Graduate School of Agricultural and Life Sciences, University of Tokyo, Tokyo, Japan.
JSPS Research Fellow, Tokyo, Japan.
PLoS One. 2019 Nov 21;14(11):e0224695. doi: 10.1371/journal.pone.0224695. eCollection 2019.
Seed shape is an important agronomic trait with continuous variation among genotypes. Therefore, the quantitative evaluation of this variation is highly important. Among geometric morphometrics methods, elliptic Fourier analysis and semi-landmark analysis are often used for the quantification of biological shape variations. Elliptic Fourier analysis is an approximation method to treat contours as a waveform. Semi-landmark analysis is a method of superimposed points in which the differences of multiple contour positions are minimized. However, no detailed comparison of these methods has been undertaken. Moreover, these shape descriptors vary when the scale and direction of the contour and the starting point of the contour trace change. Thus, these methods should be compared with respect to the standardization of the scale and direction of the contour and the starting point of the contour trace. In the present study, we evaluated seed shape variations in a sorghum (Sorghum bicolor Moench) germplasm collection to analyze the association between shape variations and genome-wide single-nucleotide polymorphisms by genomic prediction (GP) and genome-wide association studies (GWAS). In our analysis, we used all possible combinations of three shape description methods and eight standardization procedures for the scale and direction of the contour as well as the starting point of the contour trace; these combinations were compared in terms of GP accuracy and the GWAS results. We compared the shape description methods (elliptic Fourier descriptors and the coordinates of superposed pseudo-landmark points) and found that principal component analysis of their quantitative descriptors yielded similar results. Different scaling and direction standardization procedures caused differences in the principal component scores, average shape, and the results of GP and GWAS.
种子形状是一个重要的农艺性状,在基因型之间存在连续的变化。因此,对这种变化进行定量评估是非常重要的。在几何形态测量学方法中,椭圆傅里叶分析和半标志点分析常用于生物形状变化的定量。椭圆傅里叶分析是一种将轮廓处理为波形的近似方法。半标志点分析是一种叠加点的方法,其中最小化多个轮廓位置的差异。然而,这些方法之间没有进行详细的比较。此外,这些形状描述符在轮廓的比例和方向以及轮廓轨迹的起点发生变化时会发生变化。因此,这些方法应根据轮廓的比例和方向以及轮廓轨迹的起点的标准化进行比较。在本研究中,我们评估了高粱( Sorghum bicolor Moench )种质资源中种子形状的变化,通过基因组预测(GP)和全基因组关联研究(GWAS)分析形状变化与全基因组单核苷酸多态性之间的关系。在我们的分析中,我们使用了三种形状描述方法和八种轮廓比例和方向以及轮廓轨迹起点标准化程序的所有可能组合;这些组合在 GP 准确性和 GWAS 结果方面进行了比较。我们比较了形状描述方法(椭圆傅里叶描述符和叠加伪标志点的坐标),发现它们的定量描述符的主成分分析产生了相似的结果。不同的比例和方向标准化程序导致主成分得分、平均形状以及 GP 和 GWAS 的结果不同。