Data-driven identification of environmental variables influencing phenotypic plasticity to facilitate breeding for future climates.

IF 9.4 1区 生物学 Q1 Agricultural and Biological Sciences
New Phytologist Pub Date : 2024-08-25 DOI:10.1111/nph.19937
Aaron Kusmec, Cheng-Ting 'Eddy' Yeh, Patrick S Schnable
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引用次数: 0

Abstract

Phenotypic plasticity describes a genotype's ability to produce different phenotypes in response to different environments. Breeding crops that exhibit appropriate levels of plasticity for future climates will be crucial to meeting global demand, but knowledge of the critical environmental factors is limited to a handful of well-studied major crops. Using 727 maize (Zea mays L.) hybrids phenotyped for grain yield in 45 environments, we investigated the ability of a genetic algorithm and two other methods to identify environmental determinants of grain yield from a large set of candidate environmental variables constructed using minimal assumptions. The genetic algorithm identified pre- and postanthesis maximum temperature, mid-season solar radiation, and whole season net evapotranspiration as the four most important variables from a candidate set of 9150. Importantly, these four variables are supported by previous literature. After calculating reaction norms for each environmental variable, candidate genes were identified and gene annotations investigated to demonstrate how this method can generate insights into phenotypic plasticity. The genetic algorithm successfully identified known environmental determinants of hybrid maize grain yield. This demonstrates that the methodology could be applied to other less well-studied phenotypes and crops to improve understanding of phenotypic plasticity and facilitate breeding crops for future climates.

以数据为驱动,确定影响表型可塑性的环境变量,以促进针对未来气候的育种工作。
表型可塑性是指基因型在不同环境下产生不同表型的能力。培育出适应未来气候、具有适当可塑性水平的作物对满足全球需求至关重要,但对关键环境因素的了解仅限于少数几种研究较好的主要作物。利用在 45 种环境中对 727 个玉米(Zea mays L.)杂交种的谷物产量进行表型,我们研究了遗传算法和其他两种方法从使用最少假设构建的大量候选环境变量中识别谷物产量环境决定因素的能力。遗传算法从 9150 个候选变量中识别出了花前和花后最高温度、季中太阳辐射和全季净蒸散量这四个最重要的变量。重要的是,这四个变量得到了以往文献的支持。在计算出每个环境变量的反应规范后,确定了候选基因,并对基因注释进行了研究,以展示这种方法如何深入了解表型的可塑性。遗传算法成功确定了杂交玉米谷物产量的已知环境决定因素。这表明,该方法可应用于其他研究较少的表型和作物,以提高对表型可塑性的认识,促进未来气候条件下的作物育种。
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来源期刊
New Phytologist
New Phytologist PLANT SCIENCES-
CiteScore
17.60
自引率
5.30%
发文量
728
审稿时长
1 months
期刊介绍: New Phytologist is a leading publication that showcases exceptional and groundbreaking research in plant science and its practical applications. With a focus on five distinct sections - Physiology & Development, Environment, Interaction, Evolution, and Transformative Plant Biotechnology - the journal covers a wide array of topics ranging from cellular processes to the impact of global environmental changes. We encourage the use of interdisciplinary approaches, and our content is structured to reflect this. Our journal acknowledges the diverse techniques employed in plant science, including molecular and cell biology, functional genomics, modeling, and system-based approaches, across various subfields.
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