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通过标记效应网络将遗传和环境因素联系起来,以了解性状可塑性。

Linking genetic and environmental factors through marker effect networks to understand trait plasticity.

机构信息

Department of Agronomy and Plant Genetics, University of Minnesota, St. Paul, MN 55108, USA.

Department of Crop Sciences, University of Illinois at Urbana-Champaign, Urbana, IL 61801, USA.

出版信息

Genetics. 2023 Aug 9;224(4). doi: 10.1093/genetics/iyad103.

DOI:10.1093/genetics/iyad103
PMID:37246567
Abstract

Understanding how plants adapt to specific environmental changes and identifying genetic markers associated with phenotypic plasticity can help breeders develop plant varieties adapted to a rapidly changing climate. Here, we propose the use of marker effect networks as a novel method to identify markers associated with environmental adaptability. These marker effect networks are built by adapting commonly used software for building gene coexpression networks with marker effects across growth environments as the input data into the networks. To demonstrate the utility of these networks, we built networks from the marker effects of ∼2,000 nonredundant markers from 400 maize hybrids across 9 environments. We demonstrate that networks can be generated using this approach, and that the markers that are covarying are rarely in linkage disequilibrium, thus representing higher biological relevance. Multiple covarying marker modules associated with different weather factors throughout the growing season were identified within the marker effect networks. Finally, a factorial test of analysis parameters demonstrated that marker effect networks are relatively robust to these options, with high overlap in modules associated with the same weather factors across analysis parameters. This novel application of network analysis provides unique insights into phenotypic plasticity and specific environmental factors that modulate the genome.

摘要

了解植物如何适应特定的环境变化,并鉴定与表型可塑性相关的遗传标记,可以帮助培育者开发适应快速变化的气候的植物品种。在这里,我们提出使用标记效应网络作为一种新的方法来鉴定与环境适应性相关的标记。这些标记效应网络是通过适应常用的软件构建的,该软件使用跨生长环境的标记效应作为输入数据构建基因共表达网络。为了证明这些网络的实用性,我们使用来自 9 个环境中 400 个玉米杂交种的约 2000 个非冗余标记的标记效应构建了网络。我们证明可以使用这种方法生成网络,并且共变的标记很少处于连锁不平衡状态,因此代表了更高的生物学相关性。在标记效应网络中鉴定到了与生长季节不同天气因素相关的多个共变标记模块。最后,对分析参数的因子检验表明,标记效应网络相对稳健,在不同分析参数下与相同天气因素相关的模块具有高度重叠。这种网络分析的新应用为表型可塑性和调节基因组的特定环境因素提供了独特的见解。

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