Hostname: page-component-cd9895bd7-hc48f Total loading time: 0 Render date: 2024-12-26T13:08:27.245Z Has data issue: false hasContentIssue false

Autoregressive repeatability model for genetic evaluation of longitudinal reproductive traits in dairy cattle

Published online by Cambridge University Press:  21 January 2020

Hugo T. Silva
Affiliation:
Department of Animal Science, Federal University of Viçosa, Viçosa36570-000, Brazil
Paulo S. Lopes
Affiliation:
Department of Animal Science, Federal University of Viçosa, Viçosa36570-000, Brazil
Claudio N. Costa
Affiliation:
Embrapa Dairy Cattle, Juiz de Fora36.038-330, Brazil
Fabyano F. Silva
Affiliation:
Department of Animal Science, Federal University of Viçosa, Viçosa36570-000, Brazil
Delvan A. Silva
Affiliation:
Department of Animal Science, Federal University of Viçosa, Viçosa36570-000, Brazil
Alessandra A. Silva
Affiliation:
Department of Animal Science, Federal University of Viçosa, Viçosa36570-000, Brazil
Gertrude Thompson
Affiliation:
Research Center in Biodiversity and Genetic Resources (CIBIO-InBio), University of Porto, Vairão4485-661, Portugal Institute of Biomedical Sciences Abel Salazar (ICBAS), University of Porto, Porto4050-313, Portugal
Júlio Carvalheira*
Affiliation:
Research Center in Biodiversity and Genetic Resources (CIBIO-InBio), University of Porto, Vairão4485-661, Portugal Institute of Biomedical Sciences Abel Salazar (ICBAS), University of Porto, Porto4050-313, Portugal
*
Author for correspondence: Júlio Carvalheira, Email: [email protected]

Abstract

We investigated the efficiency of the autoregressive repeatability model (AR) for genetic evaluation of longitudinal reproductive traits in Portuguese Holstein cattle and compared the results with those from the conventional repeatability model (REP). The data set comprised records taken during the first four calving orders, corresponding to a total of 416, 766, 872 and 766 thousand records for interval between calving to first service, days open, calving interval and daughter pregnancy rate, respectively. Both models included fixed (month and age classes associated to each calving order) and random (herd-year-season, animal and permanent environmental) effects. For AR model, a first-order autoregressive (co)variance structure was fitted for the herd-year-season and permanent environmental effects. The AR outperformed the REP model, with lower Akaike Information Criteria, lower Mean Square Error and Akaike Weights close to unity. Rank correlations between estimated breeding values (EBV) with AR and REP models ranged from 0.95 to 0.97 for all studied reproductive traits, when the total bulls were considered. When considering only the top-100 selected bulls, the rank correlation ranged from 0.72 to 0.88. These results indicate that the re-ranking observed at the top level will provide more opportunities for selecting the best bulls. The EBV reliabilities provided by AR model was larger for all traits, but the magnitudes of the annual genetic progress were similar between two models. Overall, the proposed AR model was suitable for genetic evaluations of longitudinal reproductive traits in dairy cattle, outperforming the REP model.

Type
Research Article
Copyright
Copyright © Hannah Dairy Research Foundation 2020

Access options

Get access to the full version of this content by using one of the access options below. (Log in options will check for institutional or personal access. Content may require purchase if you do not have access.)

