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Predicting expected progeny difference for marbling score in Angus cattle using artificial neural networks and Bayesian regression models

BACKGROUND: Artificial neural networks (ANN) mimic the function of the human brain and are capable of performing massively parallel computations for data processing and knowledge representation. ANN can capture nonlinear relationships between predictors and responses and can adaptively learn complex...

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Autores principales: Okut, Hayrettin, Wu, Xiao-Liao, Rosa, Guilherme JM, Bauck, Stewart, Woodward, Brent W, Schnabel, Robert D, Taylor, Jeremy F, Gianola, Daniel
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3851253/
https://www.ncbi.nlm.nih.gov/pubmed/24024641
http://dx.doi.org/10.1186/1297-9686-45-34
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author Okut, Hayrettin
Wu, Xiao-Liao
Rosa, Guilherme JM
Bauck, Stewart
Woodward, Brent W
Schnabel, Robert D
Taylor, Jeremy F
Gianola, Daniel
author_facet Okut, Hayrettin
Wu, Xiao-Liao
Rosa, Guilherme JM
Bauck, Stewart
Woodward, Brent W
Schnabel, Robert D
Taylor, Jeremy F
Gianola, Daniel
author_sort Okut, Hayrettin
collection PubMed
description BACKGROUND: Artificial neural networks (ANN) mimic the function of the human brain and are capable of performing massively parallel computations for data processing and knowledge representation. ANN can capture nonlinear relationships between predictors and responses and can adaptively learn complex functional forms, in particular, for situations where conventional regression models are ineffective. In a previous study, ANN with Bayesian regularization outperformed a benchmark linear model when predicting milk yield in dairy cattle or grain yield of wheat. Although breeding values rely on the assumption of additive inheritance, the predictive capabilities of ANN are of interest from the perspective of their potential to increase the accuracy of prediction of molecular breeding values used for genomic selection. This motivated the present study, in which the aim was to investigate the accuracy of ANN when predicting the expected progeny difference (EPD) of marbling score in Angus cattle. Various ANN architectures were explored, which involved two training algorithms, two types of activation functions, and from 1 to 4 neurons in hidden layers. For comparison, BayesCπ models were used to select a subset of optimal markers (referred to as feature selection), under the assumption of additive inheritance, and then the marker effects were estimated using BayesCπ with π set equal to zero. This procedure is referred to as BayesCpC and was implemented on a high-throughput computing cluster. RESULTS: The ANN with Bayesian regularization method performed equally well for prediction of EPD as BayesCpC, based on prediction accuracy and sum of squared errors. With the 3K-SNP panel, for example, prediction accuracy was 0.776 using BayesCpC, and ranged from 0.776 to 0.807 using BRANN. With the selected 700-SNP panel, prediction accuracy was 0.863 for BayesCpC and ranged from 0.842 to 0.858 for BRANN. However, prediction accuracy for the ANN with scaled conjugate gradient back-propagation was lower, ranging from 0.653 to 0.689 with the 3K-SNP panel, and from 0.743 to 0.793 with the selected 700-SNP panel. CONCLUSIONS: ANN with Bayesian regularization performed as well as linear Bayesian regression models in predicting additive genetic values, supporting the idea that ANN are useful as universal approximators of functions of interest in breeding contexts.
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spelling pubmed-38512532013-12-13 Predicting expected progeny difference for marbling score in Angus cattle using artificial neural networks and Bayesian regression models Okut, Hayrettin Wu, Xiao-Liao Rosa, Guilherme JM Bauck, Stewart Woodward, Brent W Schnabel, Robert D Taylor, Jeremy F Gianola, Daniel Genet Sel Evol Research BACKGROUND: Artificial neural networks (ANN) mimic the function of the human brain and are capable of performing massively parallel computations for data processing and knowledge representation. ANN can capture nonlinear relationships between predictors and responses and can adaptively learn complex functional forms, in particular, for situations where conventional regression models are ineffective. In a previous study, ANN with Bayesian regularization outperformed a benchmark linear model when predicting milk yield in dairy cattle or grain yield of wheat. Although breeding values rely on the assumption of additive inheritance, the predictive capabilities of ANN are of interest from the perspective of their potential to increase the accuracy of prediction of molecular breeding values used for genomic selection. This motivated the present study, in which the aim was to investigate the accuracy of ANN when predicting the expected progeny difference (EPD) of marbling score in Angus cattle. Various ANN architectures were explored, which involved two training algorithms, two types of activation functions, and from 1 to 4 neurons in hidden layers. For comparison, BayesCπ models were used to select a subset of optimal markers (referred to as feature selection), under the assumption of additive inheritance, and then the marker effects were estimated using BayesCπ with π set equal to zero. This procedure is referred to as BayesCpC and was implemented on a high-throughput computing cluster. RESULTS: The ANN with Bayesian regularization method performed equally well for prediction of EPD as BayesCpC, based on prediction accuracy and sum of squared errors. With the 3K-SNP panel, for example, prediction accuracy was 0.776 using BayesCpC, and ranged from 0.776 to 0.807 using BRANN. With the selected 700-SNP panel, prediction accuracy was 0.863 for BayesCpC and ranged from 0.842 to 0.858 for BRANN. However, prediction accuracy for the ANN with scaled conjugate gradient back-propagation was lower, ranging from 0.653 to 0.689 with the 3K-SNP panel, and from 0.743 to 0.793 with the selected 700-SNP panel. CONCLUSIONS: ANN with Bayesian regularization performed as well as linear Bayesian regression models in predicting additive genetic values, supporting the idea that ANN are useful as universal approximators of functions of interest in breeding contexts. BioMed Central 2013-09-11 /pmc/articles/PMC3851253/ /pubmed/24024641 http://dx.doi.org/10.1186/1297-9686-45-34 Text en Copyright © 2013 Okut et al.; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research
Okut, Hayrettin
Wu, Xiao-Liao
Rosa, Guilherme JM
Bauck, Stewart
Woodward, Brent W
Schnabel, Robert D
Taylor, Jeremy F
Gianola, Daniel
Predicting expected progeny difference for marbling score in Angus cattle using artificial neural networks and Bayesian regression models
title Predicting expected progeny difference for marbling score in Angus cattle using artificial neural networks and Bayesian regression models
title_full Predicting expected progeny difference for marbling score in Angus cattle using artificial neural networks and Bayesian regression models
title_fullStr Predicting expected progeny difference for marbling score in Angus cattle using artificial neural networks and Bayesian regression models
title_full_unstemmed Predicting expected progeny difference for marbling score in Angus cattle using artificial neural networks and Bayesian regression models
title_short Predicting expected progeny difference for marbling score in Angus cattle using artificial neural networks and Bayesian regression models
title_sort predicting expected progeny difference for marbling score in angus cattle using artificial neural networks and bayesian regression models
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3851253/
https://www.ncbi.nlm.nih.gov/pubmed/24024641
http://dx.doi.org/10.1186/1297-9686-45-34
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