分析可实现更可靠的鉴定,并且排名产品在基因排名上更可靠,从而在独立研究中具有更高的可重复性。尽管基于t的元分析相对于单个分析有很大的改进,但是当P值用作阈值时,它会遭受大量假阳性的困扰。我们得出结论,仔细的荟萃分析是整合多个阵列研究的强大工具。

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