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Data from: A leaf phenomics approach to estimating below-ground traits in North American Licorice

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DataCite Commons2025-04-07 更新2025-05-07 收录
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https://figshare.com/articles/dataset/Data_from_A_leaf_phenomics_approach_to_estimating_below-ground_traits_in_North_American_Licorice/28742870
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<i>Premise of the study:</i> Thousands of years of selective breeding has prioritized above-ground yield, with little regard for changes happening below-ground. Despite their central role in plant success and resilience, our knowledge of roots lags behind above-ground structures. Accurately phenotyping root traits is often labor-intensive, expensive, and destructive. In order to advance understanding of the fundamental biology underlying root systems, and to integrate hard-to-measure root traits into breeding programs, high-throughput non-destructive methods are required.<i>Methods: </i>This study uses American licorice (<i>Glycyrrhiza lepidota </i>Pursh.), a perennial legume with a rich ethnobotanical history, as a model to investigate root system phenotypes. We assess root traits across multiple populations, analyze relationships between above- and below-ground phenotypes, and test the use of multidimensional leaf traits, including spectral reflectance, in predicting root traits.<i>Key results: </i>American licorice displays significant variation in root traits across source populations and strong correlations between above- and below-ground traits. Leaf spectral reflectance and elemental composition show promise in modeling below-ground traits, though the isometric relationship between plant size and root traits complicates model accuracy. <i>Conclusions</i>: These findings demonstrate the use of high-dimensional leaf traits as a proxy for root traits, with potential applications for understanding foundational questions in plant biology and in breeding programs targeting the below-ground structures of perennial herbaceous species. Further optimization and larger studies are needed to improve predictive models.
提供机构:
figshare
创建时间:
2025-04-07
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