Skip to main content
×
×
Home

Merging and characterising phenotypic data on conventional and rare traits from dairy cattle experimental resources in three countries

  • G. Banos (a1) (a2), M. P. Coffey (a2), R. F. Veerkamp (a3), D. P. Berry (a4) and E. Wall (a2)...
Abstract

This study set out to demonstrate the feasibility of merging data from different experimental resource dairy populations for joint genetic analyses. Data from four experimental herds located in three different countries (Scotland, Ireland and the Netherlands) were used for this purpose. Animals were first lactation Holstein cows that participated in ongoing or previously completed selection and feeding experiments. Data included a total of 60 058 weekly records from 1630 cows across the four herds; number of cows per herd ranged from 90 to 563. Weekly records were extracted from the individual herd databases and included seven traits: milk, fat and protein yield, milk somatic cell count, liveweight, dry matter intake and energy intake. Missing records were predicted with the use of random regression models, so that at the end there were 44 weekly records, corresponding to the typical 305-day lactation, for each cow. A total of 23 different lactation traits were derived from these records: total milk, fat and protein yield, average fat and protein percentage, average fat-to-protein ratio, total dry matter and energy intake and average dry matter intake-to-milk yield ratio in lactation weeks 1 to 44 and 1 to 15; average milk somatic cell count in lactation weeks 1 to 15 and 16 to 44; average liveweight in lactation weeks 1 to 44; and average energy balance in lactation weeks 1 to 44 and 1 to 15. Data were subsequently merged across the four herds into a single dataset, which was analysed with mixed linear models. Genetic variance and heritability estimates were greater (P < 0.05) than zero for all traits except for average milk somatic cell count in weeks 16 to 44. Proportion of total phenotypic variance due to genotype-by-environment (sire-by-herd) interaction was not different (P > 0.05) from zero. When estimable, the genetic correlation between herds ranged from 0.85 to 0.99. Results suggested that merging experimental herd data into a single dataset is both feasible and sensible, despite potential differences in management and recording of the animals in the four herds. Merging experimental data will increase power of detection in a genetic analysis and augment the potential reference population in genome-wide association studies, especially of difficult-to-record traits.

    • Send article to Kindle

      To send this article to your Kindle, first ensure no-reply@cambridge.org is added to your Approved Personal Document E-mail List under your Personal Document Settings on the Manage Your Content and Devices page of your Amazon account. Then enter the ‘name’ part of your Kindle email address below. Find out more about sending to your Kindle. Find out more about sending to your Kindle.

      Note you can select to send to either the @free.kindle.com or @kindle.com variations. ‘@free.kindle.com’ emails are free but can only be sent to your device when it is connected to wi-fi. ‘@kindle.com’ emails can be delivered even when you are not connected to wi-fi, but note that service fees apply.

      Find out more about the Kindle Personal Document Service.

      Merging and characterising phenotypic data on conventional and rare traits from dairy cattle experimental resources in three countries
      Available formats
      ×
      Send article to Dropbox

      To send this article to your Dropbox account, please select one or more formats and confirm that you agree to abide by our usage policies. If this is the first time you use this feature, you will be asked to authorise Cambridge Core to connect with your <service> account. Find out more about sending content to Dropbox.

      Merging and characterising phenotypic data on conventional and rare traits from dairy cattle experimental resources in three countries
      Available formats
      ×
      Send article to Google Drive

      To send this article to your Google Drive account, please select one or more formats and confirm that you agree to abide by our usage policies. If this is the first time you use this feature, you will be asked to authorise Cambridge Core to connect with your <service> account. Find out more about sending content to Google Drive.

