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RESEARCH ARTICLE

Evaluating the ability of a lifetime nutrient-partitioning model for simulating the performance of Australian Holstein dairy cows

H. N. Phuong A G , N. C. Friggens C D , O. Martin C D , P. Blavy C D , B. J. Hayes A F , W. J. Wales E and J. E. Pryce A B
+ Author Affiliations
- Author Affiliations

A Department of Economic Development, Jobs, Transport and Resources, Agribio, 5 Ring Road, Bundoora, Vic. 3083, Australia.

B School of Applied Systems Biology, La Trobe University, Bundoora, Vic. 3083, Australia.

C INRA UMR 0791 Modélisation Systémique Appliquée aux Ruminants, 16 Rue Claude Bernard, Paris, France.

D AgroParisTech UMR 0791 Modélisation Systémique Appliquée aux Ruminants, 16 Rue Claude Bernard, Paris, France.

E Department of Economic Development, Jobs, Transport and Resources, Ellinbank, Vic. 3820, Australia.

F Queensland Alliance for Agriculture and Food Innovation, Centre for Animal Science, University of Queensland, Qld 4072, Australia.

G Corresponding author. Email: phuong.ho@ecodev.vic.gov.au

Animal Production Science 57(7) 1563-1568 https://doi.org/10.1071/AN16452
Submitted: 15 July 2016  Accepted: 12 April 2017   Published: 12 May 2017

Abstract

The present study determined the ability of a lifetime nutrient-partitioning model to simulate individual genetic potentials of Australian Holstein cows. The model was initially developed in France and has been shown to be able to accurately simulate performance of individual cows from various breeds. Generally, it assumes that the curves of cow performance differ only in terms of scaling, but the dynamic shape is universal. In other words, simulations of genetic variability in performance between cow genotypes can be performed using scaling parameters to simply scale the performance curves up or down. Validation of the model used performance data from 63 lactations of Australian Holstein cows offered lucerne cubes plus grain-based supplement. Individual cow records were used to derive genetic scaling parameters for each animal by calibrating the model to minimise root mean-square errors between observed and fitted values, cow by cow. The model was able to accurately fit the curves of bodyweight, milk fat concentration, milk protein concentration and milk lactose concentration with a high degree of accuracy (relative prediction errors <5%). Daily milk yield and weekly body condition score were satisfactorily predicted, although slight under-predictions of milk yield were identified during the last stage of lactation (relative prediction errors ≈11.1–15.6%). The prediction of feed intake was promising, with the value of relative prediction error of 18.1%. The results also suggest that the current recommendation of energy required for maintenance of pasture-based cows might be under-estimated. In conclusion, this model can be used to simulate genetic variability in the production potential of Australian cows. Thus, it can be used for simulation of consequences of future genetic-selection strategies on lifetime performance and efficiency of individual cows.

Additional keywords: genetic variability, model validation, production potential.


References

Baldwin RL, France J, Beever DE, Gill M, Thornley JHM (1987a) Metabolism of the lactating cow: III. Properties of mechanistic models suitable for evaluation of energetic relationships and factors involved in the partition of nutrients. The Journal of Dairy Research 54, 133–145.
Metabolism of the lactating cow: III. Properties of mechanistic models suitable for evaluation of energetic relationships and factors involved in the partition of nutrients.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DyaL2sXkvFWhsw%3D%3D&md5=f6fb72680d629500b08c07d28de17790CAS |

Baldwin RL, France J, Gill M (1987b) Metabolism of the lactating cow: I. Animal elements of a mechanistic model. The Journal of Dairy Research 54, 77–105.
Metabolism of the lactating cow: I. Animal elements of a mechanistic model.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DyaL2sXkslKitA%3D%3D&md5=60097a42c8c1306ddf42b7a9c4fece12CAS |

Berry DP, Buckley F, Dillon P, Evans RD, Rath M, Veerkamp RF (2003) Genetic relationships among body condition score, body weight, milk yield, and fertility in dairy cows. Journal of Dairy Science 86, 2193–2204.
Genetic relationships among body condition score, body weight, milk yield, and fertility in dairy cows.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DC%2BD3sXks1Giuro%3D&md5=3491aaabbd4cfa37dab8611e9dc11ec4CAS |

Bewley JM, Boyce RE, Roberts DJ, Coffey MP, Schutz MM (2010) Comparison of two methods of assessing dairy cow body condition score. The Journal of Dairy Research 77, 95–98.
Comparison of two methods of assessing dairy cow body condition score.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DC%2BC3cXlvFGhsQ%3D%3D&md5=06e143e29824fdd30e116bd4362d30a5CAS |

Brotherstone S (1994) Genetic and phenotypic correlations between linear type traits and production traits in Holstein-Friesian dairy cattle. Animal Science 59, 183–187.

