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Stepwise regression and principal component analyses for quantitative traits of rapeseed genotypes at different sowing dates

机译:不同播期油菜基因型数量性状的逐步回归和主成分分析

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The present research was done to assess the best selection criteria for yield improvement in rapeseed (Brassica napus L.) using stepwise regression and principal component analyses at different sowing dates. All the traits except 1000-seed weight were significantly affected by sowing dates. The results of stepwise regression analysis revealed that seeds per pod had an important role at the first and second sowing dates, but at the third and fourth sowing dates, pods per plant and days to flowering were more important than other yield components for a seed yield prediction model. On the basis of a cumulative percent of variation, three principal components (PCs) were determined for each sowing date. The cumulative percentages of variation for three PCs at the first to fourth sowing dates were 0.97, 0.96, 0.89 and 0.95, respectively. At the first sowing date, the first principal component (PC1) had high positive and negative PC loading values for the studied traits such as days to flowering, days to the end of flowering, duration of flowering, pods per plant and harvest index. Therefore, there was high variation in these traits among the genotypes. PC2 of the first sowing date had also high PC loadings for pods on the main raceme, seeds per pod, 1000-seed weight, biological and seed yields, therefore the correlation of these traits with this PC will be high. In PC3 of the first sowing date, height, pods on the main raceme and pods per plant had the high value of PC loadings. Based on stepwise regression analysis, seeds per pod at the first and second sowing dates and days to flowering and pods per plant at the third and fourth sowing dates had an important role for improving seed yield.
机译:本研究旨在通过逐步回归和不同播期的主成分分析来评估油菜(Brassica napus L.)产量提高的最佳选择标准。除1000粒重外,其他所有性状均受播期的影响。逐步回归分析的结果表明,每荚的种子在第一和第二播种日期起着重要的作用,但在第三和第四播种日期,每株荚和开花天数比其他产量成分对种子产量的影响更大预测模型。根据变异的累积百分比,为每个播种期确定三个主要成分(PC)。在第一到第四播种日,三台PC的累积变异百分比分别为0.97、0.96、0.89和0.95。在第一次播种时,对于所研究的性状,例如开花天数,开花结束天数,开花时间,每株豆荚和收获指数,第一主成分(PC1)具有较高的正负PC负载值。因此,这些性状在基因型之间差异很大。第一次播种的PC2在主要总状花序上的豆荚,每个豆荚的种子,1000粒重,生物学和种子产量方面也具有较高的PC含量,因此这些性状与该PC的相关性很高。在第一次播种的PC3中,高度,主总状花序上的豆荚和每个植物的豆荚具有较高的PC负载量。基于逐步回归分析,在开花的第一,第二个播种日期和播种天数上每个豆荚的种子以及在第三和第四个播种日期的每株豆荚的种子对提高种子产量具有重要作用。

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