      Merging and characterising phenotypic data on conventional and rare traits from dairy cattle experimental resources in three countries
      Available formats
      ×
Copyright
Corresponding author
E-mail: banos@vet.auth.gr
References
Hide All
Akaike, H 1974. A new look at the statistical model identification. IEEE Transactions on Automatic Control 19, 716723.
Banos, G, Coffey, MP, Brotherstone, S 2005. Modeling daily energy balance of dairy cows in the first three lactations. Journal of Dairy Science 88, 22262237.
Beerda, B, Ouweltjes, W, Sebek, LBJ, Windig, JJ, Veerkamp, RF 2007. Effects of genotype by environment interactions on milk yield, energy balance, and protein balance. Journal of Dairy Science 90, 219228.
Buckley, F, Dillon, P, Rath, M, Veerkamp, RF 2000. The relationship between genetic merit for yield and live weight, condition score and energy balance of spring calving Holstein–Friesian dairy cows on grass based systems of milk production. Journal of Dairy Science 83, 18781886.
Buttchereit, N, Stamer, E, Junge, W, Thaller, G 2011. Genetic relationships among daily energy balance, feed intake, body condition score, and fat to protein ratio of milk in dairy cows. Journal of Dairy Science 94, 15861591.
Coffey, MP, Emmans, GC, Brotherstone, S 2001. Genetic evaluation of dairy bulls for energy balance traits using random regression. Animal Science 73, 2940.
Emmans, GC 1994. Effective energy: a concept of energy utilization applied across species. British Journal of Nutrition 71, 801821.
Erdfelder, E, Faul, F, Buchner, A 1996. GPOWER: a general power analysis program. Behavior Research Methods, Instruments and Computers 28, 111.
Friggens, NC, Ingvartsen, KL, Emmans, GC 2003. Prediction of body lipid change in pregnancy and lactation. Journal of Dairy Science 87, 9881000.
Gilmour, AR, Gogel, BJ, Cullis, BR, Welham, SJ, Thompson, R 2006. ASREML user guide, release 2.0. VSN International Ltd, Hemel Hempstead, UK.
Horan, B, Faverdin, P, Delaby, L, Rath, M, Dillon, P 2006. The effect of strain of Holstein–Friesian dairy cows and pasture-based system on grass intake and milk production. Animal Science 82, 435444.
International Committee for Animal Recording 2011. www.icar.org, Rome, Italy.
Kennedy, E, O'Donovan, M, Murphy, JP, O'Mara, FP, Delaby, L 2006. The effect of initial grazing date and subsequent stocking rate on the grazing management, grass dry matter intake and milk production of dairy cows in summer. Grass Forage Science 61, 375384.
Kennedy, J, Dillon, P, Faverdin, P, Delaby, L, Stakelum, G, Rath, M 2003. Effect of genetic merit and concentrate supplementation on grass intake and milk production with Holstein–Friesian dairy cows. Journal of Dairy Science 86, 610621.
McCarthy, S, Berry, DP, Dillon, P, Rath, M, Horan, B 2007. Effect of strain of Holstein–Friesian and feed system on udder health and milking characteristics. Livestock Science 107, 128.
McEvoy, M, O'Donovan, M, Murphy, JP, O'Mara, F, Rath, M, Delaby, L 2007. Effect of concentrate supplementation and herbage allowance on milk production performance of spring calving dairy cows in early lactation. Proceedings of the Irish Agricultural Research Forum, Tullamore, Ireland, 15–16 March 2007, p. 46.
Mrode, RA, Swanson, GJT 2003. Estimation of genetic parameters for somatic cell count in the first three lactations using random regression. Livestock Production Science 86, 253260.
O'Donovan, M, Delaby, L 2005. A comparison of perennial ryegrass cultivars differing in heading date and grass ploidy with spring calving dairy cows grazed at two different stocking rates. Animal Research 54, 337350.
Ordway, RS, Boucher, SE, Whitehouse, NL, Schwab, CG, Sloan, BK 2009. Effects of providing two forms of supplemental methionine to periparturient Holstein dairy cows on feed intake and lactational performance. Journal of Dairy Science 92, 51545166.
Pryce, JE, Nielson, BL, Veerkamp, RF, Simm, G 1999. Genotype and feeding system effects and interactions for health and fertility traits in dairy cattle. Livestock Production Science 57, 193201.
Toshniwal, JK, Dechow, CD, Cassell, BG, Appuhamy, J A D R N, Varga, GA 2008. Heritability of electronically recorded daily body weight and correlations with yield, dry matter intake, and body condition score. Journal of Dairy Science 91, 32013210.
Urioste, JI, Franzén, J, Strandberg, E 2010. Phenotypic and genetic characterization of novel somatic cell count traits from weekly or monthly observations. Journal of Dairy Science 93, 59305941.
Vallimont, JE, Dechow, CD, Daubert, JM, Dekleva, MW, Blum, JW, Barlieb, CM, Liu, W, Varga, GA, Heinrichs, AJ, Baumrucker, CR 2010. Genetic parameters of feed intake, production, body weight, body condition score, and selected type traits of Holstein cows in commercial tie-stall barns. Journal of Dairy Science 93, 48924901.
Van Es, AJH 1978. Feed evaluation for ruminants. I. The systems in use from May 1977–onwards in the Netherlands. Livestock Production Science 5, 331345.
Veerkamp, RF, Simm, G, Oldham, JD 1995. Genotype by environment interaction – experience from Langhill. In Breeding and feeding the high genetic merit dairy cow (ed. TLJ Lawrence, FJ Gordon and A Carson), vol. 19. pp. 5966. British Society of Animal Science (Occasional Publication), Midlothian, Scotland.
Veerkamp, RF, Oldenbroek, JK, van der Gaast, HJ, van der Werf, JHJ 2000. Genetic correlation between days until start of luteal activity and milk yield, energy balance and live weights. Journal of Dairy Science 83, 577583.
Windig, JJ, Beerda, B, Veerkamp, RF 2008. Relationship between milk progesterone profiles and genetic merit for milk production, milking frequency, and feeding regimen in dairy cattle. Journal of Dairy Science 91, 28742884.
Recommend this journal

Email your librarian or administrator to recommend adding this journal to your organisation's collection.

animal
  • ISSN: 1751-7311
  • EISSN: 1751-732X
  • URL: /core/journals/animal
Please enter your name
Please enter a valid email address
Who would you like to send this to? *
×

Keywords:

Metrics

Full text views

Total number of HTML views: 4
Total number of PDF views: 97 *
Loading metrics...

Abstract views

Total abstract views: 187 *
Loading metrics...

* Views captured on Cambridge Core between September 2016 - 12th June 2018. This data will be updated every 24 hours.