A Robust Statistical Model to Predict the Future Value of the Milk Production of Dairy Cows Using Herd Recording Data

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Standard

A Robust Statistical Model to Predict the Future Value of the Milk Production of Dairy Cows Using Herd Recording Data. / Græsbøll, Kaare; Kirkeby, Carsten; Nielsen, Søren Saxmose; Halasa, Tariq; Toft, Nils; Christiansen, Lasse Engbo.

I: Frontiers in Veterinary Science, Bind 4, 13, 2017.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Græsbøll, K, Kirkeby, C, Nielsen, SS, Halasa, T, Toft, N & Christiansen, LE 2017, 'A Robust Statistical Model to Predict the Future Value of the Milk Production of Dairy Cows Using Herd Recording Data', Frontiers in Veterinary Science, bind 4, 13. https://doi.org/10.3389/fvets.2017.00013

APA

Græsbøll, K., Kirkeby, C., Nielsen, S. S., Halasa, T., Toft, N., & Christiansen, L. E. (2017). A Robust Statistical Model to Predict the Future Value of the Milk Production of Dairy Cows Using Herd Recording Data. Frontiers in Veterinary Science, 4, [13]. https://doi.org/10.3389/fvets.2017.00013

Vancouver

Græsbøll K, Kirkeby C, Nielsen SS, Halasa T, Toft N, Christiansen LE. A Robust Statistical Model to Predict the Future Value of the Milk Production of Dairy Cows Using Herd Recording Data. Frontiers in Veterinary Science. 2017;4. 13. https://doi.org/10.3389/fvets.2017.00013

Author

Græsbøll, Kaare ; Kirkeby, Carsten ; Nielsen, Søren Saxmose ; Halasa, Tariq ; Toft, Nils ; Christiansen, Lasse Engbo. / A Robust Statistical Model to Predict the Future Value of the Milk Production of Dairy Cows Using Herd Recording Data. I: Frontiers in Veterinary Science. 2017 ; Bind 4.

Bibtex

@article{4010765e64484bdfbdc2e43652c0de33,
title = "A Robust Statistical Model to Predict the Future Value of the Milk Production of Dairy Cows Using Herd Recording Data",
abstract = "The future value of an individual dairy cow depends greatly on its projected milk yield. In developed countries with developed dairy industry infrastructures, facilities exist to record individual cow production and reproduction outcomes consistently and accurately. Accurate prediction of the future value of a dairy cow requires further detailed knowledge of the costs associated with feed, management practices, production systems, and disease. Here, we present a method to predict the future value of the milk production of a dairy cow based on herd recording data only. The method consists of several steps to evaluate lifetime milk production and individual cow somatic cell counts and to finally predict the average production for each day that the cow is alive. Herd recording data from 610 Danish Holstein herds were used to train and test a model predicting milk production (including factors associated with milk yield, somatic cell count, and the survival of individual cows). All estimated parameters were either herd- or cow-specific. The model prediction deviated, on average, less than 0.5 kg from the future average milk production of dairy cows in multiple herds after adjusting for the effect of somatic cell count. We conclude that estimates of future average production can be used on a day-to-day basis to rank cows for culling, or can be implemented in simulation models of within-herd disease spread to make operational decisions, such as culling versus treatment. An advantage of the approach presented in this paper is that it requires no specific knowledge of disease status or any other information beyond herd recorded milk yields, somatic cell counts, and reproductive status.",
author = "Kaare Gr{\ae}sb{\o}ll and Carsten Kirkeby and Nielsen, {S{\o}ren Saxmose} and Tariq Halasa and Nils Toft and Christiansen, {Lasse Engbo}",
year = "2017",
doi = "10.3389/fvets.2017.00013",
language = "English",
volume = "4",
journal = "Frontiers in Veterinary Science",
issn = "2297-1769",
publisher = "Frontiers Media",

}

RIS

TY - JOUR

T1 - A Robust Statistical Model to Predict the Future Value of the Milk Production of Dairy Cows Using Herd Recording Data

AU - Græsbøll, Kaare

AU - Kirkeby, Carsten

AU - Nielsen, Søren Saxmose

AU - Halasa, Tariq

AU - Toft, Nils

AU - Christiansen, Lasse Engbo

PY - 2017

Y1 - 2017

N2 - The future value of an individual dairy cow depends greatly on its projected milk yield. In developed countries with developed dairy industry infrastructures, facilities exist to record individual cow production and reproduction outcomes consistently and accurately. Accurate prediction of the future value of a dairy cow requires further detailed knowledge of the costs associated with feed, management practices, production systems, and disease. Here, we present a method to predict the future value of the milk production of a dairy cow based on herd recording data only. The method consists of several steps to evaluate lifetime milk production and individual cow somatic cell counts and to finally predict the average production for each day that the cow is alive. Herd recording data from 610 Danish Holstein herds were used to train and test a model predicting milk production (including factors associated with milk yield, somatic cell count, and the survival of individual cows). All estimated parameters were either herd- or cow-specific. The model prediction deviated, on average, less than 0.5 kg from the future average milk production of dairy cows in multiple herds after adjusting for the effect of somatic cell count. We conclude that estimates of future average production can be used on a day-to-day basis to rank cows for culling, or can be implemented in simulation models of within-herd disease spread to make operational decisions, such as culling versus treatment. An advantage of the approach presented in this paper is that it requires no specific knowledge of disease status or any other information beyond herd recorded milk yields, somatic cell counts, and reproductive status.

AB - The future value of an individual dairy cow depends greatly on its projected milk yield. In developed countries with developed dairy industry infrastructures, facilities exist to record individual cow production and reproduction outcomes consistently and accurately. Accurate prediction of the future value of a dairy cow requires further detailed knowledge of the costs associated with feed, management practices, production systems, and disease. Here, we present a method to predict the future value of the milk production of a dairy cow based on herd recording data only. The method consists of several steps to evaluate lifetime milk production and individual cow somatic cell counts and to finally predict the average production for each day that the cow is alive. Herd recording data from 610 Danish Holstein herds were used to train and test a model predicting milk production (including factors associated with milk yield, somatic cell count, and the survival of individual cows). All estimated parameters were either herd- or cow-specific. The model prediction deviated, on average, less than 0.5 kg from the future average milk production of dairy cows in multiple herds after adjusting for the effect of somatic cell count. We conclude that estimates of future average production can be used on a day-to-day basis to rank cows for culling, or can be implemented in simulation models of within-herd disease spread to make operational decisions, such as culling versus treatment. An advantage of the approach presented in this paper is that it requires no specific knowledge of disease status or any other information beyond herd recorded milk yields, somatic cell counts, and reproductive status.

U2 - 10.3389/fvets.2017.00013

DO - 10.3389/fvets.2017.00013

M3 - Journal article

C2 - 28261585

VL - 4

JO - Frontiers in Veterinary Science

JF - Frontiers in Veterinary Science

SN - 2297-1769

M1 - 13

ER -

ID: 173947126