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A Computational Framework for Evaluating the Efficiency of Arabidopsis Accessions in Response to Nitrogen Stress Reveals Important Metabolic Mechanisms

机译:评估拟南芥种质对氮胁迫的响应效率的计算框架揭示了重要的代谢机制。

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摘要

High-throughput phenotyping technologies in combination with genetic variability for the plant model species Arabidopsis thaliana (Arabidopsis) offer an excellent experimental platform to reveal the effects of different gene combinations on phenotypes. These developments have been coupled with computational approaches to extract information not only from the multidimensional data, capturing various levels of biochemical organization, but also from various morphological and growth-related traits. Nevertheless, the existing methods usually focus on data aggregation which may neglect accession-specific effects. Here we argue that revealing the molecular mechanisms governing a desired set of output traits can be performed by ranking of accessions based on their efficiencies relative to all other analyzed accessions. To this end, we propose a framework for evaluating accessions via their relative efficiencies which establish a relationship between multidimensional system’s inputs and outputs from different environmental conditions. The framework combines data envelopment analysis (DEA) with a novel valency index characterizing the difference in congruence between the efficiency rankings of accessions under various conditions. We illustrate the advantages of the proposed approach for analyzing genetic variability on a publicly available data set comprising quantitative data on metabolic and morphological traits for 23 Arabidopsis accessions under three conditions of nitrogen availability. In addition, we extend the proposed framework to identify the set of traits displaying the highest influence on ranking based on the relative efficiencies of the considered accessions. As an outlook, we discuss how the proposed framework can be combined with well-established statistical techniques to further dissect the relationship between natural variability and metabolism.
机译:结合植物模型物种拟南芥(Arabidopsis)的遗传变异性的高通量表型技术,提供了一个出色的实验平台,揭示了不同基因组合对表型的影响。这些发展与计算方法相结合,不仅可以从多维数据中提取信息,捕获各种级别的生化组织,而且还可以从各种形态和与生长相关的特征中提取信息。尽管如此,现有方法通常集中在数据聚合上,而数据聚合可能会忽略特定于访问的影响。在这里,我们认为,揭示出控制一组期望的输出性状的分子机制,可以通过根据相对于所有其他分析种质的效率对种质进行排名来进行。为此,我们提出了一个框架,用于通过其相对效率评估种质,从而建立了多维系统在不同环境条件下的投入与产出之间的关系。该框架将数据包络分析(DEA)与新颖的化合价指数相结合,该化合价指数表征了各种条件下种质的效率等级之间在一致性上的差异。我们举例说明了在公众可获得的数据集上分析遗传变异性的拟议方法的优势,该数据集包括在氮素可利用的三种条件下23种拟南芥种质的代谢和形态性状的定量数据。此外,我们扩展了提出的框架,以根据考虑的种质的相对效率,确定对排名显示最大影响的性状集。展望未来,我们将讨论所提出的框架如何与成熟的统计技术结合起来,以进一步剖析自然变异性与代谢之间的关系。

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