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Comparative analysis of algorithms for signal quantitation from oligonucleotide microarrays

机译:寡核苷酸微阵列信号定量算法的比较分析

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Motivation: Recent years' exponential increase in DNA microarrays experiments has motivated the development of many signal quantitation (SQ) algorithms. These algorithms perform various transformations on the actual measurements aimed to enable researchers to compare readings of different genes quantitatively within one experiment and across separate experiments. However, it is relatively unclear whether there is a ‘best’ algorithm to quantitate microarray data. The ability to compare and assess such algorithms is crucial for any downstream analysis. In this work, we suggest a methodology for comparing different signal quantitation algorithms for gene expression data. Our aim is to enable researchers to compare the effect of different SQ algorithms on the specific dataset they are dealing with. We combine two kinds of tests to assess the effect of an SQ algorithm in terms of signal to noise ratio. To assess noise, we exploit redundancy within the experimental dataset to test the variability of a given SQ algorithm output. For the effect of the SQ on the signal we evaluate the overabundance of differentially expressed genes using various statistical significance tests. Results: We demonstrate our analysis approach with three SQ algorithms for oligonucleotide microarrays. We compare the results of using the dChip software and the RMAExpress software to the ones obtained by using the standard Affymetrix MAS5 on a dataset containing pairs of repeated hybridizations. Our analysis suggests that dChip is more robust and stable than the MAS5 tools for about 60% of the genes while RMAExpress is able to achieve an even greater improvement in terms of signal to noise, for more than 95% of the genes.
机译:动机:近年来,DNA微阵列实验的成倍增长推动了许多信号定量(SQ)算法的发展。这些算法对实际测量值进行了各种转换,旨在使研究人员能够在一个实验中以及在单独的实验中定量比较不同基因的读数。但是,目前尚不清楚是否存在“最佳”算法来量化微阵列数据。比较和评估此类算法的能力对于任何下游分析都至关重要。在这项工作中,我们提出了一种用于比较基因表达数据的不同信号定量算法的方法。我们的目的是使研究人员能够比较不同SQ算法对他们正在处理的特定数据集的影响。我们结合信噪比方面的两种测试来评估SQ算法的效果。为了评估噪声,我们利用实验数据集中的冗余来测试给定SQ算法输出的可变性。对于SQ对信号的影响,我们使用各种统计显着性检验评估差异表达基因的过量。结果:我们用寡核苷酸微阵列的三种SQ算法演示了我们的分析方法。我们将使用dChip软件和RMAExpress软件的结果与通过使用标准Affymetrix MAS5在包含重复杂交对的数据集上获得的结果进行比较。我们的分析表明,对于大约60%的基因,dChip比MAS5工具更强大和稳定,而对于95%以上的基因,RMAExpress能够在信噪比方面实现更大的改善。

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