Literature DB >> 33511331

Application of Bayesian networks to the prediction of the AMEn: a new methodology in broiler nutrition.

Tatiane C Alvarenga1, Renato R Lima1, Júlio S S Bueno Filho1, Sérgio D Simão2, Flávia C Q Mariano3, Renata R Alvarenga2, Paulo B Rodrigues2.   

Abstract

Designing balanced rations for broilers depends on precise knowledge of nitrogen-corrected apparent metabolizable energy (AMEn) and the chemical composition of the feedstuffs. The equations that include the measurements of the chemical composition of the feedstuff can be used in the prediction of AMEn. In the literature, there are studies that obtained prediction equations through multiple regression, meta-analysis, and neural networks. However, other statistical methodologies with promising potential can be used to obtain better predictions of energy values. The objective of the present study was to propose and evaluate the use of Bayesian networks (BN) to the prediction of the AMEn values of energy and protein feedstuffs of vegetable origin used in the formulation of broiler rations. In addition, verify that the predictions of energy values using this methodology are the most accurate and, consequently, are recommended to Animal Science professionals area for the preparation of balanced feeds. BN are models that consist of graphical and probabilistic representations of conditional and joint distributions of the random variables. BN uses machine learning algorithms, being a methodology of artificial intelligence. The bnlearn package in R software was used to predict AMEn from the following covariates: crude protein, crude fiber, ethereal extract, mineral matter, as well as food category, i.e., energy (corn, corn by-products, and others) or protein (soybean, soy by-products, and others) and the type of animal (chick or cockerel). The data come from 568 feeding experiments carried out in Brazil. Additional data from metabolic experiments were obtained from the Federal University of Lavras (UFLA) - Lavras, Minas Gerais, Brazil. The model with the highest accuracy (mean squared error = 66529.8 and multiple coefficients of determination = 0.87) was fitted with the max-min hill climbing algorithm (MMHC) using 80% and 20% of the data for training and test sets, respectively. The accuracy of the models was evaluated based on their values of mean squared error, mean absolute deviation, and mean absolute percentage error. The equations proposed by a new methodology in avian nutrition can be used by the broiler industry in the determination of rations.
© The Author(s) 2021. Published by Oxford University Press on behalf of the American Society of Animal Science.

Entities:  

Keywords:  graph models; max-min hill-climbing algorithm; metabolic energy; probability distributions

Year:  2021        PMID: 33511331      PMCID: PMC7821995          DOI: 10.1093/tas/txaa215

Source DB:  PubMed          Journal:  Transl Anim Sci        ISSN: 2573-2102


  10 in total

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4.  Prediction of the energy values of feedstuffs for broilers using meta-analysis and neural networks.

Authors:  F C M Q Mariano; C A Paixão; R R Lima; R R Alvarenga; P B Rodrigues; G A J Nascimento
Journal:  Animal       Date:  2013-05-01       Impact factor: 3.240

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Journal:  Poult Sci       Date:  2008-08       Impact factor: 3.352

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Authors:  Daniel Gianola; Hayrettin Okut; Kent A Weigel; Guilherme Jm Rosa
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9.  Validation of Prediction Equations of Energy Values of a Single Ingredient or Their Combinations in Male Broilers.

Authors:  R R Alvarenga; P B Rodrigues; M G Zangeronimo; E C Oliveira; F C M Q Mariano; E M C Lima; A A P Garcia; L P Naves; N B S Nardelli
Journal:  Asian-Australas J Anim Sci       Date:  2015-09       Impact factor: 2.509

10.  Predicting complex traits using a diffusion kernel on genetic markers with an application to dairy cattle and wheat data.

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  10 in total

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