Literature DB >> 20008816

Growth analysis of chickens fed diets varying in the percentage of metabolizable energy provided by protein, fat, and carbohydrate through artificial neural network.

H Ahmadi1, A Golian.   

Abstract

A radial basis function neural network (RBFN) approach was used to develop a multi-input, multi-output model for the effect of diets varying in the percentage of ME provided by protein (% ME(P)), fat (% ME(F)), and carbohydrate (% ME(C)) on live weight gain, protein gain, and fat gain in growing chickens. Thirty-three data lines representing response of the White Leghorn male chickens during 23 to 33 d of age to the diets varying in the % ME(P), % ME(F), and % ME(C) were obtained from literature and used to train the RBFN model. The prediction values of the RBFN model were compared with those obtained by multiple regression models to assess the fitness of these 2 methods. The fitness of the models was tested using R2, MS error, mean absolute deviation, residual SD, and bias. The developed RBFN model was used to evaluate the relative importance of each input parameter on chicken growth using a sensitivity analysis method. The calculated statistical values corresponding to the RBFN model showed a higher accuracy of prediction than multiple regression models. The sensitivity analysis on the model indicated that dietary % ME(P) is the most important variable in the growth of chickens, followed by dietary % ME(F) and % ME(C). It was found that the RBFN model is an appropriate tool to recognize the patterns of input-output data or to predict chicken growth in terms of live weight gain, protein gain, and fat gain given the proportion of dietary percentage of ME intake supplied through protein, fat, or carbohydrates.

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Year:  2010        PMID: 20008816     DOI: 10.3382/ps.2009-00125

Source DB:  PubMed          Journal:  Poult Sci        ISSN: 0032-5791            Impact factor:   3.352


  7 in total

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2.  Artificial Neural Network Genetic Algorithm As Powerful Tool to Predict and Optimize In vitro Proliferation Mineral Medium for G × N15 Rootstock.

Authors:  Mohammad M Arab; Abbas Yadollahi; Abdolali Shojaeiyan; Hamed Ahmadi
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3.  Mathematical Modeling and Optimizing of in Vitro Hormonal Combination for G × N15 Vegetative Rootstock Proliferation Using Artificial Neural Network-Genetic Algorithm (ANN-GA).

Authors:  Mohammad M Arab; Abbas Yadollahi; Hamed Ahmadi; Maliheh Eftekhari; Masoud Maleki
Journal:  Front Plant Sci       Date:  2017-11-01       Impact factor: 5.753

4.  Development of an Artificial Neural Network as a Tool for Predicting the Targeted Phenolic Profile of Grapevine (Vitis vinifera) Foliar Wastes.

Authors:  Maliheh Eftekhari; Abbas Yadollahi; Hamed Ahmadi; Abdolali Shojaeiyan; Mahdi Ayyari
Journal:  Front Plant Sci       Date:  2018-06-19       Impact factor: 5.753

5.  Sensitivity of in vitro digestible energy determined with computer-controlled simulated digestion system and its accuracy to predict dietary metabolizable energy for roosters.

Authors:  Y Yu; F Zhao; J Chen; Y Zou; S L Zeng; S B Liu; H Z Tan
Journal:  Poult Sci       Date:  2020-10-07       Impact factor: 3.352

6.  Predicting In vitro Culture Medium Macro-Nutrients Composition for Pear Rootstocks Using Regression Analysis and Neural Network Models.

Authors:  S Jamshidi; A Yadollahi; H Ahmadi; M M Arab; M Eftekhari
Journal:  Front Plant Sci       Date:  2016-03-29       Impact factor: 5.753

7.  Modeling and Optimizing a New Culture Medium for In Vitro Rooting of G×N15 Prunus Rootstock using Artificial Neural Network-Genetic Algorithm.

Authors:  Mohammad Mehdi Arab; Abbas Yadollahi; Maliheh Eftekhari; Hamed Ahmadi; Mohammad Akbari; Saadat Sarikhani Khorami
Journal:  Sci Rep       Date:  2018-07-02       Impact factor: 4.379

  7 in total

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