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Image-Based High-Throughput Field Phenotyping of Crop Roots

机译:基于图像的作物根系高通量场表型

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Current plant phenotyping technologies to characterize agriculturally relevant traits have been primarily developed for use in laboratory and/or greenhouse conditions. In the case of root architectural traits, this limits phenotyping efforts, largely, to young plants grown in specialized containers and growth media. Hence, novel approaches are required to characterize mature root systems of older plants grown under actual soil conditions in the field. Imaging methods able to address the challenges associated with characterizing mature root systems are rare due, in part, to the greater complexity of mature root systems, including the larger size, overlap, and diversity of root components. Our imaging solution combines a field-imaging protocol and algorithmic approach to analyze mature root systems grown in the field. Via two case studies, we demonstrate how image analysis can be utilized to estimate localized root traits that reliably capture heritable architectural diversity as well as environmentally induced architectural variation of both monocot and dicot plants. In the first study, we show that our algorithms and traits (including 13 novel traits inaccessible to manual estimation) can differentiate nine maize (Zea mays) genotypes 8 weeks after planting. The second study focuses on a diversity panel of 188 cowpea (Vigna unguiculata) genotypes to identify which traits are sufficient to differentiate genotypes even when comparing plants whose harvesting date differs up to 14 d. Overall, we find that automatically derived traits can increase both the speed and reproducibility of the trait estimation pipeline under field conditions.
机译:目前已经开发出表征农业相关性状的植物表型技术,主要用于实验室和/或温室条件。就根部建筑特征而言,这将表型研究的范围主要限于在专用容器和生长培养基中生长的年幼植物。因此,需要新颖的方法来表征田间在实际土壤条件下生长的老龄植物的成熟根系。能够解决与表征成熟根系相关的挑战的影像学方法很少见,部分原因是成熟根系的复杂性更高,包括更大,根系重叠和根部多样性。我们的成像解决方案结合了场成像协议和算法方法来分析在田间生长的成熟根系。通过两个案例研究,我们演示了如何利用图像分析来估计能够可靠地捕获单子叶植物和双子叶植物的遗传结构多样性以及环境引起的建筑变异的局部根性状。在第一个研究中,我们证明了我们的算法和性状(包括13个无法通过人工估算获得的新性状)可以在种植后8周内区分9种玉米(Zea mays)基因型。第二项研究着眼于188个cow豆(Vigna unguiculata)基因型的多样性研究小组,以鉴定哪些特征足以区分基因型,即使在比较收获日期最长不超过14天的植物时也是如此。总体而言,我们发现,在田间条件下,自动导出的特征可以同时提高特征估计流水线的速度和可重复性。

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