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首页> 外文期刊>Journal of Crop Improvement >Thin Plate Spline Regression Model Used at Early Stages of Soybean Breeding to Control Field Spatial Variation
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Thin Plate Spline Regression Model Used at Early Stages of Soybean Breeding to Control Field Spatial Variation

机译:薄板花键回归模型用于大豆育种的早期阶段,以控制现场空间变化

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Yield variation observed in soybean (Glycine maxj progeny-row yield trial (PRYT) is the final result of line genotypic merit, field spatial pattern, and experimental error. The spatial variation in field tests could confound the estimates of genetic merits. The objectives of this research were to: i) quantify non-genetic yield variation in a soybean breeding PRYT, and ii) determine efficiency of the thin plate spline regression (TPSR) model in adjusting yield because of variation caused by field spatial pattern. The third objective was to evaluate if the use of TPSR model could improve the selection accuracy of PRYT un-replicated yield tests. Uniformity study, early generation test, and confirmation study were conducted. Our results indicated that large spatial variations in soybean PRYT field could be present as evaluated by the Uniformity Study conducted with two commercial lines. In this experiment, the use of the TPSR proved to be effective in reducing the error variance and the coefficient ofvariability, with an improvement in relative efficiency (IRE) of 3 7.9%. In early generation tests, 2565 lines were evaluated within test-sets along with three checks. The TPSR model also was * effective in the early-generation tests; the IRE was 40.4%.The correlation coefficients calculated between yield estimates obtained in two-year early generation tests and confirmation study improved by 0.21 points compared with results from non-TPSR experiments.The results indicated that use of TPSR model was effective in accounting for some of the spatial variation in field tests.
机译:在大豆(Glycine MaxJ后凸产量试验(PRYT)中观察到的产量变异是线基因型优异,现场空间模式和实验误差的最终结果。现场测试中的空间变化可能会混淆遗传优点的估计。的目标该研究是:I)量化大豆育种PRYT的非遗传产量变化,并且ii)由于现场空间模式引起的变化,确定薄板样条回归(TPSR)模型的效率调整产量。第三个目的是评估使用TPSR模型是否可以提高PRYT未复制的产量测试的选择精度。进行均匀性研究,提前发电试验和确认研究。我们的研究结果表明,大豆Pryt场的大量空间变化可以作为用两条商业线路进行的均匀性研究评估。在该实验中,使用TPSR证明是有效地降低误差方差和不等变性的系数,具有3.9%的相对效率(IRE)的提高。在早期的生成测试中,在测试集中评估2565条线以及三个检查。 TPSR模型也为*在早期测试中有效; IRE为40.4%。与非TPSR实验的结果相比,在两年早期代验试验和确认研究中获得的产量估计之间计算的相关系数增加了0.21点。结果表明使用TPSR模型的使用在会计上有效现场测试中的一些空间变化。

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