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基于 QTL-环境的预测模型在普通菜豆节点添加率中的开发。

Development of a QTL-environment-based predictive model for node addition rate in common bean.

机构信息

Agricultural and Biological Engineering Department, University of Florida, Gainesville, FL, 32611, USA.

School of Forest Resources and Conservation, University of Florida, Gainesville, FL, 32611, USA.

出版信息

Theor Appl Genet. 2017 May;130(5):1065-1079. doi: 10.1007/s00122-017-2871-y. Epub 2017 Mar 25.

Abstract

This work reports the effects of the genetic makeup, the environment and the genotype by environment interactions for node addition rate in an RIL population of common bean. This information was used to build a predictive model for node addition rate. To select a plant genotype that will thrive in targeted environments it is critical to understand the genotype by environment interaction (GEI). In this study, multi-environment QTL analysis was used to characterize node addition rate (NAR, node day) on the main stem of the common bean (Phaseolus vulgaris L). This analysis was carried out with field data of 171 recombinant inbred lines that were grown at five sites (Florida, Puerto Rico, 2 sites in Colombia, and North Dakota). Four QTLs (Nar1, Nar2, Nar3 and Nar4) were identified, one of which had significant QTL by environment interactions (QEI), that is, Nar2 with temperature. Temperature was identified as the main environmental factor affecting NAR while day length and solar radiation played a minor role. Integration of sites as covariates into a QTL mixed site-effect model, and further replacing the site component with explanatory environmental covariates (i.e., temperature, day length and solar radiation) yielded a model that explained 73% of the phenotypic variation for NAR with root mean square error of 16.25% of the mean. The QTL consistency and stability was examined through a tenfold cross validation with different sets of genotypes and these four QTLs were always detected with 50-90% probability. The final model was evaluated using leave-one-site-out method to assess the influence of site on node addition rate. These analyses provided a quantitative measure of the effects on NAR of common beans exerted by the genetic makeup, the environment and their interactions.

摘要

本研究报告了普通菜豆重组自交系群体中节点添加率的遗传组成、环境和基因型与环境互作的影响。这些信息被用于构建节点添加率的预测模型。为了选择在目标环境中茁壮成长的植物基因型,了解基因型与环境互作(GEI)至关重要。在这项研究中,多环境 QTL 分析用于表征普通菜豆主茎上的节点添加率(NAR,节点天数)。这项分析是用在五个地点(佛罗里达州、波多黎各、哥伦比亚的两个地点和北达科他州)种植的 171 个重组自交系的田间数据进行的。鉴定出了 4 个 QTL(Nar1、Nar2、Nar3 和 Nar4),其中一个具有显著的 QTL 与环境互作(QEI),即 Nar2 与温度。温度被确定为影响 NAR 的主要环境因素,而日照长度和太阳辐射则起次要作用。将地点作为协变量整合到 QTL 混合地点效应模型中,并进一步用解释性环境协变量(即温度、日照长度和太阳辐射)代替地点成分,得到了一个能够解释 NAR 表型变异 73%的模型,均方根误差为平均值的 16.25%。通过使用不同的基因型集进行十重交叉验证,检查了 QTL 的一致性和稳定性,这四个 QTL 始终以 50-90%的概率被检测到。最后,使用留一站点法评估模型,以评估站点对节点添加率的影响。这些分析提供了一种定量衡量普通菜豆遗传组成、环境及其相互作用对 NAR 影响的方法。

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