Brun-Lafleur L, Cutullic E, Faverdin P, Delaby L, Disenhaus C (2013) An individual reproduction model sensitive to milk yield and body condition in Holstein dairy cows. animal 7, 1332–1343.
An individual reproduction model sensitive to milk yield and body condition in Holstein dairy cows.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DC%2BC3sXhtVOktrjI&md5=4b7f9a673637a0edb945bf4f9611ebfdCAS |

Cherwell Scientific (2000) ‘Modelmaker user manual.’ (Cherwell Scientific: Oxford, UK)

Dairy Australia (2016) ‘Australia’s 5 main feeding systems.’ (Dairy Australia) Available at http://www.dairyaustralia.com.au/~/media/Documents/Animal%20management/Feed%20and%20nutrition/Feeding%20Systems%20latest/Aus%20five%20main%20feeding%20systems.pdf [Verified 30 April 2016]

Dumas A, Dijkstra J, France J (2008) Mathematical modelling in animal nutrition: a centenary review. The Journal of Agricultural Science 146, 123–142.
Mathematical modelling in animal nutrition: a centenary review.Crossref | GoogleScholarGoogle Scholar |

Earle DF (1976) A guide to scoring dairy cow condition. Journal of Agriculture (Victoria) 74, 228–231.

Emmans GC, Fisher C (1986) Problems in nutritional theory. In ‘Nutrient requirements of poultry and nutritional research’. (Eds C Fisher, KN Boorman) pp. 9–39. (Butterworths: London)

Friggens NC, Brun-Lafleur L, Faverdin P, Sauvant D, Martin O (2013) Advances in predicting nutrient partitioning in the dairy cow: recognizing the central role of genotype and its expression through time. animal 7, 89–101.
Advances in predicting nutrient partitioning in the dairy cow: recognizing the central role of genotype and its expression through time.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DC%2BC3sXjsFeisb8%3D&md5=7942281afe4eb9940fc613ab1356e0beCAS |

Fuentes-Pila J, DeLorenzo MA, Beede DK, Staples CR, Holter JB (1996) Evaluation of equations based on animal factors to predict intake of lactating Holstein cows.1. Journal of Dairy Science 79, 1562–1571.
Evaluation of equations based on animal factors to predict intake of lactating Holstein cows.1.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DyaK28Xmt1Kmtr4%3D&md5=c7aeb0ab0600d4192feb6bae15f4a53dCAS |

Fulkerson WJ, Davison TM, Garcia SC, Hough G, Goddard ME, Dobos R, Blockey M (2008) Holstein-Friesian dairy cows under a predominantly grazing system: interaction between genotype and environment. Journal of Dairy Science 91, 826–839.
Holstein-Friesian dairy cows under a predominantly grazing system: interaction between genotype and environment.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DC%2BD1cXhsVaitL4%3D&md5=991ec8a8fd9b3aadb7b11c6e08ed034aCAS |

Gaillard C, Martin O, Blavy P, Friggens N, Sehested J, Phuong H (2016) Prediction of the performance of Holstein cows regarding parity, and lactation length using a model of lifetime nutrient partitioning. Journal of Dairy Science
Prediction of the performance of Holstein cows regarding parity, and lactation length using a model of lifetime nutrient partitioning.Crossref | GoogleScholarGoogle Scholar |

Hayes BJ, Carrick M, Bowman P, Goddard ME (2003) Genotype × environment interaction for milk production of daughters of Australian dairy sires from test-day records. Journal of Dairy Science 86, 3736–3744.
Genotype × environment interaction for milk production of daughters of Australian dairy sires from test-day records.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DC%2BD3sXptFaisrs%3D&md5=9b8875d1b9c246b8afb6abd24256c086CAS |

Huhtanen P (2006) Effects of increasing the milk yield on milk composition. In ‘The international Skjervold-symposium on milk quality’, 26–27 October 2006, Oslo, Norway.

Jacquot AL, Delaby L, Pomiés D, Brunschwig G, Baumont R (2015) Dynamic model of milk production responses to grass-based diet variations during grazing and indoor housing. The Journal of Agricultural Science 153, 689–707.
Dynamic model of milk production responses to grass-based diet variations during grazing and indoor housing.Crossref | GoogleScholarGoogle Scholar |

Mandok KS, Kay JK, Greenwood SL, Edwards GR, Roche JR (2013) Requirements for zero energy balance of nonlactating, pregnant dairy cows fed fresh autumn pasture are greater than currently estimated. Journal of Dairy Science 96, 4070–4076.
Requirements for zero energy balance of nonlactating, pregnant dairy cows fed fresh autumn pasture are greater than currently estimated.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DC%2BC3sXksFyit78%3D&md5=e77327af85c2ca0ed201210290aae84dCAS |

Martin O, Sauvant D (2010a) A teleonomic model describing performance (body, milk and intake) during growth and over repeated reproductive cycles throughout the lifespan of dairy cattle. 1. Trajectories of life function priorities and genetic scaling. animal 4, 2030–2047.
A teleonomic model describing performance (body, milk and intake) during growth and over repeated reproductive cycles throughout the lifespan of dairy cattle. 1. Trajectories of life function priorities and genetic scaling.Crossref | GoogleScholarGoogle Scholar | 1:STN:280:DC%2BC38vpt1Kntg%3D%3D&md5=865b11004bf15178adc674f1a25bae34CAS |

