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EXPLORING GENE EXPRESSION DATA WITH CLASS SCORES

机译:使用类分数探索基因表达数据

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摘要

We address a commonly asked question about gene expression data sets: "What functional classes of genes are most interesting in the data?" In the methods we present, expression data is partitioned into classes based on existing annotation schemes. Each class is then given three separately derived "interest" scores. The first score is based on an assessment of the statistical significance of gene expression changes experienced by members of the class, in the context of the experimental design. The second is based on the co-expression of genes in the class. The third score is based on the learnability of the classification. We show that all three methods reveal significant classes in each of three different gene expression data sets. Many classes are identified by one method but not the others, indicating that the methods are complementary. The classes identified are in many cases of clear relevance to the experiment. Our results suggest that these class scoring methods are useful tools for exploring gene expression data.
机译:我们解决有关基因表达数据集的一个常见问题:“哪些功能类别的基因在数据中最有趣?”在我们介绍的方法中,基于现有注释方案将表达式数据划分为多个类。然后给每个班级三个分别得出的“兴趣”分数。第一个分数是基于在实验设计的背景下对班级成员经历的基因表达变化的统计学意义的评估。第二种是基于类中基因的共表达。第三得分基于分类的可学习性。我们表明,所有这三种方法揭示了三个不同基因表达数据集中的重要类别。许多类别是通过一种方法标识的,而不能通过其他方法标识,这表明这些方法是互补的。在许多情况下,确定的类别与实验都具有明显的相关性。我们的结果表明,这些分类评分方法是探索基因表达数据的有用工具。

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