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Comparison of High-Level Microarray Analysis Methods in the Context of Result Consistency

机译:结果一致性背景下高级微阵列分析方法的比较

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摘要

MotivationWhen we were asked for help with high-level microarray data analysis (on Affymetrix HGU-133A microarray), we faced the problem of selecting an appropriate method. We wanted to select a method that would yield "the best result" (detected as many "really" differentially expressed genes (DEGs) as possible, without false positives and false negatives). However, life scientists could not help us – they use their "favorite" method without special argumentation. We also did not find any norm or recommendation. Therefore, we decided to examine it for our own purpose. We considered whether the results obtained using different methods of high-level microarray data analyses – Significant Analysis of Microarrays, Rank Products, Bland-Altman, Mann-Whitney test, T test and the Linear Models for Microarray Data – would be in agreement. Initially, we conducted a comparative analysis of the results on eight real data sets from microarray experiments (from the Array Express database). The results were surprising. On the same array set, the set of DEGs by different methods were significantly different. We also applied the methods to artificial data sets and determined some measures that allow the preparation of the overall scoring of tested methods for future recommendation.
机译:动机当我们被要求提供有关高级微阵列数据分析(在Affymetrix HGU-133A微阵列上)的帮助时,我们面临选择合适方法的问题。我们希望选择一种能够产生“最佳结果”的方法(尽可能多地检测“真正的”差异表达基因(DEG),而没有假阳性和假阴性)。但是,生命科学家无法帮助我们-他们在没有特殊论据的情况下使用“最喜欢的”方法。我们也没有找到任何规范或建议。因此,我们决定出于自身目的对其进行检查。我们考虑了使用不同的高级微阵列数据分析方法(微阵列的显着分析,Rank Products,Bland-Altman,Mann-Whitney检验,T检验和微阵列数据线性模型)获得的结果是否一致。最初,我们对来自微阵列实验(来自Array Express数据库)的八个真实数据集的结果进行了比较分析。结果令人惊讶。在同一阵列集上,采用不同方法的DEG集明显不同。我们还将这些方法应用于人工数据集,并确定了一些措施,这些措施可以为测试方法的总体评分做好准备,以供将来推荐。

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  • 年(卷),期 -1(10),6
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  • 页码 e0128845
  • 总页数 15
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