Martin O, Sauvant D (2010b) A teleonomic model describing performance (body, milk and intake) during growth and over repeated reproductive cycles throughout the lifespan of dairy cattle. 2. Voluntary intake and energy partitioning. animal 4, 2048–2056.
A teleonomic model describing performance (body, milk and intake) during growth and over repeated reproductive cycles throughout the lifespan of dairy cattle. 2. Voluntary intake and energy partitioning.Crossref | GoogleScholarGoogle Scholar | 1:STN:280:DC%2BC38vpt1Kntw%3D%3D&md5=ae7ef9eb5e0a8350240eef9e99cecfeeCAS |

Mason IL, Robertson A, Gjelstad B (1957) 661. The genetic connexion between body size, milk production and efficiency in dairy cattle. The Journal of Dairy Research 24, 135–143.
661. The genetic connexion between body size, milk production and efficiency in dairy cattle.Crossref | GoogleScholarGoogle Scholar |

Oldham JD, Emmans GC (1989) Prediction of responses to required nutrients in dairy cows. Journal of Dairy Science 72, 3212–3229.
Prediction of responses to required nutrients in dairy cows.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DyaK3cXhsFOjtLo%3D&md5=c47f75ce029771f0c321cb2fa541f922CAS |

Pantelić V, Petrović M, Aleksić S, Ostojić D, Sretenović L, Novaković Ž (2008) Genetic correlations of productive and reproductive traits of Simmental cows in Republic of Serbia. Archiva Zootechnica 11, 73–78.

Phuong HN, Martin O, de Boer IJM, Ingvartsen KL, Schmidely P, Friggens NC (2015) Deriving estimates of individual variability in genetic potentials of performance traits for 3 dairy breeds, using a model of lifetime nutrient partitioning. Journal of Dairy Science 98, 618–632.
Deriving estimates of individual variability in genetic potentials of performance traits for 3 dairy breeds, using a model of lifetime nutrient partitioning.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DC%2BC2cXhvFGitr%2FP&md5=7a8f739de79a9b1ab0ab9ef5968a8ad8CAS |

Phuong HN, Blavy P, Martin O, Schmidely P, Friggens NC (2016) Modelling impacts of performance on the probability of reproducing, and thereby on productive lifespan, allow prediction of lifetime efficiency in dairy cows. animal 10, 106–116.
Modelling impacts of performance on the probability of reproducing, and thereby on productive lifespan, allow prediction of lifetime efficiency in dairy cows.Crossref | GoogleScholarGoogle Scholar | 1:STN:280:DC%2BC287lsFSltg%3D%3D&md5=d07b9a9573c085268d9192d7e8fc3c46CAS |

Pryce JE, Gonzalez-Recio O, Thornhill JB, Marett LC, Wales WJ, Coffey MP, de Haas Y, Veerkamp RF, Hayes BJ (2014) Short communication: validation of genomic breeding value predictions for feed intake and feed efficiency traits. Journal of Dairy Science 97, 537–542.
Short communication: validation of genomic breeding value predictions for feed intake and feed efficiency traits.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DC%2BC3sXhslOlsbjF&md5=3ea4222e105a9278095e018c97a5afa7CAS |

R Development Core Team (2016) ‘The GNU project. The R project for statistical computing.’ Available at http://www.rproject.org/ [accessed 4 April 2016]

Taylor CS 1973 Genetic differences in milk production in relation to mature body weight. Proceedings of the British Society of Animal Production (1972) (New Series) 2 15 25

Tozer PR, Huffaker RG (1999) Mathematical equations to describe lactation curves for Holstein- Friesian cows in New South Wales. Australian Journal of Agricultural Research 50, 431–440.
Mathematical equations to describe lactation curves for Holstein- Friesian cows in New South Wales.Crossref | GoogleScholarGoogle Scholar |

Wales WJ, Marett LC, Greenwood JS, Wright MM, Thornhill JB, Jacobs JL, Ho CKM, Auldist MJ (2013) Use of partial mixed rations in pasture-based dairying in temperate regions of Australia. Animal Production Science 53, 1167–1178.
Use of partial mixed rations in pasture-based dairying in temperate regions of Australia.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DC%2BC3sXhsFGgsrvK&md5=8d84f026e062c3b20e320a93d4becdf8CAS |

Welper R, Freeman A (1992) Genetic parameters for yield traits of Holsteins, including lactose and somatic cell score. Journal of Dairy Science 75, 1342–1348.
Genetic parameters for yield traits of Holsteins, including lactose and somatic cell score.Crossref | GoogleScholarGoogle Scholar | 1:STN:280:DyaK383osVSlsg%3D%3D&md5=c65c24950cf1b9f6c7288814d6a0f215CAS |