Diversity analysis and structural modeling for some traits in wheat genotypes

Maysoun M. Saleh, Rajaa Kenaan, Zaeda Alsayd Suliman, Walid A. Ali, Yaman Jabbour
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Abstract

Wheat is the most important grain crop in the world which provide people with almost 50% of the required calories [1]. Breeding programs aim to increase the selection efficiency by assessing more genetic variations among wheat genotypes [2], this can be studied through different methods of multivariate analysis such as principle component and cluster analysis. Principle component analysis is used to reduce the large number of traits to a limited number which represents the majority of the existent variation [3]. Al-Otayk [4] applied principle component analysis to study the variation in wheat germplasm, their results showed remarkable variation among them. Categorize germplasm in many groups depending on their variation is applied by Cluster analysis [5]. Cluster analysis was applied by Devesh et al. [1] depending on the agronomic traits of various wheat trait. Poudel et al. [6] estimated the diversity between wheat genotypes, their results showed that wheat genotypes were clustered in various main and sub main clusters. Sahu et al. [7] declared that correlation is used to just to illustrate relation between traits, but not for prediction of any trait, whereas path analysis considers as an efficient method for confirming the correlation depending on the effects and reasons of these effects and to eliminate any false effect. Abd El-Mohsen [8] mentioned that prediction of grain yield via other traits can be applied by regression analysis. The objectives of this investigation were to: (i) evaluate the magnitude of potential diversity between exotic and local wheat genotypes by using principal component analysis and cluster analysis, (ii) study the nature of structural modeling between grain yield and other traits via Regression and path analysis, (iii) define the superior genotypes regarding grain yield in various locations to be used in breeding programs.
小麦基因型部分性状的多样性分析与结构建模
小麦是世界上最重要的粮食作物,它为人们提供了所需热量的近50%[1]。育种计划旨在通过评估小麦基因型之间更多的遗传变异来提高选择效率[2],这可以通过主成分分析和聚类分析等不同的多变量分析方法来研究。主成分分析是将大量的性状减少到有限的数量,这代表了存在变异的大部分[3]。Al-Otayk[4]利用主成分分析方法研究了小麦种质资源的变异,结果表明不同种质间存在显著差异。利用聚类分析(Cluster analysis)将种质资源根据变异进行分类[5]。Devesh等[1]根据小麦各性状的农艺性状采用聚类分析。Poudel等[6]估计了小麦基因型之间的多样性,结果表明小麦基因型聚集在不同的主和亚主聚类中。Sahu等人[7]认为相关性只是用来说明性状之间的关系,而不是用来预测任何性状,而通径分析被认为是一种有效的方法,可以根据这些效应的影响和原因来确定相关性,并消除任何虚假效应。Abd El-Mohsen[8]提到通过其他性状预测粮食产量可以采用回归分析。本研究的目的是:(1)通过主成分分析和聚类分析评估外来小麦和本地小麦基因型之间潜在多样性的大小;(2)通过回归和通径分析研究籽粒产量和其他性状之间结构模型的本质;(3)确定不同地区籽粒产量的优势基因型,用于育种计划。
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