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Non-parametric stability analyses of protein content in multi-environment trials of wheat (T. aestivum L.)

机译:小麦(T. aestivum L.)多环境试验中蛋白质含量的非参数稳定性分析

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According to literature, a detailed paper has not been published yet on using non-parametric stability statistics for evaluating genotypic stability in protein content (PC) of wheat. Thus, this study aimed to investigate the stability for PC of wheat using sixteen non-parametric stability measures (YSD-PC standard deviation, RM-Rank mean, RSD-Rank’s standard deviation, RS-Rank Sum stability statistic, PA-Percentage of adaptability, R1 and R2-Range indexes, TOP-Ranking, Si(1), Si(2), Si(3), Si(6), NPi(1), NPi(2) NPi(3)and NPi(4) rank statistics, together with Y-PC mean). The study included 13 wheat genotypes, consisting of 5 registered cultivars and 8 breeding lines, selected from National Wheat Breeding Program of Turkey. The genotypes were grown in ten rain-fed environments, representative of major rain-fed wheat-growing areas of Turkey, during 2011-2013 cropping seasons. The ANOVA showed that the effects due to environments (E), genotypes (G) and GE interaction (GEI) were significant (P 0.01). Spearman’s rank correlation and principal component analyses (PCA) also revealed that two types of associations were found between the stability parameters: the first type included Si(1), Si(2), Si(3), Si(6), NPi(1), NPi(2) NPi(3), NPi(4), RSD and YSD parameters which were related to static stability, whereas the second type consisted of the Y, RM, TOP, PA, RS, R1 and R2 parameters which are related to dynamic concept of stability. Among the 8 breeding lines, G7 and G8 were the best genotypes in terms of both high PC and stability. In conclusion it could be suggested that dynamic non-parametric stability statistics should be used for selecting genotypes with high PC and stable when tested across a wide range of environments.
机译:根据文献,关于使用非参数稳定性统计数据评估小麦蛋白质含量(PC)的基因型稳定性的详细论文尚未发表。因此,本研究旨在使用16种非参数稳定性度量方法(YSD-PC标准偏差,RM-Rank平均值,RSD-Rank标准差,RS-Rank总和稳定性统计量,PA-适应性百分比)来研究小麦PC的稳定性。 ,R1和R2-Range索引,TOP排名,Si(1),Si(2),Si(3),Si(6),NPi(1),NPi(2)NPi(3)和NPi(4)排名统计以及Y-PC均值)。该研究包括13种小麦基因型,包括5个注册品种和8个育种系,选自土耳其国家小麦育种计划。在2011-2013种植季节期间,该基因型在十个雨育环境下生长,这是土耳其主要的雨育小麦种植区的代表。方差分析表明,环境(E),基因型(G)和GE相互作用(GEI)引起的影响显着(P <0.01)。 Spearman的秩相关和主成分分析(PCA)还揭示了在稳定性参数之间发现两种类型的关联:第一类包括Si(1),Si(2),Si(3),Si(6),NPi( 1),NPi(2),NPi(3),NPi(4),与静态稳定性有关的RSD和YSD参数,而第二种类型由Y,RM,TOP,PA,RS,R1和R2参数组成与稳定性的动态概念有关。在8个育种系中,就高PC和稳定性而言,G7和G8是最好的基因型。总而言之,建议在各种环境中进行测试时,应使用动态非参数稳定性统计数据来选择PC值高且稳定的基因型。

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