Title : ( Genetic analyses of partial egg production in Japanese quail using multi-trait random regression models )
Authors: keyvan karami , Saeed Zerehdaran , behshad barzanooni , E. Lotfi ,Access to full-text not allowed by authors
Abstract
1. The aim of the present study was to estimate genetic parameters for average egg weight (EW) and egg number (EN) at different ages in Japanese quail using multi-trait random regression (MTRR) models. 2. A total of 8534 records from 900 quail, hatched between 2014 and 2015, were used in the study. Average weekly egg weights and egg numbers were measured from second until sixth week of egg production. 3. Nine random regression models were compared to identify the best order of the Legendre polynomials (LP). The most optimal model was identified by the Bayesian Information Criterion. A model with second order of LP for fixed effects, second order of LP for additive genetic effects and third order of LP for permanent environmental effects (MTRR23) was found to be the best. 4. According to the MTRR23 model, direct heritability for EW increased from 0.26 in the second week to 0.53 in the sixth week of egg production, whereas the ratio of permanent environment to phenotypic variance decreased from 0.48 to 0.1. Direct heritability for EN was low, whereas the ratio of permanent environment to phenotypic variance decreased from 0.57 to 0.15 during the production period. 5. For each trait, estimated genetic correlations among weeks of egg production were high (from 0.85 to 0.98). Genetic correlations between EW and EN were low and negative for the first two weeks, but they were low and positive for the rest of the egg production period. 6. In conclusion, random regression models can be used effectively for analysing egg production traits in Japanese quail. Response to selection for increased egg weight would be higher at older ages because of its higher heritability and such a breeding program would have no negative genetic impact on egg production.
Keywords
Egg number; egg weight; genetic parameters; Japanese quail; random regression@article{paperid:1065384,
author = {Karami, Keyvan and Zerehdaran, Saeed and Barzanooni, Behshad and E. Lotfi},
title = {Genetic analyses of partial egg production in Japanese quail using multi-trait random regression models},
journal = {British Poultry Science},
year = {2017},
volume = {58},
number = {6},
month = {September},
issn = {0007-1668},
pages = {624--628},
numpages = {4},
keywords = {Egg number; egg weight;
genetic parameters;
Japanese quail; random
regression},
}
%0 Journal Article
%T Genetic analyses of partial egg production in Japanese quail using multi-trait random regression models
%A Karami, Keyvan
%A Zerehdaran, Saeed
%A Barzanooni, Behshad
%A E. Lotfi
%J British Poultry Science
%@ 0007-1668
%D 2017