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方差分量估计对肉牛生长和繁殖相关性状基因组预测的影响。

Influence of variance component estimates on genomic predictions for growth and reproductive-related traits in Nellore cattle.

作者信息

Cardona-Cifuentes Daniel, Neira Juan Diego Rodriguez, Albuquerque Lucia G, Espigolan Rafael, Gonzalez-Herrera Luis Gabriel, Amorim Sabrina Thaise, López-Correa Rodrigo D, Aguilar Ignacio, Baldi Fernando

机构信息

Departamento de Zootecnia, Faculdade de Ciências Agrarias e Veterinárias, Universidade Estadual Paulista (UNESP), Jaboticabal, SP, Brazil.

Facultad de Ciencias Agrarias, Fundación Universitaria Agraria de Colombia-UNIAGRARIA, Bogotá, Colombia.

出版信息

J Anim Breed Genet. 2025 May;142(3):263-276. doi: 10.1111/jbg.12900. Epub 2024 Sep 18.

Abstract

This study aimed to estimate variance components (VCs) for growth and reproductive traits in Nellore cattle using two relationship matrices (pedigree relationship A matrix and pedigree plus genomic relationship H matrix), and records collected before and after genomic selection (GS) implementation. The study also evaluated how genomic breeding values (GEBV) are affected by variance components and discarding old records. The analysed traits were weight at 120 days (W120), weight and scrotal circumference at 450 days (W450 and SC450, respectively). Three datasets were used to estimate VCs, including all phenotypic information (All) or records for animals born before or after GS implementation (Before or After datasets, respectively). Both relationship matrices were considered for VC estimation, the A matrix was used in all three datasets and VC from each combination were named as A_Before, A_After, and A_All). The H was used in two datasets: H_All and H_After. Different VCs were used for GEBV prediction through ssGBLUP. This step used two possible Datasets, using all available phenotypic data (Dataset 1) or just records collected since GS implementation (Dataset 2). Validation was conducted using accuracy, bias and dispersion according to the LR method and prediction accuracy from corrected phenotypes. The heritability of all traits increased from A_Before to A_After, while estimates for A_All were intermediary. In the previous order, the estimates were 0.16, 0.17, and 0.15 for W120; 0.31, 0.39, and 0.35 for W450; 0.35, 0.47, and 0.41 for SC. For W450 and SC, using the H matrix reduced the heritability (0.33 and 0.32 for W450; 0.41 and 0.38 for SC for H_After and H_All, respectively). For W120, Dataset1 and VCs from A_After showed the highest accuracy for direct and maternal GEBV (0.953 and 0.868). For W450, Dataset 1 and VC from H_After allowed the highest accuracy (0.854) but use Dataset 2 and same VC source yield similar value (0.846). For SC, Dataset 2 with VC from H_After showed the highest accuracy (0.925). To use Dataset 2 does not cause important changes in bias or dispersion with respect to Dataset 1. The VC and genetic parameters changed for W120, W450, and SC450, using records before or after the GS implementation. For W450 and SC450, genetic variance and heritability estimates increased with the use of GS. For W120, genomic predictions were more accurate using A for VC estimation. Accuracy gains were observed for W450 and SC450 using H in VC estimation and/or discarding records before GS. It is possible to discard phenotypic records before GS implementation without generating bias or dispersion in the GEBV of young candidates.

摘要

本研究旨在利用两种亲缘关系矩阵(系谱亲缘关系A矩阵和系谱加基因组亲缘关系H矩阵)以及在基因组选择(GS)实施前后收集的记录,估计内洛尔牛生长和繁殖性状的方差分量(VCs)。该研究还评估了基因组育种值(GEBV)如何受到方差分量和剔除旧记录的影响。分析的性状包括120日龄体重(W120)、450日龄体重和阴囊周长(分别为W450和SC450)。使用了三个数据集来估计VCs,包括所有表型信息(全部)或GS实施前或后出生动物的记录(分别为之前或之后数据集)。在VC估计中考虑了两种亲缘关系矩阵,A矩阵用于所有三个数据集,每种组合的VC分别命名为A_之前、A_之后和A_全部)。H矩阵用于两个数据集:H_全部和H_之后。通过ssGBLUP使用不同的VCs进行GEBV预测。这一步使用了两个可能的数据集,使用所有可用表型数据(数据集1)或仅使用GS实施后收集的记录(数据集2)。根据LR方法以及校正表型的预测准确性,使用准确性、偏差和离散度进行验证。所有性状的遗传力从A_之前到A_之后均有所增加,而A_全部的估计值处于中间水平。按上述顺序,W120的估计值分别为0.16、0.17和0.15;W450的估计值分别为0.31、0.39和0.35;SC的估计值分别为0.

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