Genomic analysis of cow mortality and milk production using a threshold-linear model

被引:12
作者
Tsuruta, S. [1 ]
Lourenco, D. A. L. [1 ]
Misztal, I. [1 ]
Lawlor, T. J. [2 ]
机构
[1] Univ Georgia, Anim & Dairy Sci Dept, Athens, GA 30602 USA
[2] Holstein Assoc USA Inc, Brattleboro, VT 05301 USA
关键词
cow mortality; estimated breeding value reliability; genomic data; US Holstein; GENETIC EVALUATION; DGAT1; GENE; IMPROVEMENT; YIELD; PREDICTION; TRAITS; RATES; QTL;
D O I
10.3168/jds.2017-12665
中图分类号
S8 [畜牧、 动物医学、狩猎、蚕、蜂];
学科分类号
0905 ;
摘要
The objective of this study was to investigate the feasibility of genomic evaluation for cow mortality and milk production using a single-step methodology. Genomic relationships between cow mortality and milk production were also analyzed. Data included 883,887 (866,700) first-parity, 733,904 (711,211) second-parity, and 516,256 (492,026) third-parity records on cow mortality (305-d milk yields) of Holsteins from Northeast states in the United States. The pedigree consisted of up to 1,690,481 animals including 34,481 bulls genotyped with 36,951 SNP markers. Analyses were conducted with a bivariate threshold-linear model for each parity separately. Genomic information was incorporated as a genomic relationship matrix in the single-step BLUP. Traditional and genomic estimated breeding values (GEBV) were obtained with Gibbs sampling using fixed variances, whereas reliabilities were calculated from variances of GEBV samples. Genomic EBV were then converted into single nucleotide polymorphism (SNP) marker effects. Those SNP effects were categorized according to values corresponding to 1 to 4 standard deviations. Moving averages and variances of SNP effects were calculated for windows of 30 adjacent SNP, and Manhattan plots were created for SNP variances with the same window size. Using Gibbs sampling, the reliability for genotyped bulls for cow mortality was 28 to 30% in EBV and 70 to 72% in GEBV. The reliability for genotyped bulls for 305-d milk yields was 53 to 65% to 81 to 85% in GEBV. Correlations of SNP effects between mortality and 305-d milk yields within categories were the highest with the largest SNP effects and reached >0.7 at 4 standard deviations. All SNP regions explained less than 0.6% of the genetic variance for both traits, except regions close to the DGAT1 gene, which explained up to 2.5% for cow mortality and 4% for 305-d milk yields. Reliability for GEBV with a moderate number of genotyped animals can be calculated by Gibbs samples. Genomic information can greatly increase the reliability of predictions not only for milk but also for mortality. The existence of a common region on Bos taurus autosome 14 affecting both traits may indicate a major gene with a pleiotropic effect on milk and mortality.
引用
收藏
页码:7295 / 7305
页数:11
相关论文
共 37 条
[1]   Hot topic: A unified approach to utilize phenotypic, full pedigree, and genomic information for genetic evaluation of Holstein final score [J].
Aguilar, I. ;
Misztal, I. ;
Johnson, D. L. ;
Legarra, A. ;
Tsuruta, S. ;
Lawlor, T. J. .
JOURNAL OF DAIRY SCIENCE, 2010, 93 (02) :743-752
[2]  
Aguilar I, 2014, 10 WORLD C GENETICS
[3]   Herd-level risk factors associated with cow mortality in Swedish dairy herds [J].
Alvasen, K. ;
Mork, M. Jansson ;
Sandgren, C. Hallen ;
Thomsen, P. T. ;
Emanuelson, U. .
JOURNAL OF DAIRY SCIENCE, 2012, 95 (08) :4352-4362
[4]   Detection of quantitative trait loci affecting milk production, health, and reproductive traits in Holstein cattle [J].
Ashwell, MS ;
Heyen, DW ;
Sonstegard, TS ;
Van Tassell, CP ;
Da, Y ;
VanRaden, PM ;
Ron, M ;
Weller, JI ;
Lewin, HA .
JOURNAL OF DAIRY SCIENCE, 2004, 87 (02) :468-475
[5]  
Berry DP, 2010, IRISH J AGR FOOD RES, V49, P1
[6]   Distribution and location of genetic effects for dairy traits [J].
Cole, J. B. ;
VanRaden, P. M. ;
O'Connell, J. R. ;
Van Tassell, C. P. ;
Sonstegard, T. S. ;
Schnabel, R. D. ;
Taylor, J. F. ;
Wiggans, G. R. .
JOURNAL OF DAIRY SCIENCE, 2009, 92 (06) :2931-2946
[7]  
Council on Dairy Cattle Breeding, 2016, COMP DEC 2016 GEN TR
[8]  
Council on Dairy Cattle Breeding, 2016, CHANG EV SYST AUG 20
[9]   Mortality, Culling by Sixty Days in Milk, and Production Profiles in High- and Low-Survival Pennsylvania Herds [J].
Dechow, C. D. ;
Goodling, R. C. .
JOURNAL OF DAIRY SCIENCE, 2008, 91 (12) :4630-4639
[10]  
Falconer D. S., 1989, Introduction to quantitative genetics.