Malinowska Marta, Ruud Anja Karine, Jensen Just, Svane Simon Fiil, Smith Abraham George, Bellucci Andrea, Lenk Ingo, Nagy Istvan, Fois Mattia, Didion Thomas, Thorup-Kristensen Kristian, Jensen Christian Sig, Asp Torben
Center for Quantitative Genetics and Genomics, Aarhus Univ., Slagelse, Denmark.
Dep. of Plant and Environmental Sciences, Univ. of Copenhagen, Taastrup, Denmark.
Plant Genome. 2022 Dec;15(4):e20253. doi: 10.1002/tpg2.20253. Epub 2022 Aug 17.
The growing demand for food and feed crops in the world because of growing population and more extreme weather events requires high-yielding and resilient crops. Many agriculturally important traits are polygenic, controlled by multiple regulatory layers, and with a strong interaction with the environment. In this study, 120 F families of perennial ryegrass (Lolium perenne L.) were grown across a water gradient in a semifield facility with subsoil irrigation. Genomic (single-nucleotide polymorphism [SNP]), transcriptomic (gene expression [GE]), and DNA methylomic (MET) data were integrated with feed quality trait data collected from control and drought sections in the semifield facility, providing a treatment effect. Deep root length (DRL) below 110 cm was assessed with convolutional neural network image analysis. Bayesian prediction models were used to partition phenotypic variance into its components and evaluated the proportion of phenotypic variance in all traits captured by different regulatory layers (SNP, GE, and MET). The spatial effects and effects of SNP, GE, MET, the interaction between GE and MET (GE × MET) and GE × treatment (GE and GE ) interaction were investigated. Gene expression explained a substantial part of the genetic and spatial variance for all the investigated phenotypes, whereas MET explained residual variance not accounted for by SNPs or GE. For DRL, MET also contributed to explaining spatial variance. The study provides a statistically elegant analytical paradigm that integrates genomic, transcriptomic, and MET information to understand the regulatory mechanisms of polygenic effects for complex traits.
由于人口增长和极端天气事件增多,全球对粮食和饲料作物的需求不断增加,这就需要高产且具有抗逆性的作物。许多具有重要农业价值的性状是多基因的,受多个调控层次控制,并与环境有强烈的相互作用。在本研究中,120个多年生黑麦草(Lolium perenne L.)F家族在一个带有底土灌溉的半田间设施中沿着水分梯度种植。基因组(单核苷酸多态性[SNP])、转录组(基因表达[GE])和DNA甲基化组(MET)数据与在半田间设施的对照和干旱区域收集的饲料品质性状数据相结合,以提供处理效应。利用卷积神经网络图像分析评估110厘米以下的深根长度(DRL)。贝叶斯预测模型用于将表型变异划分为其组成部分,并评估不同调控层次(SNP、GE和MET)捕获的所有性状的表型变异比例。研究了SNP、GE、MET的空间效应和效应,GE与MET之间的相互作用(GE×MET)以及GE与处理之间的相互作用(GE和GE)。基因表达解释了所有研究表型的大部分遗传和空间变异,而MET解释了SNP或GE未解释的剩余变异。对于DRL,MET也有助于解释空间变异。该研究提供了一种统计上优雅的分析范式,整合了基因组、转录组和MET信息,以了解复杂性状多基因效应的调控机制。