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Modelling lactation curves of dairy goats by fitting random regression models using Legendre polynomials or B-splines

机译:使用Legendre多项式或B样条拟合随机回归模型乳制山羊的哺乳曲线

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摘要

A total of 17 356 test-day milk yield (TDMY) records from 642 first lactations of Alpine goats were used to model variations in lactation curve using random regression models (RRM). Orthogonal Legendre polynomials and B-splines were evaluated to obtain adequate and parsimonious models for the estimation of genetic parameters. The analysis was performed using a single-trait RRM, including the additive genetic, permanent environmental, and residual effects. We estimated the mean trend of milk yield, and the additive genetic and permanent environmental covariance functions through random regression using different orders of orthogonal Legendre polynomial (three to six) and B-spline functions (linear, quadratic, and cubic, with three to six knots). This study further evaluated different number of classes of residual variances. The covariance components and the genetic parameters were estimated using the restricted maximum likelihood method. Heritability estimates presented similar trends for both functions. The RRM with a higher number of parameters better described the genetic variation of TDMY throughout the lactation. The most suitable RRM for genetic evaluation of TDMY of Alpine goats is a quadratic B-spline function with six knots, for the mean trend, curves of additive genetic and permanent environmental effects, and five classes of residual variance.
机译:总共1756个测试日牛奶产量(TDMY)记录从642的阿尔卑斯山羊的第一个泌乳的记录用于使用随机回归模型(RRM)来模拟哺乳曲线的变化。评价正交的legendre多项式和B样曲面,以获得遗传参数的足够和令人置的模型。使用单一特征RRM进行分析,包括添加剂遗传,永久性环境和残留效果。我们估计牛奶产量的平均趋势,以及使用不同令人生断的正交图例多项式(三到六)和B样曲线函数(线性,二次和立方,三到六个结)。本研究进一步评估了不同数量的残留差异。使用受限制的最大似然法估计协方差组分和遗传参数。遗传性估计呈现了两种功能的类似趋势。具有较高数量的参数的RRM更好地描述了整个哺乳期间TDMY的遗传变化。最合适的高原山羊遗传评价的RRM是一种二次B样条函数,具有六节,用于平均趋势,添加剂遗传和永久环境影响的曲线,以及五种残留方差。

著录项

  • 来源
    《Canadian Journal of Animal Science》 |2018年第1期|共11页
  • 作者单位

    Centre for Genetic Improvement of Livestock Department of Animal Biosciences University of Guelph Guelph ON N1G 2W1 Canada.;

    Departamento de Zootecnia e Extens?o Rural Universidade Federal de Mato Grosso Cuiabá MT 78060-900 Brazil.;

    Centre for Genetic Improvement of Livestock Department of Animal Biosciences University of Guelph Guelph ON N1G 2W1 Canada.;

    Departamento de Zootecnia Universidade Federal de Vi?osa Vi?osa MG 36570-000 Brazil.;

    Departamento de Zootecnia Universidade Federal de Vi?osa Vi?osa MG 36570-000 Brazil.;

    Departamento de Zootecnia Universidade Federal de Vi?osa Vi?osa MG 36570-000 Brazil.;

    Embrapa Gado de Corte Campo Grande MS 79106-550 Brazil.;

    Instituto de Zootecnia Universidade Federal Rural do Rio de Janeiro Seropédica RJ 23890-000 Brazil.;

    Departamento de Zootecnia Universidade Federal de Vi?osa Vi?osa MG 36570-000 Brazil.;

    Departamento de Zootecnia Universidade Federal de Vi?osa Vi?osa MG 36570-000 Brazil.;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 other
  • 中图分类 动物学;
  • 关键词

    genetic evaluation; Alpine; milk yield; test day; segmented polynomials;

    机译:遗传评价;高山;牛奶产量;测试日;分段多项式;

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