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The analysis of ordered changes of gene expression and gene-gene co-expression patterns

机译:基因表达的有序变化及基因基因共表达模式分析

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Many microarray gene expression data sets have multiple ordered sample groups. Genes showing increasing/decreasing differential expression or differential gene-gene co-expression patterns can be biologically interesting. Statistically, we can conduct the analysis of ordered changes of population means and ordered changes of regression slopes. The well-developed isotonic regression can be considered for the analysis of differential expression. However, its extension to the analysis of differential gene-gene co-expression patterns has not been well addressed in the literature. We pointed out that the traditional isotonic regression can also be simply extended for the detection of differential gene-gene co-expression patterns after a simple data transformation. A prostate cancer data set was considered as an application. An improvement of false positive control was observed when the order restricted hypothesis testing was considered. Several interesting genes were also identified in our analysis.
机译:许多微阵列基因表达数据集具有多个有序的样本组。显示增加/减少差异表达或差异基因 - 基因共表达模式的基因可以是生物学上的有趣。统计上,我们可以进行人口条目的有序变化的分析,并订购回归斜坡的变化。可以考虑发育良好的等渗回归来分析差异表达。然而,其对差分基因 - 基因共表达模式分析的延伸尚未在文献中得到很好的解决。我们指出,在简单的数据变换之后,还可以简单地扩展传统的等渗回归以检测差异基因基因共表达模式。前列腺癌数据集被认为是申请。当考虑秩序限制假设检测时,观察到伪阳性对照的改善。在我们的分析中也发现了几种有趣的基因。

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