首页> 外文期刊>Bulgarian Journal of Agricultural Science >Use of canonical correlation analysis for determination of relationships between plant characters and yield components in winter squash (Cucurbita maxima Duch.) populations.
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Use of canonical correlation analysis for determination of relationships between plant characters and yield components in winter squash (Cucurbita maxima Duch.) populations.

机译:利用典型相关分析确定西葫芦种群的性状与产量构成之间的关系。

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摘要

Canonical correlation analysis is one of the most popular multivariate analysis techniques. In this study, a canonical correlation analysis (CCA) was used to estimate relationships between plant characters [X set - fruit length (FL), fruit diameter (FD), flesh thickness (FT), fiber weight per fruit (FW), length of seed cavity (LSC), skin thickness (ST), vine length (VL), brunch number per plant (BN), leaf length (LL), leaf width (LW), female flowering time (50%) (FFT), and time to maturity (TM)], and yield components [Y set-total fruit weight per plant (FW/P), average fruit weight (AFW) and number of fruits per plant (FN/P)] of 117 winter squash (Cucurbita maxima Duch.) in populations collected from the Black Sea Region of Turkey. In this study, three canonical cor-relation coefficients (CCCs) were estimated, and the first two of them were significant (0.903 and 0.571, p<0.001) with respect to the likelihood ratio test while third CCC was no significant (0.340, p>0.218). The findings ob-tained from the CCA indicate that FW/P had the largest contribution for the explanatory capacity of canonical variables estimated from yield components of 117 Turkish winter squash (Cucurbita maxima Duch.) populations when compared with other yield components. FD and FLhad largest contribution for the explanatory capacity of canonical variables estimated from plant characters when compared with the other characters. The obtained results show that FD and FLshould be used with the aim of increasing yield per plant in winter squash (Cucurbita maxima Duch.) populations in this study.
机译:典型的相关分析是最流行的多元分析技术之一。在这项研究中,使用典型相关分析(CCA)来估计植物性状之间的关系[ X set -果实长度(FL),果实直径(FD),果肉厚度(FT),纤维重量每个果实(FW),种子腔长度(LSC),表皮厚度(ST),葡萄树长度(VL),单株早午餐数(BN),叶长(LL),叶宽(LW),雌花开花时间( 50%)(FFT)和成熟时间(TM)],以及产量成分[ Y 单株总果重(FW / P),平均果重(AFW)和数量从土耳其黑海地区采集的种群中的117个西葫芦( Duch。)的单株果实(FN / P)。在这项研究中,估计了三个典型的相关系数(CCC),其中前两个相对似然比检验显着(0.903和0.571,p <0.001),而第三个CCC没有显着性(0.340,p > 0.218)。从CCA获得的发现表明,与117个土耳其西葫芦种群相比,FW / P对典型变量的解释能力贡献最大。其他产量构成要素。与其他字符相比,FD和FL对从植物字符估计的规范变量的解释能力具有最大的贡献。获得的结果表明,在本研究中,应使用FD和FL来提高冬南瓜( Duch。)种群单株产量。

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