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An Empirical CDF Approach to Estimate the Significance of Gene Ranking for Finding Differentially Expressed Genes

机译:经验性CDF方法估计基因排名对寻找差异表达基因的重要性

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This paper proposes a procedure for finding significance of gene ranking. The microarray data usually has a large number of genes that are not differentially expressed across multiple conditions. In microarray analysis, it is a common practice to first discard these genes as uninformative based on some filtering criterion. This filtering process results in the information loss as the uninformative genes may be used to construct an empirical distribution of genes under the null hypothesis. The distribution of the non-differentially expressed genes is complex and may be regarded as a mixture of distributions. The null hypothesis is that the gene is not differentially expressed. The significance of the differentially expressed genes therefore may be estimated by using the empirical distribution function of the large number of insignificant genes. The proposed method is efficient, less computation intensive and may be applied on microarray datasets of any sample size.
机译:本文提出了一种寻找基因排名重要性的方法。微阵列数据通常具有大量的基因,这些基因在多种条件下均未差异表达。在微阵列分析中,一种常见的做法是首先基于某些过滤标准将这些基因丢弃为无信息的基因。这种筛选过程会导致信息丢失,因为在无效假设下,非信息性基因可用于构建基因的经验分布。非差异表达基因的分布很复杂,可以看作是分布的混合。无效的假设是该基因没有差异表达。因此,可以通过使用大量无关紧要的基因的经验分布函数来估计差异表达基因的重要性。所提出的方法是有效的,较少的计算强度,并且可以应用于任何样本大小的微阵列数据集。

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