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Impact of DNA microarray data transformation on gene expression analysis - Comparison of two normalization methods

机译:DNA微阵列数据转换对基因表达分析的影响-两种标准化方法的比较

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Two-color DNA microarrays are commonly used for the analysis of global gene expression. They provide information on relative abundance of thousands of mRNAs. However, the generated data need to be normalized to minimize systematic variations so that biologically significant differences can be more easily identified. A large number of normalization procedures have been proposed and many softwares for microarray data analysis are available. Here, we have applied two normalization methods (median and loess) from two packages of microarray data analysis softwares. They were examined using a sample data set. We found that the number of genes identified as differentially expressed varied significantly depending on the method applied. The obtained results, i.e. lists of differentially expressed genes, were consistent only when we used median normalization methods. Loess normalization implemented in the two software packages provided less coherent and for some probes even contradictory results. In general, our results provide an additional piece of evidence that the normalization method can profoundly influence final results of DNA microarray-based analysis. The impact of the normalization method depends greatly on the algorithm employed. Consequently, the normalization procedure must be carefully considered and optimized for each individual data set.
机译:两色DNA微阵列通常用于分析全局基因表达。他们提供了有关数千个mRNA的相对丰度的信息。但是,需要对生成的数据进行归一化以最大程度地减少系统差异,以便可以更轻松地识别生物学上的显着差异。已经提出了大量的标准化程序,并且有许多用于微阵列数据分析的软件是可用的。在这里,我们从两个微阵列数据分析软件包中应用了两种归一化方法(中值和黄土)。他们使用样本数据集进行了检查。我们发现,鉴定为差异表达的基因数量明显不同,具体取决于所应用的方法。仅当我们使用中位数归一化方法时,获得的结果(即差异表达基因的列表)才是一致的。在这两个软件包中实现的黄土归一化提供了较少的一致性,并且对于某些探针甚至提供了矛盾的结果。通常,我们的结果提供了另外的证据,表明标准化方法可以深刻影响基于DNA微阵列的分析的最终结果。归一化方法的影响在很大程度上取决于所采用的算法。因此,必须仔细考虑归一化过程并针对每个单独的数据集进行优化。

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