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Imaging and Analysis Platform for Automatic Phenotyping and Trait Ranking of Plant Root Systems

机译:植物根系自动表型和性状排名的成像和分析平台

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摘要

The ability to nondestructively image and automatically phenotype complex root systems, like those of rice (Oryza sativa), is fundamental to identifying genes underlying root system architecture (RSA). Although root systems are central to plant fitness, identifying genes responsible for RSA remains an underexplored opportunity for crop improvement. Here we describe a nondestructive imaging and analysis system for automated phenotyping and trait ranking of RSA. Using this system, we image rice roots from 12 genotypes. We automatically estimate RSA traits previously identified as important to plant function. In addition, we expand the suite of features examined for RSA to include traits that more comprehensively describe monocot RSA but that are difficult to measure with traditional methods. Using 16 automatically acquired phenotypic traits for 2,297 images from 118 individuals, we observe (1) wide variation in phenotypes among the genotypes surveyed; and (2) greater intergenotype variance of RSA features than variance within a genotype. RSA trait values are integrated into a computational pipeline that utilizes supervised learning methods to determine which traits best separate two genotypes, and then ranks the traits according to their contribution to each pairwise comparison. This trait-ranking step identifies candidate traits for subsequent quantitative trait loci analysis and demonstrates that depth and average radius are key contributors to differences in rice RSA within our set of genotypes. Our results suggest a strong genetic component underlying rice RSA. This work enables the automatic phenotyping of RSA of individuals within mapping populations, providing an integrative framework for quantitative trait loci analysis of RSA.
机译:无损成像和自动表型化复杂根系(如水稻(Oryza sativa)的根系)的能力是识别根系体系结构(RSA)基础基因的基础。尽管根系对于植物适应性至关重要,但鉴定导致RSA的基因仍是作物改良的未充分开发的机会。在这里,我们描述了一种用于RSA的自动表型和性状排名的非破坏性成像和分析系统。使用该系统,我们对来自12个基因型的水稻根部成像。我们会自动估算先前确定为对植物功能重要的RSA性状。此外,我们扩展了针对RSA检验的功能套件,以包含更全面地描述单子叶植物RSA但难以用传统方法进行测量的特征。使用来自118个个体的2,297张图像的16种自动获取的表型特征,我们观察到(1)在所调查的基因型之间表型差异很大; (2)RSA特征的基因型间差异大于基因型内的差异。 RSA特征值被集成到计算管道中,该管道利用监督学习方法来确定哪些特征最能区分两种基因型,然后根据它们对每个成对比较的贡献对特征进行排名。该性状排名步骤确定了用于后续定量性状基因座分析的候选性状,并证明了深度和平均半径是我们基因型集内水稻RSA差异的关键因素。我们的结果表明水稻RSA具有很强的遗传成分。这项工作能够在制图人群中对RSA进行自动表型分析,从而为RSA的定量性状基因座分析提供了一个综合框架。

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