The effect of using cow genomic information on accuracy and bias of genomic breeding values in a simulated Holstein dairy cattle population

被引:9
作者
Dehnavi, E. [1 ,2 ]
Mahyari, S. Ansari [1 ]
Schenkel, F. S. [2 ]
Sargolzaei, M. [2 ,3 ]
机构
[1] Isfahan Univ Technol, Coll Agr, Dept Anim Sci, Esfahan 8415683111, Iran
[2] Univ Guelph, Ctr Genet Improvement Livestock, Dept Anim Biosci, Guelph, ON N1G 2W1, Canada
[3] Semex Alliance, Guelph, ON N1H 6J2, Canada
关键词
prediction accuracy; cow genomic data; preferential treatment; regression coefficient; PREFERENTIAL TREATMENT; SELECTION; PREDICTION; PROGRAMS; FEMALES; TRAITS; RECOMBINATION; INTERFERENCE; STRATEGIES; PARAMETERS;
D O I
10.3168/jds.2017-12999
中图分类号
S8 [畜牧、 动物医学、狩猎、蚕、蜂];
学科分类号
0905 ;
摘要
Using cow data in the training population is attractive as a way to mitigate bias due to highly selected training bulls and to implement genomic selection for countries with no or limited proven bull data. However, one potential issue with cow data is a bias due to the preferential treatment. The objectives of this study were to (1) investigate the effect of including cow genotype and phenotype data into the training population on accuracy and bias of genomic predictions and (2) assess the effect of preferential treatment for different proportions of elite cows. First, a 4-pathway Holstein dairy cattle population was simulated for 2 traits with low (0.05) and moderate (0.3) heritability. Then different numbers of cows (0, 2,500, 5,000, 10,000, 15,000, or 20,000) were randomly selected and added to the training group composed of different numbers of top bulls (0, 2,500, 5,000, 10,000, or 15,000). Reliability levels of de-regressed estimated breeding values for training cows and bulls were 30 and 75% for traits with low heritability and were 60 and 90% for traits with moderate heritability, respectively. Preferential treatment was simulated by introducing upward bias equal to 35% of phenotypic variance to 5, 10, and 20% of elite bull dams in each scenario. Two different validation data sets were considered: (1) all animals in the last generation of both elite and commercial tiers (n = 42,000) and (2) only animals in the last generation of the elite tier (n = 12,000). Adding cow data into the training population led to an increase in accuracy (r) and decrease in bias of genornic predictions in all considered scenarios without preferential treatment. The gain in r was higher for the low heritable trait (from 0.004 to 0.166 r points) compared with the moderate heritable trait (from 0.004 to 0.116 r points). The gain in accuracy in scenarios with a lower number of training bulls was relatively higher (from 0.093 to 0.166 r points) than with a higher number of training bulls (from 0.004 to 0.09 r points). In this study, as expected, the bull-only reference population resulted in higher accuracy compared with the cow-only reference population of the same size. However, the cow reference population might be an option for countries with a small-scale progeny testing scheme or for minor breeds in large counties, and for traits measured only on a small fraction of the population. The inclusion of preferential treatment to 5 to 20% of the elite cows led to an adverse effect on both accuracy and bias of predictions. When preferential treatment was present, random selection of cows did not reduce the effect of preferential treatment.
引用
收藏
页码:5166 / 5176
页数:11
相关论文
共 40 条
[1]   A high density linkage map of the bovine genome [J].
Arias, Juan A. ;
Keehan, Mike ;
Fisher, Paul ;
Coppieters, Wouter ;
Spelman, Richard .
BMC GENETICS, 2009, 10
[2]  
Bapst B., 2013, Interbull Bulletin, P187
[3]   Characteristics of linkage disequilibrium in North American Holsteins [J].
Bohmanova, Jarmila ;
Sargolzaei, Mehdi ;
Schenkel, Flavio S. .
BMC GENOMICS, 2010, 11
[4]   Validation of simultaneous deregression of cow and bull breeding values and derivation of appropriate weights [J].
Calus, M. P. L. ;
Vandenplas, J. ;
ten Napel, J. ;
Veerkamp, R. F. .
JOURNAL OF DAIRY SCIENCE, 2016, 99 (08) :6403-6419
[5]   Using genomics to enhance selection of novel traits in North American dairy cattle [J].
Chesnais, J. P. ;
Cooper, T. A. ;
Wiggans, G. R. ;
Sargolzaei, M. ;
Pryce, J. E. ;
Miglior, F. .
JOURNAL OF DAIRY SCIENCE, 2016, 99 (03) :2413-2427
[6]   Inclusion of cow records in genomic evaluations and impact on bias due to preferential treatment [J].
Dassonneville, Romain ;
Baur, Aurelia ;
Fritz, Sebastien ;
Boichard, Didier ;
Ducrocq, Vincent .
GENETICS SELECTION EVOLUTION, 2012, 44
[7]   Accuracy of genomic prediction for milk production traits in the Chinese Holstein population using a reference population consisting of cows [J].
Ding, X. ;
Zhang, Z. ;
Li, X. ;
Wang, S. ;
Wu, X. ;
Sun, D. ;
Yu, Y. ;
Liu, J. ;
Wang, Y. ;
Zhang, Y. ;
Zhang, S. ;
Zhang, Y. ;
Zhang, Q. .
JOURNAL OF DAIRY SCIENCE, 2013, 96 (08) :5315-5323
[8]   Short communication:e The effect of genotyping cows to improve the reliability of genomic predictions for selection candidates [J].
Edel, C. ;
Pimentel, E. C. G. ;
Plieschke, L. ;
Emmerling, R. ;
Goetz, K. -U. .
JOURNAL OF DAIRY SCIENCE, 2016, 99 (03) :1999-2004
[9]   Including different groups of genotyped females for genomic prediction in a Nordic Jersey population [J].
Gao, H. ;
Madsen, P. ;
Nielsen, U. S. ;
Aamand, G. P. ;
Su, G. ;
Byskov, K. ;
Jensen, J. .
JOURNAL OF DAIRY SCIENCE, 2015, 98 (12) :9051-9059
[10]  
Goddard M. E., 2012, P 38 ICAR C CORK IR