山羊生长性状遗传参数估计的随机回归与有限维模型的比较。

IF 1.7 3区 农林科学 Q2 AGRICULTURE, DAIRY & ANIMAL SCIENCE
Zeleke Tesema, Belay Derbie, Tesfaye Getachew, Selam Meseret, Solomon Gizaw
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引用次数: 0

摘要

比较了随机回归模型与有限维模型(单变量和多变量动物模型)在山羊生长性状遗传参数估计中的应用。采用875只动物从出生到一岁的2888条体重记录。所有模型除固定效应外,还包括直接加性遗传效应和母系遗传效应作为随机效应。随机回归模型(RRM)采用不同阶(1 ~ 3阶)的Legendre多项式进行拟合,同时考虑齐次和异质性残差方差。对于两种随机效应,最佳拟合RRM具有三阶多项式。在有限维模型下,RRM的直接遗传力为0.00±0.08 ~ 0.36±0.10。与多变量(MUV)和单变量(UNI)分析相比,RRM分析的遗传力和遗传相关性估计的标准误差更低。同样,通过RRM获得的育种价值估计具有较高的准确性和可靠性,而MUV和UNI动物模型的准确性分别为中等和中低。基于标准误差、准确性和估计的可靠性,RRM似乎是山羊生长性状遗传评估的通用方法。然而,根据信息准则值,MUV动物模型是最佳拟合模型。因此,对于小而不经常测量的数据集,多变量动物模型似乎是好的。对大型和频繁测量的体重数据集的进一步研究可能有助于确保随机回归的适用性,并将其与有限维模型区分开来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Random regression in comparison with finite-dimensional models for estimation of genetic parameters for growth traits in goats.

The application of the random regression model in comparison with finite-dimensional models (univariate and multivariate animal models) for genetic parameter estimation of growth traits in goats was evaluated in this study. A total of 2888 body weight records from 875 animals, recorded from birth to yearling age were used. All models included direct additive genetic and maternal genetic effects as a random effect in addition to fixed effects. Random regression model (RRM) was fitted with different orders (1st - 3rd) of Legendre polynomials and accounted for both homogeneous and heterogeneous residual variance. The best-fitting RRM had a polynomial of three orders for both random effects. The direct heritability estimate obtained via RRM was moderate to high, while it varied from 0.00 ± 0.08 to 0.36 ± 0.10 in finite dimensional models. A lower standard error of heritability and genetic correlation estimates was observed with RRM compared to multivariate (MUV) and univariate (UNI) analysis. Likewise, high accuracy and reliability of breeding value estimates are obtained via RRM, whereas the accuracy for MUV and UNI animal models were moderate and low to moderate, respectively. Based on standard errors, accuracy, and reliability of estimates, RRM seems versatile for genetic evaluation of growth traits of goats. However, the MUV animal model is the best-fitting model, according to the information criteria values. Thus, for small and less frequently measured data set, multivariate animal model seems good. Further studies with large and frequently measured body weight data sets may help ensure random regression's applicability and differentiate it from finite-dimensional models.

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来源期刊
Tropical animal health and production
Tropical animal health and production 农林科学-兽医学
CiteScore
3.40
自引率
11.80%
发文量
361
审稿时长
6-12 weeks
期刊介绍: Tropical Animal Health and Production is an international journal publishing the results of original research in any field of animal health, welfare, and production with the aim of improving health and productivity of livestock, and better utilisation of animal resources, including wildlife in tropical, subtropical and similar agro-ecological environments.
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