利用贝叶斯- ammi模型研究旱稻优良品系的稳定性和适应性

Q3 Agricultural and Biological Sciences Australian Journal of Crop Science Pub Date : 2021-02-03 DOI:10.21475/AJCS.21.15.02.P2882
J. J. Nuvunga, Alessandra Querino da Silva, Cristian Tiago Erazo Mendes, Gabriel Cossa, Luciano Antonio de Oliveira, Carlos Pereira da Silva, Nelio Cândido, H. Inácio, J. S. S. B. Filho
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引用次数: 1

摘要

水稻是世界上最重要的作物之一。寻找更高产和对不同环境具有广泛适应性的基因型是至关重要的。育种者面临的主要障碍之一是鉴定优良菌株是基因型与环境相互作用(GEI)的存在,这促使了无数统计程序的发展,旨在提供更有效的研究。在这项工作中,我们分析了13个旱稻系在9种不同环境下的适应性和稳定性,作为遗传改良计划的一部分,这些环境是由当地组合和多年的农业造成的。试验采用完全随机区组设计,设3个重复。主要变量为粮食库存量(kg/ha)。所采用的模型是贝叶斯主加性效应和乘性相互作用(Bayesian- ammi)。我们的实现意味着来自单一种群的基因型随机效应的额外假设,而不是以往文献中的工作。具有最大验后密度的可信区域可以鉴定出平均产量较高的品种。稳定的基因型显示了水稻育种计划中对环境适应的初步证据。贝叶斯- ammi是灵活的,并开始得到更广泛的应用,但我们的建议是有希望使它成为一个更强大的工具
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Stability and adaptability of elite upland rice lines using Bayesian-AMMI model
Rice is one of the world’s most important crops. The search for genotypes that are more productive and have wide adaptation to different environments is paramount. One of the major breeder’s obstacles faced is identification of superior strains is the presence of Genotype × Environment Interaction (GEI), which motivated the development of countless statistical procedures aiming to offer more efficient studies. In this work we analysed adaptability and stability of 13 upland rice lineages as part of a genetic improvement program in nine different environments, resulting from local combination and years of agriculture. The experiment was conducted in a completely randomized block design, with three replicates. The main variable is the grain storage in kg/ha. The model applied is the Bayesian Main Additive Effects and Multiplicative Interaction (Bayesian-AMMI). Our implementation implies an extra assumption of random effects from genotypes coming from a single population as opposed to previous works in the literature. Credibility regions with maximum posteriori density allowed identification of cultivars with higher average yield. Stable genotypes showed an initial evidence of adaptation to an environment in this rice breeding program. Bayesian-AMMI is flexible, and starts to be more widely used, but our suggestion is promising in making it a more powerful tool
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来源期刊
Australian Journal of Crop Science
Australian Journal of Crop Science 农林科学-农艺学
CiteScore
1.20
自引率
0.00%
发文量
75
审稿时长
3.5 months
期刊介绍: Information not localized
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