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Assessment of gene set analysis methods based on microarray data

机译:基于微阵列数据的基因组分析方法评估

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Gene set analysis (GSA) incorporates biological information into statistical knowledge to identify gene sets differently expressed between two or more phenotypes. It allows us to gain an insight into the functional working mechanism of cells beyond the detection of differently expressed gene sets. In order to evaluate the competence of GSA approaches, three self-contained GSA approaches with different statistical methods were chosen; Category, Globaltest and Hotelling's T2 together with their assayed power to identify the differences expressed via simulation and real microarray data. The Category does not take care of the correlation structure, while the other two deal with correlations.In order to perform these methods, R and Bioconductor were used. Furthermore, venous thromboembolism and acute lymphoblastic leukemia microarray data were applied. The results of three GSAs showed that the competence of these methods depends on the distribution of gene expression in a dataset. It is very important to assay the distribution of gene expression data before choosing the GSA method to identify gene sets differently expressed between phenotypes.On the other hand, assessment of common genes among significant gene sets indicated that there was a significant agreement between the result of GSA and the findings of biologists.
机译:基因集分析(GSA)将生物学信息整合到统计知识中,以识别两个或多个表型之间差异表达的基因集。除了检测表达不同的基因集之外,它还使我们能够深入了解细胞的功能工作机制。为了评估GSA方法的能力,选择了三种具有不同统计方法的独立的GSA方法。 Category,Globaltest和Hotelling的T2以及它们的分析能力可以识别通过模拟和实际微阵列数据表达的差异。类别不考虑相关性结构,而其他两个处理相关性。为了执行这些方法,使用了R和Bioconductor。此外,应用了静脉血栓栓塞和急性淋巴细胞白血病微阵列数据。三个GSA的结果表明,这些方法的能力取决于基因表达在数据集中的分布。在选择GSA方法以鉴定表型之间不同表达的基因集之前,分析基因表达数据的分布非常重要。另一方面,对重要基因集之间共有基因的评估表明,结果之间存在显着一致性。 GSA和生物学家的发现。

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