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Grouping Rank Product Meta-Analysis Method for Identifying Differentially Expressed Genes in Microarray Experiments

机译:在微阵列实验中识别差异表达基因的分组秩乘元荟萃分析方法

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One of the main purposes in analysis of microarray experiments is to identify differentially expressed genes under two experimental conditions.The Meta-analysis method,rank product meta-analysis approach,considered a powerful tool for identification of differentially expressed genes.However,rank product meta-analysis approach used the each dataset in the computation of the fold changes,which leaded to less computational efficiency.Here we modified the rank product meta-analysis approach to obtain an improved model for identifying different gene expression.The new model,grouping rank product approach,adds competitive classification of samples to group datasets before the computation of the fold changes.We used the grouping rank product approach on two simulated datasets and two breast datasets and showed that the grouping rank product approach is not only as accurate as the rank product meta-analysis approach,but also more computational efficient in identifying differentially expressed genes.
机译:微阵列实验分析的主要目的之一是在两种实验条件下鉴定差异表达的基因。荟萃分析法,秩次元荟萃分析法被认为是鉴定差异表达基因的有力工具。 -分析方法在折叠变化的计算中使用了每个数据集,导致计算效率降低。在此,我们对秩积元分析方法进行了修改,以获得一种用于识别不同基因表达的改进模型。方法,在计算倍数变化之前将样本的竞争性分类添加到分组数据集。我们在两个模拟数据集和两个乳房数据集上使用了分组秩积方法,并表明分组秩积方法不仅与秩积一样准确元分析方法,但在识别差异表达方面也具有更高的计算效率基因。

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