Department of Animal Breeding and Genetics, Faculty of Animal Production and Technology, University of Veterinary and Animal Sciences, Pattoki, 55300, Punjab, Pakistan.
School of Agriculture and Food Sciences, Department of Animal Sciences, Njala Univeristy, Njala, Sierra Leone.
Trop Anim Health Prod. 2024 Nov 23;56(9):390. doi: 10.1007/s11250-024-04231-4.
The current study aimed to construct the growth curve and find the best-fitting non-linear model for the Nili-Ravi buffalo calves. The pedigree and monthly body weight data for 6644 calves born between 2010 and 2020 (inclusive) in six herds, maintained in different geographical regions of Punjab were collected. The study was performed under a longitudinal design and various non-linear models were used to associate the age with weight by using the easyreg package in R studio. Finally, the genetic parameters of growth curve were estimated through the bi-variate sire model in ASReml (v4.2). The model with the highest value of coefficient of determination and the lowest values of Akaike's information criterion, Bayesian information criterion, and root-mean-square error was considered as the best fit for defining the growth curve. The Brody model was found as the best fitted model with the values of 0.6648, 627871.80, 627908.10, and 30.793 for the Radj, AIC, BIC, & RMSE respectively, for the combined dataset. The values of growth curve parameters for the Brody model were 943.99 ± 101.38Kg (A), 0.96 ± 0.004Kg (B), and 0.0005 ± 0.00Kg (K) for all animals. A higher K-value of females indicates their early maturity compared with male animals in this breed. The heritability estimates for the growth curve traits were low, while the values of genetic correlations were higher than those of phenotypic correlations. The data revealed that Asymptotic weight (A) and birth weight (B) were positively correlated with each other, while the rate of maturity (K) was negatively correlated with initial and final body weights.
本研究旨在构建 Nili-Ravi 水牛犊牛的生长曲线并找到最佳的非线性模型。收集了 2010 年至 2020 年(包括)期间在旁遮普省不同地理区域的六个牛群中出生的 6644 头犊牛的谱系和每月体重数据。该研究采用纵向设计进行,使用 R 工作室中的 easyreg 包,通过各种非线性模型将年龄与体重相关联。最后,通过 ASReml(v4.2)中的双变量 sire 模型估计生长曲线的遗传参数。选择具有最高决定系数值、最低 Akaike 信息准则、贝叶斯信息准则和均方根误差值的模型作为生长曲线的最佳拟合模型。Brody 模型被认为是最佳拟合模型,其联合数据集的 Radj、AIC、BIC 和 RMSE 值分别为 0.6648、627871.80、627908.10 和 30.793。Brody 模型的生长曲线参数值为 943.99±101.38Kg(A)、0.96±0.004Kg(B)和 0.0005±0.00Kg(K)。对于该品种的雌性动物,较高的 K 值表明它们比雄性动物更早成熟。生长曲线性状的遗传力估计值较低,而遗传相关值高于表型相关值。数据表明,渐近体重(A)和初生体重(B)彼此正相关,而成熟率(K)与初始和最终体重呈负相关。