Literature DB >> 25253815

Predicting microbial protein synthesis in beef cattle: relationship to intakes of total digestible nutrients and crude protein.

M L Galyean1, L O Tedeschi2.   

Abstract

Prediction of microbial CP (MCP) synthesis in the rumen is an integral part of the MP system. For the NRC beef model, MCP is calculated as 0.13 multiplied by TDN intake (TDNI), with adjustment for physically effective NDF (peNDF) concentrations less than 20%. Despite its application for nearly 2 decades, MCP predictions using this approach have not been extensively evaluated. We assembled a database of 285 treatment means from 66 published papers using beef cattle and dairy or dairy × beef crossbred steers, fed diets with a wide range of TDN, CP, and ether extract (EE) concentrations, in which MCP synthesis was measured. Fat-free TDN (FFTDN) concentration was calculated by subtracting 2.25 × percent EE from the TDN concentration. Based on initial model selection procedures indicating that DMI and concentrations of TDN, FFTDN, and CP were significantly (P < 0.04) related to MCP synthesis, linear and quadratic effects of TDNI and FFTDN intake (FFTDNI) and CP intake (CPI) were considered as potential independent variables. Mixed model regression methods were used to fit 1-, 2-, and 3-independent-variable models based on either TDNI or FFTDNI (e.g., TDNI only, TDNI and CPI, and TDNI, CPI, and the quadratic effect of TDNI; or FFTDNI only, FFTDNI and CPI, and FFTDNI, CPI, and the quadratic effect of FFTDNI). True ruminal OM digested (TROMD; g/d) was highly related (r(2) = 0.84 using citation-adjusted data) to MCP synthesis. Similarly, both TDNI and FFTDNI were highly related to citation-adjusted TROMD (r(2) > 0.96) and MCP synthesis (r(2) > 0.89). Models with FFTDNI were slightly more precise with slightly smaller prediction errors than those with TDNI. Randomly dividing the citations into Development (60%) and Evaluation (40%) data sets indicated that models such as those derived from the overall database accounted for 46 to 56% of the variation in MCP synthesis, with neither mean nor linear bias (P ≥ 0.26). In contrast, calculating MCP as 0.13 × TDNI, with or without adjustment for peNDF concentration, resulted in overprediction of MCP (P < 0.001 for both mean and linear bias). Cross-validation using 5,000 randomly drawn training and testing data sets yielded results similar to the Development/Evaluation approach. Recommended equations are provided, but the errors of prediction associated with these empirical regression equations were on the order of 25 to 30% of the mean MCP.

Entities:  

Keywords:  beef cattle; crude protein; microbial protein synthesis; total digestible nutrients

Mesh:

Substances:

Year:  2014        PMID: 25253815     DOI: 10.2527/jas.2014-8098

Source DB:  PubMed          Journal:  J Anim Sci        ISSN: 0021-8812            Impact factor:   3.159


  4 in total

1.  ASN-ASAS SYMPOSIUM: FUTURE OF DATA ANALYTICS IN NUTRITION: Mathematical modeling in ruminant nutrition: approaches and paradigms, extant models, and thoughts for upcoming predictive analytics1,2.

Authors:  Luis O Tedeschi
Journal:  J Anim Sci       Date:  2019-04-29       Impact factor: 3.159

2.  Predicting metabolizable energy from digestible energy for growing and finishing beef cattle and relationships to the prediction of methane.

Authors:  Kristin E Hales; Carley A Coppin; Zachary K Smith; Zach S McDaniel; Luis O Tedeschi; N Andy Cole; Michael L Galyean
Journal:  J Anim Sci       Date:  2022-03-01       Impact factor: 3.159

3.  Prediction of methane per unit of dry matter intake in growing and finishing cattle from the ratio of dietary concentrations of starch to neutral detergent fiber alone or in combination with dietary concentration of ether extract.

Authors:  Michael L Galyean; Kristin E Hales
Journal:  J Anim Sci       Date:  2022-09-01       Impact factor: 3.338

4.  Metabolizable Protein: 1. Predicting Equations to Estimate Microbial Crude Protein Synthesis in Small Ruminants.

Authors:  Stefanie Alvarenga Santos; Gleidson Giordano Pinto de Carvalho; José Augusto Gomes Azevêdo; Diego Zanetti; Edson Mauro Santos; Mara Lucia Albuquerque Pereira; Elzania Sales Pereira; Aureliano José Vieira Pires; Sebastião de Campos Valadares Filho; Izabelle Auxiliadora Molina de Almeida Teixeira; Manuela Silva Libânio Tosto; Laudi Cunha Leite; Lays Débora Silva Mariz
Journal:  Front Vet Sci       Date:  2021-06-10
  4 in total

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