证据表明,根解剖结构的变异有助于墨西哥本土玉米的地方适应性

Chloee McLaughlin, Meng Li, Melanie Perryman, Adrien Heymans, Hannah Schneider, Jesse Lasky, Ruairidh Sawers
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引用次数: 0

摘要

墨西哥本土玉米(玉米)。它能适应各种气候和地理条件。在这里,我们特别关注根解剖变异在这种适应中的潜在作用。鉴于表征根解剖结构所需的投资,我们提出了一种使用环境描述符的机器学习方法,将相对较小的训练面板的性状变化投影到更大的基因型和地理参考墨西哥玉米材料面板上。由此产生的模型定义了复杂环境中潜在的生物学相关曲线,并随后用于基因型-环境关联。我们在墨西哥各地发现了玉米根系解剖结构系统性变异的证据,特别是在凉爽、干燥的高原地区,倾向于轴导降低的性状组合普遍存在。我们在之前描述的水银行策略和目前与根解剖和环境变异相关的候选基因的背景下讨论我们的结果。我们的策略是对标准环境基因组全关联分析的改进,适用于任何可获得地理参考表型数据的训练集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evidence that variation in root anatomy contributes to local adaptation in Mexican native maize
Mexican native maize (Zea mays ssp. mays) is adapted to a wide range of climatic and edaphic conditions. Here, we focus specifically on the potential role of root anatomical variation in this adaptation. In light of the investment required to characterize root anatomy, we present a machine learning approach using environmental descriptors to project trait variation from a relatively small training panel onto a larger panel of genotyped and georeferenced Mexican maize accessions. The resulting models defined potential biologically relevant clines across a complex environment and were used subsequently in genotype-environment association. We found evidence of systematic variation in maize root anatomy across Mexico, notably a prevalence of trait combinations favoring a reduction in axial conductance in cooler, drier highland areas. We discuss our results in the context of previously described water-banking strategies and present candidate genes that are associated with both root anatomical and environmental variation. Our strategy is a refinement of standard environmental genome wide association analysis that is applicable whenever a training set of georeferenced phenotypic data is available.
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