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Review: Impact of protein and energy supply on the fate of amino acids from absorption to milk protein in dairy cows

Published online by Cambridge University Press:  06 February 2020

H. Lapierre*
Affiliation:
Agriculture and Agri-Food Canada, 2000 College Street, Sherbrooke, QuébecJ1M 0C8, Canada
R. Martineau
Affiliation:
Département des sciences animales, Université Laval, 2425 rue de l’Agriculture, Québec, QCG1V 0A6, Canada
M. D. Hanigan
Affiliation:
Department of Dairy Science, Virginia Polytechnic Institute and State University, 175 West Campus Drive, Blacksburg, VA24061, USA
H. J. van Lingen
Affiliation:
Department of Animal Science, University of California, One Shields Avenue, Davis, CA95616USA
E. Kebreab
Affiliation:
Department of Animal Science, University of California, One Shields Avenue, Davis, CA95616USA
J. W. Spek
Affiliation:
Wageningen Livestock Research, De Elst 1, Wageningen6708 WD, The Netherlands
D. R. Ouellet
Affiliation:
Agriculture and Agri-Food Canada, 2000 College Street, Sherbrooke, QuébecJ1M 0C8, Canada

Abstract

Making dairy farming more cost-effective and reducing nitrogen environmental pollution could be reached through a reduced input of dietary protein, provided productivity is not compromised. This could be achieved through balancing dairy rations for essential amino acids (EAA) rather than their aggregate, the metabolizable protein (MP). This review revisits the estimations of the major true protein secretions in dairy cows, milk protein yield (MPY), metabolic fecal protein (MFP), endogenous urinary loss and scurf and associated AA composition. The combined efficiency with which MP (EffMP) or EAA (EffAA) is used to support protein secretions is calculated as the sum of true protein secretions (MPY + MFP + scurf) divided by the net supply (adjusted to remove the endogenous urinary excretion: MPadj and AAadj). Using the proposed protein and AA secretions, EffMP and EffAA were predicted through meta-analyses (807 treatment means) and validated using an independent database (129 treatment means). The effects of MPadj or AAadj, plus digestible energy intake (DEI), days in milk (DIM) and parity (primiparous v. multiparous), were significant in all models. Models using (MPadj, MPadj × MPadj, DEI and DEI × DEI) or (MPadj/DEI and MPadj/DEI × MPadj/DEI) had similar corrected Akaike’s information criterion, but the model using MPadj/DEI performed better in the validation database. A model that also included this ratio was, therefore, used to fitting equations to predict EffAA. These equations predicted well EffAA in the validation database except for Arg which had a strong slope bias. Predictions of MPY from predicted EffMP based on MPadj/DEI, MPadj/DEI × MPadj/DEI, DIM and parity yielded a better fit than direct predictions of MPY based on MPadj, MPadj × MPadj, DEI, DIM and parity. Predictions of MPY based on each EffAA yielded fairly similar results among AA. It is proposed to ponder the mean of MPY predictions obtained from each EffAA by the lowest prediction to retain the potential limitation from AA with the shortest supply. Overall, the revisited estimations of endogenous urinary excretion and MFP, revised AA composition of protein secretions and inclusion of a variable combined EffAA (based on AAadj/DEI, AAadj/DEI × Aadj/DEI, DIM and parity) offer the potential to improve predictions of MPY, identify which AA are potentially in short supply and, therefore, improve the AA balance of dairy rations.

Information

Type
Review Article
Copyright
© Her Majesty the Queen in Right of Canada, as represented by the Minister of Agriculture and Agri-Food Canada 2020.
Figure 0

Table 1 Amino acid (AA) composition of protein secretions used in the calculation of efficiency of utilization of AA in lactating dairy cows

Figure 1

Table 2 Summary statistics of the developmental database (n = 807) from studies conducted in lactating dairy cows

Figure 2

Table 3 Summary statistics of the validation database (n = 129) from studies conducted in lactating dairy cows

Figure 3

Figure 1 Relationship between milk true protein yield and metabolizable protein (MP) supply in lactating dairy cows in the developmental and validation databases.

Figure 4

Table 4 Models of efficiency of utilization of metabolizable protein (MP)1 in lactating dairy cows

Figure 5

Figure 2 Observed (•) and residual (▴) values of efficiency of utilization of metabolizable protein in the function of efficiency predicted according to equations (12), (13) and (14) (see text for details of the equations) in lactating dairy cows in the validation database.

Figure 6

Figure 3 Relationship between efficiency of utilization of metabolizable protein (MP) and MP adjusted (MP supply minus endogenous urinary loss) or the ratio of MP adjusted/digestible energy (DE) intake in lactating dairy cows in the developmental database. Efficiency is calculated as (true protein in milk + scurf + metabolic fecal)/MP adjusted.

Figure 7

Table 5 Models of efficiency of utilization of individual amino acids (AA)1 in lactating dairy cows

Figure 8

Table 6 Predicted milk true protein yield (MPY, g/d) based on estimates of the efficiency of utilization of metabolizable protein (EffMP) or predicted directly in lactating dairy cows

Figure 9

Table 7 Prediction of milk true protein yield (MPY, g/day) based on estimates of the efficiency of utilization of amino acids (EffAA) in lactating dairy cows

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Lapierre et al. Supplementary material.

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