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Combining classical trait and microarray data to dissect transcriptional regulation: a case study

机译:结合经典特征和微阵列数据剖析转录调控:一个案例研究

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The selective transcriptional profiling approach involves selecting an optimal subset of individuals to microarray from a larger set of individuals for which relatively inexpensive quantitative trait and molecular marker data are available. The goal of the selection and subsequent analyses is to identify genes whose expression is associated with a quantitative trait or quantitative trait locus (QTL). In this paper, we applied the selective transcriptional profiling approach to data sets concerning flowering time and gene transcription levels of Arabidopsis recombinant inbred lines. Our results confirm that the selective transcriptional profiling approach can achieve much greater power for uncovering associations than standard approaches that ignore information from classical traits. In addition, we show that selective transcriptional profiling can achieve power similar to standard approaches at a fraction of the cost and effort. We also identified three groups of genes which show distinctive patterns with regard to gene expression levels, QTL genotype, and a classical trait. This study represents the first application of selective transcriptional profiling to real data and serves as a template for dissecting gene regulation networks related to a classical trait using the selective transcriptional profiling approach.
机译:选择性转录谱分析方法涉及从较大的个体集合中选择个体的最佳子集进行微阵列,对于这些个体而言,可获得相对便宜的定量特征和分子标记数据。选择和后续分析的目的是鉴定其表达与定量性状或定量性状基因座(QTL)相关的基因。在本文中,我们将选择性转录谱分析方法应用于有关拟南芥重组自交系开花时间和基因转录水平的数据集。我们的研究结果证实,与忽略经典特征信息的标准方法相比,选择性转录谱分析方法可以更有效地揭示关联。此外,我们表明选择性转录谱分析可以以很小的成本和精力实现类似于标准方法的功能。我们还确定了三组基因,它们在基因表达水平,QTL基因型和经典性状方面表现出独特的模式。这项研究代表了选择性转录谱分析在真实数据中的首次应用,并作为使用选择性转录谱分析方法剖析与经典性状相关的基因调控网络的模板。

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