面包小麦增产选择指标的变量评价

K. Sadeghi, M. Pahlevani, Mohsen Esmeilzadeh Moghaddam, K. Zaynali Nezhad
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引用次数: 0

摘要

确定选择指标是提高粮食产量的育种项目中最重要的一步。选择指标的定义通常是通过对多元统计方法中的变量进行评估来完成的。采用多元统计方法分析了面包小麦各基因型籽粒产量及其组成因素之间的关系。试验采用3个重复的随机完全区组设计,于2018-19作物年在高根农业科学与自然资源大学研究农场进行。对10个面包小麦商品品种及其透析直交和反交后代进行了形态和物候性状的评价,特别是对产量及其构成因素进行了评价。基因型和表型相关系数结果表明,籽粒产量与穗长、穗重、可育分蘖数、穗粒数、穗粒数、千粒重、生物产量和收获指数呈显著正相关(概率为1%)。根据逐步回归分析的结果,将生物产量、收获指数、主穗粒数和主穗重分别输入回归模型,可解释98%的粮食产量变化。通径分析结果表明,生物产量对粮食产量的直接影响最大。除生物产量外,对籽粒产量影响最直接的是主穗重。此外,在因子分析中考虑特征值大于1,确定了8个隐藏因素,共解释了75.18%的数据变化。综上所述,与其他性状相比,生物产量、收获指数、穗粒数和穗重可作为田间条件下高产基因型选择的适宜指标。基因型Alo、Ehsan♂× Gonbad♀和Ehsan对所研究性状的评价最高,可为今后的育种研究提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Valuations of Variables as Selection Index for Improving Grain Yield in Bread Wheat
Identifying selection indices is the most important step of a breeding project that aims to improve grain yield. The definition of the selection index is usually done by evaluating the variables in multivariate statistical methods. In the present study, the relationship between grain yield and its components in bread wheat genotypes was determined by multivariate statistical methods. The experiment was conducted in a randomized complete block design with 3 replications in the research farm of Gorgan University of Agricultural Sciences and Natural Resources in the 2018-19 crop years. Ten commercial cultivars of bread wheat along with their offspring from direct and inverse crosses in a dialysis arrangement were evaluated for morphological and phenological traits, especially grain yield and its components. The results of genotypic and phenotypic correlation coefficients showed a positive and significant correlation (at 1% probability level) between grain yield and spike length, spike weight, number of fertile tillers, number of seeds per spike, number of spikes per spike, 1000-seed weight, biological yield and harvest index. Based on the results of stepwise regression analysis, biological yield, harvest index, number of grains per main spike and main spike weight were entered into the regression model, respectively, and explained a total of 98% of the variation in grain yield. Based on the results of path analysis, biological yield had the highest direct effect on grain yield. After biological yield, the most direct effect on grain yield was related to the weight of main spike. Also, by considering eigenvalues greater than one in factor analysis, 8 hidden factors were identified that explained a total of 75.18% of the data changes. In general, it can be concluded that biological yield, harvest index, number of seeds per spike and weight of spike compared to other traits can be used as appropriate indicators in breeding programs to select high-yield genotypes in field conditions. Genotypes Alo, Ehsan♂ × Gonbad♀ and Ehsan had the highest value for the studied traits, which can be used in future breeding researches.
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