University of Azad Jammu and Kashmir, Department of Statistics, Muzaffarabad, Pakistan.
National University of Sciences and Technology (NUST), Research Center for Modelling and Simulation (RCMS), H-12, Islamabad, Pakistan.
Braz J Biol. 2021 Jun 28;82:e240199. doi: 10.1590/1519-6984.240199. eCollection 2021.
One of the most important traits that plant breeders aim to improve is grain yield which is a highly quantitative trait controlled by various agro-morphological traits. Twelve morphological traits such as Germination Percentage, Days to Spike Emergence, Plant Height, Spike Length, Awn Length, Tillers/Plant, Leaf Angle, Seeds/Spike, Plant Thickness, 1000-Grain Weight, Harvest Index and Days to Maturity have been considered as independent factors. Correlation, regression, and principal component analysis (PCA) are used to identify the different durum wheat traits, which significantly contribute to the yield. The necessary assumptions required for applying regression modeling have been tested and all the assumptions are satisfied by the observed data. The outliers are detected in the observations of fixed traits and Grain Yield. Some observations are detected as outliers but the outlying observations did not show any influence on the regression fit. For selecting a parsimonious regression model for durum wheat, best subset regression, and stepwise regression techniques have been applied. The best subset regression analysis revealed that Germination Percentage, Tillers/Plant, and Seeds/Spike have a marked increasing effect whereas Plant thickness has a negative effect on durum wheat yield. While stepwise regression analysis identified that the traits, Germination Percentage, Tillers/Plant, and Seeds/Spike significantly contribute to increasing the durum wheat yield. The simple correlation coefficient specified the significant positive correlation of Grain Yield with Germination Percentage, Number of Tillers/Plant, Seeds/Spike, and Harvest Index. These results of correlation analysis directed the importance of morphological characters and their significant positive impact on Grain Yield. The results of PCA showed that most variation (70%) among data set can be explained by the first five components. It also identified that Seeds/Spike; 1000-Grain Weight and Harvest Index have a higher influence in contributing to the durum wheat yield. Based on the results it is recommended that these important parameters might be considered and focused in future durum wheat breeding programs to develop high yield varieties.
其中,最重要的性状之一,是提高粮食产量,这是一个高度量化的性状,受各种农艺形态性状控制。12 个形态性状,如发芽率、穗出芽天数、株高、穗长、芒长、分蘖/株、叶角、穗粒数、株厚、千粒重、收获指数和成熟天数,被认为是独立因素。相关分析、回归分析和主成分分析(PCA)用于鉴定对产量有显著贡献的不同硬粒小麦性状。回归建模所需的必要假设已通过观察数据进行测试,所有假设均得到满足。固定性状和粒重的观测中检测到异常值。虽然一些观测值被检测为异常值,但这些异常值对回归拟合没有影响。为了选择一个简洁的硬粒小麦回归模型,应用了最佳子集回归和逐步回归技术。最佳子集回归分析表明,发芽率、分蘖/株和穗粒数对硬粒小麦产量有显著的正向影响,而株厚对硬粒小麦产量有负向影响。而逐步回归分析表明,发芽率、分蘖/株和穗粒数这三个性状显著增加了硬粒小麦的产量。简单相关系数指定了粒重与发芽率、分蘖/株数、穗粒数和收获指数之间的显著正相关。这些相关分析的结果指出了形态特征的重要性及其对粒重的显著正向影响。PCA 的结果表明,数据集中 70%的变异可以用前五个分量来解释。它还确定了穗粒数、千粒重和收获指数对硬粒小麦产量有更高的影响。基于这些结果,建议在未来的硬粒小麦育种计划中考虑和关注这些重要参数,以开发高产品种。