References

Averill, T, Rekaya, R and Weigel, K (2006) Random regression models for male and female fertility evaluation using longitudinal binary data. Journal of Dairy Science 89, 36813689.Google ScholarPubMed
Berry, DP, Wall, E and Pryce, JE (2014) Genetics and genomics of reproductive performance in dairy and beef cattle. Animal: An International Journal of Animal Bioscience 8, 105121.Google ScholarPubMed
Burnham, KP and Anderson, DR (2004) Multimodel inference: understanding AIC and BIC in model selection. Sociological Methods & Research 33, 261304.Google Scholar
Carvalheira, JGV, Blake, RW, Pollak, EJ, Quaas, RL and Duran-Castro, CV (1998) Application of an autoregressive process to estimate genetic parameters and breeding values for daily milk yield in a tropical herd of Lucerna cattle and in United States Holstein herds. Journal of Dairy Science 81, 27382751.10.3168/jds.S0022-0302(98)75831-XGoogle Scholar
Carvalheira, J, Pollak, EJ, Quaas, RL and Blake, RW (2002) An autoregressive repeatability animal model for test-day records in multiple lactations. Journal of Dairy Science 85, 20402045.Google ScholarPubMed
Chegini, A, Hossein-Zadeh, NG, Moghaddam, SHH and Shadparvar, AA (2019) Appropriate selection indices for functional traits in dairy cattle breeding schemes. Journal of Dairy Research 86, 1318.Google ScholarPubMed
Chiumia, D, Chagunda, MG, Macrae, AI and Roberts, DJ (2013) Predisposing factors for involuntary culling in Holstein–Friesian dairy cows. Journal of Dairy Research 80, 4550.Google ScholarPubMed
Costa, CN, Carvalheira, J, Cobuci, JA, Freitas, AF and Thompson, G (2009) Estimation of genetic parameters of test day fat and protein yields in Brazilian Holstein cattle using an autoregressive multiple lactation animal model. South African Journal of Animal Science 39, 165168.Google Scholar
Frioni, N, Rovere, G, Aguilar, I and Urioste, JI (2017) Genetic parameters and correlations between days open and production traits across lactations in pasture based dairy production systems. Livestock Science 204, 104109.10.1016/j.livsci.2017.08.018Google Scholar
Gernand, E and König, S (2017) Genetic relationships among female fertility disorders, female fertility traits and productivity of Holstein dairy cows in the early lactation period. Journal of Animal Breeding and Genetics 134, 353363.Google ScholarPubMed
Ghiasi, H, Pakdel, A, Nejati-Javaremi, A, Mehrabani-Yeganeh, H, Honarvar, M, González-Recio, O, Carabaño, MJ and Alenda, R (2011) Genetic variance components for female fertility in Iranian Holstein cows. Livestock Science 139, 277280.Google Scholar
González-Recio, O, Pérez-Cabal, MA and Alenda, R (2004) Economic value of female fertility and its relationship with profit in Spanish dairy cattle. Journal of Dairy Science 87, 30533061.Google ScholarPubMed
Haile-Mariam, M, Bowman, PJ and Pryce, JE (2013) Genetic analyses of fertility and predictor traits in Holstein herds with low and high mean calving intervals and in Jersey herds. Journal of Dairy Science 96, 655667.10.3168/jds.2012-5671Google ScholarPubMed
Jorjani, H (2007) International genetic evaluation of female fertility traits in five major breeds. Interbull Bulletin 37, 144.Google Scholar
Kadarmideen, HN, Thompson, R, Coffey, MP and Kossaibati, MA (2003) Genetic parameters and evaluations from single-and multiple-trait analysis of dairy cow fertility and milk production. Livestock Production 81, 183195.Google Scholar
Nelder, JA and Mead, R (1965) A simplex method for function minimization. The Computer Journal 7, 308313.Google Scholar
Quaas, RL, Anderson, RD and Gilmour, AR (1984) BLUP School handbook. In K. Hammond (ed.), Use of Mixed Models for Prediction and for Estimation of (co) Variance Components. New South Wales, Australia: Animal Genetics and Breeding Unit, University of New England, pp. 176.Google Scholar
Sawalha, RM, Keown, JF, Kachman, SD and Van Vleck, LD (2005) Genetic evaluation of dairy cattle with test-day models with autoregressive covariance structures and with a 305-d model. Journal of Dairy Science 88, 33463353.Google ScholarPubMed
Sewalem, A, Kistemaker, GJ and Miglior, F (2010) Relationship between female fertility and production traits in Canadian Holsteins. Journal of Dairy Science 93, 44274434.Google ScholarPubMed
Silva, AA, Silva, DA, Silva, FF, Costa, CN, Lopes, PS, Caetano, AR, Thompson, G and Carvalheira, J (2019a) Autoregressive single-step test-day model for genomic evaluations of Portuguese Holstein cattle. Journal of Dairy Science 102, 63306339.10.3168/jds.2018-15191Google Scholar
Silva, DA, Costa, CN, Silva, AA, Silva, FF, Lopes, PS, Santos, GG, Thompson, G and Carvalheira, J (2019b) Unknown parent and contemporary groups for genetic evaluation of Brazilian Holstein using autoregressive test-day models. Livestock Science 220, 17.Google Scholar
Smith, SP and Graser, HU (1986) Estimating variance components in a class of mixed models by restricted maximum likelihood. Journal of Dairy Science 69, 11561165.10.3168/jds.S0022-0302(86)80516-1Google Scholar
Stevenson, JS and Britt, JH (2017) A 100-year review: practical female reproductive management. Journal of Dairy Science 100, 1029210313.Google ScholarPubMed
Sun, C, Madsen, P, Lund, MS, Zhang, Y, Nielsen, US and Su, G (2010) Improvement in genetic evaluation of female fertility in dairy cattle using multiple-trait models including milk production traits. Journal of Animal Science 88, 871878.10.2527/jas.2009-1912Google ScholarPubMed
Tiezzi, F, Maltecca, C, Cecchinato, A, Penasa, M and Bittante, G (2012) Genetic parameters for fertility of dairy heifers and cows at different parities and relationships with production traits in first lactation. Journal of Dairy Science 95, 73557362.Google ScholarPubMed
VanRaden, PM, Sanders, AH, Tooker, ME, Miller, RH, Norman, HD, Kuhn, MT and Wiggans, GR (2004) Development of a national genetic evaluation for cow fertility. Journal of Dairy Science 87, 22852292.10.3168/jds.S0022-0302(04)70049-1Google ScholarPubMed
Supplementary material: PDF

Silva et al. supplementary material

Tables S1 and S2

Download Silva et al. supplementary material(PDF)
PDF 199.1 KB