Sample size and genetic divergence: a principal component analysis for soybean traits

被引:1
|
作者
de Souza, Rafael Rodrigues [1 ,3 ]
Cargnelutti Filho, Alberto [1 ]
Toebe, Marcos [2 ]
Bittencourt, Karina Chertok [2 ]
机构
[1] Fed Univ Santa Maria UFSM, Dept Plant Sci, Santa Maria, RS, Brazil
[2] Fed Univ Santa Maria UFSM, Dept Agron & Environm Sci, Freder Westphalen, RS, Brazil
[3] Ave Roraima 1000, BR-97105900 Santa Maria, RS, Brazil
关键词
bootstrap; eigenvalues; Glycine max; multivariate analysis; resampling; VARIABLES; POWER;
D O I
10.1016/j.eja.2023.126903
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
Biometric techniques, including the principal component analysis, are commonly applied in soybean genetic divergence studies. However, the sample size used in such studies is often determined empirically, neglecting its potential impact on inference interpretation. Therefore, this study aimed (i) to analyze the response of principal components to the number of plants sampled per experimental unit (plot); (ii) to determine the multivariate representative sample size, and (iii) to construct a methodology to predict sample size for principal components as a function of the precision level defined a priori. Six experiments were performed in two locations in Rio Grande do Sul, Brazil, with three experiments being carried out in each location. All experiments were conducted using a complete randomized block design with three repetitions, and 20 soybean genotypes were utilized, resulting in 360 plots (60 plots per experiment). From each plot, twenty plants were sampled, totaling 7200 plants. A resampling bootstrap procedure was applied to the principal component technique for 10 biometric traits. Posteriorly, the sample size was defined based on predefined precision levels, and power logistic models were parametrized to predict the sample size per experimental unit. The precision of the eigenvalues obtained from the principal component analysis gradually improves with larger sample sizes. Eigenvalues that capture a higher variance tend to require smaller sample sizes for accurate estimation. The fitted models demonstrated satisfactory predictive ability in determining the optimal number of plants per experimental unit, serving as a complementary tool for defining sample size at the desired precision level. Eighteen plants per experimental unit are enough to estimate the eigenvalues of the first two soybean principal components reliably. The developed predictive methodology and sample dimensioning per experimental unit can support future research aimed at identifying divergent genotypes, making them useful tools for soybean plant breeding programs.
引用
收藏
页数:11
相关论文
共 50 条
  • [41] Clustering by principal component analysis with Gaussian kernel in high-dimension, low-sample-size settings
    Nakayama, Yugo
    Yata, Kazuyoshi
    Aoshima, Makoto
    JOURNAL OF MULTIVARIATE ANALYSIS, 2021, 185
  • [42] Quality evaluation of frozen vegetable soybean based on principal component analysis
    Jiang, Xiao-Qing
    Song, Jiang-Feng
    Li, Da-Jing
    Liu, Chun-Quan
    Modern Food Science and Technology, 2013, 29 (08) : 2020 - 2024
  • [43] Genetic diversity of Syagrus coronata and principal component analysis of phenotypic traits: a palm from the brazilian semiarid biome
    Geís Ferreira Neves
    Sérgio Yoshimitsu Motoike
    Kacilda Naomi Kuki
    Sebastián Giraldo Montoya
    Cosme Damião Cruz
    Wassali Valadares de Sousa
    Biodiversity and Conservation, 2023, 32 : 4275 - 4293
  • [44] Genetic divergence analysis in Ailanthus excelsa based on morphological traits
    Kaushik, N.
    Vikram
    Chhabra, A. K.
    INDIAN JOURNAL OF AGRICULTURAL SCIENCES, 2017, 87 (02): : 173 - 178
  • [45] Principal Component and Structural Element Analysis Provide Insights into the Evolutionary Divergence of Conotoxins
    Kikuchi, Akira Kio V.
    Tayo, Lemmuel L.
    BIOLOGY-BASEL, 2023, 12 (01):
  • [46] Principal component analysis of performance test traits in Hungarian Sporthorse mares
    Posta, Janos
    Komlosi, Istvan
    Mihok, Sandor
    ARCHIV FUR TIERZUCHT-ARCHIVES OF ANIMAL BREEDING, 2007, 50 (02): : 125 - 135
  • [47] Principal component and clustering analysis of functional traits in Swiss dairy cattle
    Karacaoeren, Burak
    Kadarmideen, Haja N.
    TURKISH JOURNAL OF VETERINARY & ANIMAL SCIENCES, 2008, 32 (03): : 163 - 171
  • [48] Principal Component Analysis of morphological traits of synthetic White Leghorn chicken
    Dalal, D. S.
    Ratwan, Poonam
    Malik, B. S.
    Patil, C. S.
    Kumar, Manoj
    INDIAN JOURNAL OF ANIMAL SCIENCES, 2020, 90 (11): : 1551 - 1555
  • [49] Principal Component and Linkage Analysis of Cardiovascular Risk Traits in the Norfolk Isolate
    Cox, Hannah C.
    Bellis, Claire
    Lea, Rod A.
    Quinlan, Sharon
    Hughes, Roger
    Dyer, Thomas
    Charlesworth, Jac
    Blangero, John
    Griffiths, Lyn R.
    HUMAN HEREDITY, 2009, 68 (01) : 55 - 64
  • [50] Identification of informative performance traits in swine using principal component analysis
    Barbosa, L
    Lopes, PS
    Regazzi, AJ
    Guimaraes, SEF
    Torres, RA
    ARQUIVO BRASILEIRO DE MEDICINA VETERINARIA E ZOOTECNIA, 2005, 57 (06) : 805 - 810