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首页> 外文期刊>Journal of Crop Improvement >Genotype-by-environment interaction analysis across three crop cycles in sugarcane
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Genotype-by-environment interaction analysis across three crop cycles in sugarcane

机译:甘蔗三种作物循环的基因型 - 环境相互作用分析

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Genotype-by-environment interaction (GEI) is encountered in multi-environment trials. In sugarcane {Saccharum spp.), GEI affects crop growth and cane yield and complicates the selection of superior genotypes. The objective of this study was to assessand analyze GEI for cane yield and stalk weight to identify high-yielding, stable genotypes. Thirteen Canal Point (CP) sugarcane clones and three check varieties were evaluated at five different locations (environments) across three crop cycles (plant cane, first ratoon, and second ratoon) on the Florida organic (muck) soils. At each location, the experiment was conducted as a randomized complete block design with six replications. Mean stalk weight and cane yield data were collected and analyzed via the additive main effects and multiplicative interaction (AMMI) and genotype main effect (G) plus genotype x environment interaction (GEI), i.e. GGE biplot. The AMMI analysis for mean stalk weight and cane yield revealed that variation attributable to genotypes, environments, and GEI for these traits was significant. The GGE biplot analysis indicated that the five locations formed two mega-environments, with different winning genotypes. Two locations, Okeelanta and Duda, were non-representative of the Florida muck-soils. Among all the genotypes, CP 12-1417 had the highest mean cane yield and had the most stable performance across crop cycles. We concluded that the application of GGE biplot in our final-stage sugarcane testing program could help us identify clones best adapted to specific locations and enhance selection efficiency by helping us identify locations that provide similar information.
机译:基因型与环境交互作用(GEI)在多环境试验中遇到。在甘蔗{Saccharum spp.)中,GEI影响作物生长和甘蔗产量,并使优良基因型的选择复杂化。本研究的目的是评估和分析甘蔗产量和茎重的GEI,以确定高产、稳定的基因型。在五个不同的位置(环境)评估了13个Canal Point(CP)甘蔗克隆和3个对照品种在佛罗里达有机(淤泥)土壤上的三个作物周期(种植甘蔗、第一次再生和第二次再生)。在每个地点,实验都是以随机完整区组设计进行的,共有六个重复。通过加性主效应和乘性互作(AMMI)和基因型主效应(G)加基因型x环境互作(GEI),即GGE双标,收集和分析平均茎重和甘蔗产量数据。平均茎重和甘蔗产量的AMMI分析表明,这些性状的基因型、环境和GEI差异显著。GGE双标图分析表明,这五个地点形成了两个巨型环境,具有不同的获胜基因型。Okeelata和Duda这两个地点不代表佛罗里达州的淤泥土壤。在所有基因型中,CP12-1417的平均甘蔗产量最高,在整个作物周期中表现最稳定。我们得出结论,在我们的最后阶段甘蔗测试项目中应用GGE biplot可以帮助我们识别最适合特定位置的克隆,并通过帮助我们识别提供类似信息的位置来提高选择效率。

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