Up hill, down dale: quantitative genetics of curvaceous traits

被引:91
作者
Meyer, K [1 ]
Kirkpatrick, M
机构
[1] Univ New England, Anim Genet & Breeding Unit, Armidale, NSW 2351, Australia
[2] Univ Texas, Sect Integrat Biol, Austin, TX 78712 USA
关键词
function-valued traits; quantitive genetics; covariance function; random regression model;
D O I
10.1098/rstb.2005.1681
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
'Repeated' measurements for a trait and individual, taken along some continuous scale such as time, can be thought of as representing points on a curve, where both means and covariances along the trajectory can change, gradually and continually. Such traits are commonly referred to as 'function-valued' (FV) traits. This review shows that standard quantitative genetic concepts extend readily to FV traits, with individual statistics, such as estimated breeding values and selection response, replaced by corresponding curves, modelled by respective functions. Covariance functions are introduced as the FV equivalent to matrices of covariances. Considering the class of functions represented by a regression on the continuous covariable, FV traits can be analysed within the linear mixed model framework commonly employed in quantitative genetics, giving rise to the so-called random regression model. Estimation of covariance functions, either indirectly from estimated covariances or directly from the data using restricted maximum likelihood or Bayesian analysis, is considered. It is shown that direct estimation of the leading principal components of covariance functions is feasible and advantageous. Extensions to multidimensional analyses are discussed.
引用
收藏
页码:1443 / 1455
页数:13
相关论文
共 103 条
[31]  
HILL WG, 2002, 7 WORLD C GEN APPL L
[32]   Variance component estimation in animal breeding: a review [J].
Hofer, A .
JOURNAL OF ANIMAL BREEDING AND GENETICS, 1998, 115 (04) :247-265
[33]  
Huisman AE, 2002, J ANIM SCI, V80, P575
[34]  
Jaffrézic F, 2000, GENETICS, V156, P913
[35]   Principal component models for sparse functional data [J].
James, GM ;
Hastie, TJ ;
Sugar, CA .
BIOMETRIKA, 2000, 87 (03) :587-602
[36]   Comparison of two computing algorithms for solving mixed model equations for multiple trait random regression test day models [J].
Jamrozik, J ;
Schaeffer, LR .
LIVESTOCK PRODUCTION SCIENCE, 2000, 67 (1-2) :143-153
[37]   Approximate accuracies of prediction from random regression models [J].
Jamrozik, J ;
Schaeffer, LR ;
Jansen, GB .
LIVESTOCK PRODUCTION SCIENCE, 2000, 66 (01) :85-92
[38]   Estimates of genetic parameters for a test day model with random regressions for yield traits of first lactation Holsteins [J].
Jamrozik, J ;
Schaeffer, LR .
JOURNAL OF DAIRY SCIENCE, 1997, 80 (04) :762-770
[39]   Implementation issues for Markov Chain Monte Carlo methods in random regression test-day models [J].
Jamrozik, J .
JOURNAL OF ANIMAL BREEDING AND GENETICS, 2004, 121 (01) :1-13
[40]   Genetic evaluation of dairy cattle using test day yields and random regression model [J].
Jamrozik, J ;
Schaeffer, LR ;
Dekkers, JCM .
JOURNAL OF DAIRY SCIENCE, 1997, 80 (06) :1217-1226