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首页> 外文期刊>Agronomy Journal >Separation of cotton cultivar testing sites based on representativeness and discriminating ability using GGE biplots
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Separation of cotton cultivar testing sites based on representativeness and discriminating ability using GGE biplots

机译:基于代表性和区分能力的棉花品种试验位点的分离,采用GGE双图

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摘要

An important task of multienvironment trials (MET) analysis is evaluation of testing sites for megaenvironment differentiation and selection of "ideal" candidate location to improve the efficiency of cultivar selection and recommendation. The objectives of this research work were (i) to divide the Spanish cotton (Gossypium hirsutum L.) testing locations into megaenvironments and (ii) to separate the testing locations based on their distance to the "ideal" location, discriminating ability, representativeness, and uniqueness. GGE biplot was employed to analyze eight 1-yr and two multiyear (3-yr, 4-yr) balanced datasets from 1999 to 2006 cotton trials of Delta & Pine Land Co. in Spain for yield, fiber quality traits, a selection index (SI) based on yield and quality, and Verticillium wilt (Verticillium dahliae Kleb.) disease infestation level. Yearly GGE biplots revealed crossover genotype x location interactions, but not large enough to divide the area into different megaenvironments. Therefore, the Spanish cotton region may be considered as a complex megaenvironment and cultivar recommendation may be based on both mean performance and stability. Las Cabezas location was the closest to an ideal based on both yield and the SI regardless of the change from plastic to nonplastic mulching cultural practice. Aznalcazar did not provide unique information and could be dropped as a test site. The separation of test locations for their discriminating ability and representativeness provided useful information on the effectiveness of each testing location for developing and/or recommending cultivars with specific or broad adaptation. In this sense, Lebrija could be considered as trait-specific selection environment for early screening of verticillium tolerant genotypes.
机译:多环境试验(MET)分析的一项重要任务是评估巨型环境分化的测试地点,并选择“理想的”候选位点,以提高品种选择和推荐的效率。这项研究工作的目标是(i)将西班牙棉花(Gossypium hirsutum L.)测试地点划分为大环境,以及(ii)根据测试地点与“理想”地点的距离,区分能力,代表性,和独特性。 GGE双线图用于分析西班牙Delta&Pine Land Co.在1999年至2006年进行的8个1年和2个多年期(3年,4年)平衡数据集的产量,纤维品质性状,选择指数( SI)基于产量和品质以及黄萎病(Verticillium dahliae Kleb。)疾病侵染程度。每年的GGE双线图揭示了交叉基因型x位置的相互作用,但不足以将区域划分为不同的大环境。因此,西班牙棉花地区可能被认为是一个复杂的特大环境,品种推荐可能基于平均性能和稳定性。拉斯卡贝萨斯(Las Cabezas)的位置最接近于基于产量和SI的理想状态,而不管从塑料覆盖栽培向非塑料覆盖栽培的转变。 Aznalcazar没有提供唯一的信息,可能会被丢弃为测试站点。测试地点的区分能力和代表性的分离提供了有关每个测试地点对发展和/或推荐具有特定或广泛适应性的品种的有效性的有用信息。从这个意义上讲,Lebrija可以被认为是用于耐黄萎病基因型的早期筛选的性状特异性选择环境。

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