多性状BLUP通径分析在棉纤维长度相关性状间相互关系研究中的应用

R. S. Alves, J. Rocha, L. P. Teodoro, L. P. Carvalho, F. J. C. Farias, M. Resende, L. L. Bhering, P. Teodoro
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引用次数: 1

摘要

多性状最佳线性无偏预测法(BLUP)考虑了性状间的遗传相关性和残差相关性,具有较高的选择精度,是最适合进行遗传评价的方法。因此,本研究旨在通过多性状BLUP下的通径分析,确定与棉花纤维长度相关的性状。为此,在3种环境下对36个优良品系进行了评价,并对纤维品质和农艺性状进行了表型分析。方差成分通过残差最大似然(REML)估计。通过混合模型输出得到性状间的遗传相关系数,并建立相关网络以图形化表达这些结果。随后,我们进行路径分析,考虑纤维长度作为主要因变量。多性状BLUP模型得到的遗传参数表明,大多数性状的表型变异主要由残留效应组成,因此需要采用更精确的统计方法,如多性状BLUP。多性状BLUP遗传相关和通径分析结果表明,基于重要纤维品质性状,特别是纤维长度性状的选择困难,因为大多数性状的因果关系很低,其他重要性状的因果关系也不理想。多性状BLUP是预测遗传价值最合适的方法。这是首次在棉花中对多性状BLUP进行通径分析。本研究结果表明,没有一个基因型具有所有理想的性状。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Path analysis under multiple-trait BLUP: application in the study of interrelationships among traits related to cotton fiber length
Multi-trait best linear unbiased prediction (BLUP) is, generally, the most appropriate method to genetic evaluation because it considers the genetic and residual correlations among traits and conduct to higher selection accuracy. Thus, the present study aimed to identify traits correlated to the fiber length via path analysis under multi-trait BLUP for the cotton breeding. To this end, thirty-six elite lines were evaluated in three environments and phenotyped for many traits related to fiber quality and agronomic traits. Variance components were estimated via residual maximum likelihood (REML). The genetic correlation coefficients among traits were obtained through mixed model output, and to graphically express these results a correlation network was built. Subsequently, we performed path analysis considering fiber length as a principal dependent variable. Genetic parameters obtained by multi-trait BLUP model indicate that the phenotypic variance for most traits is mostly composed of residual effects, which reinforces the need for using more accurate statistical methods such as multi-trait BLUP. The results found for genetic correlations and path analysis under multi-trait BLUP reveal the difficulty of selection based on important fiber quality traits, especially fiber length, since most traits show very low cause-and-effect relationship, and other important traits present undesirable cause-and-effect relationship. Highlights Multiple-trait BLUP is the most appropriate method to predict genetic values. This is the first study in cotton to perform path analysis under multiple-trait BLUP. The findings of this study indicate that there is no genotype presenting all desirable traits.
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