Cargando…

Marker effects and heritability estimates using additive-dominance genomic architectures via artificial neural networks in Coffea canephora

Many methodologies are used to predict the genetic merit in animals and plants, but some of them require priori assumptions that may increase the complexity of the model. Artificial neural network (ANN) has advantage to not require priori assumptions about the relationships between inputs and the ou...

Descripción completa

Detalles Bibliográficos
Autores principales: Coelho de Sousa, Ithalo, Nascimento, Moysés, de Castro Sant’anna, Isabela, Teixeira Caixeta, Eveline, Ferreira Azevedo, Camila, Damião Cruz, Cosme, Lopes da Silva, Felipe, Ruas Alkimim, Emilly, Campana Nascimento, Ana Carolina, Vergara Lopes Serão, Nick
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8791507/
https://www.ncbi.nlm.nih.gov/pubmed/35081139
http://dx.doi.org/10.1371/journal.pone.0262055
_version_ 1784640198903070720
author Coelho de Sousa, Ithalo
Nascimento, Moysés
de Castro Sant’anna, Isabela
Teixeira Caixeta, Eveline
Ferreira Azevedo, Camila
Damião Cruz, Cosme
Lopes da Silva, Felipe
Ruas Alkimim, Emilly
Campana Nascimento, Ana Carolina
Vergara Lopes Serão, Nick
author_facet Coelho de Sousa, Ithalo
Nascimento, Moysés
de Castro Sant’anna, Isabela
Teixeira Caixeta, Eveline
Ferreira Azevedo, Camila
Damião Cruz, Cosme
Lopes da Silva, Felipe
Ruas Alkimim, Emilly
Campana Nascimento, Ana Carolina
Vergara Lopes Serão, Nick
author_sort Coelho de Sousa, Ithalo
collection PubMed
description Many methodologies are used to predict the genetic merit in animals and plants, but some of them require priori assumptions that may increase the complexity of the model. Artificial neural network (ANN) has advantage to not require priori assumptions about the relationships between inputs and the output allowing great flexibility to handle different types of complex non-additive effects, such as dominance and epistasis. Despite this advantage, the biological interpretability of ANNs is still limited. The aim of this research was to estimate the heritability and markers effects for two traits in Coffea canephora using an additive-dominance architecture ANN and to compare it with genomic best linear unbiased prediction (GBLUP). The data used consists of 51 clones of C. canephora varietal Conilon, 32 of varietal group Robusta and 82 intervarietal hybrids. From this, 165 phenotyped individuals were genotyped for 14,387 SNPs. Due to the high computational cost of ANNs, we used Bagging decision tree to reduce the dimensionality of the data, selecting the markers that accumulated 70% of the total importance. An ANN with three hidden layers was run, each varying from 1 to 40 neurons summing 64,000 neural networks. The network architectures with the best predictive ability were selected. The best architectures were composed by 4, 15, and 33 neurons in the first, second and third hidden layers, respectively, for yield, and by 13, 20, and 24 neurons, respectively for rust resistance. The predictive ability was greater when using ANN with three hidden layers than using one hidden layer and GBLUP, with 0.72 and 0.88 for yield and coffee leaf rust resistance, respectively. The concordance rate (CR) of the 10% larger markers effects among the methods varied between 10% and 13.8%, for additive effects and between 5.4% and 11.9% for dominance effects. The narrow-sense ([Image: see text] ) and dominance-only ([Image: see text] ) heritability estimates were 0.25 and 0.06, respectively, for yield, and 0.67 and 0.03, respectively for rust resistance. The ANN was able to estimate the heritabilities from an additive-dominance genomic architectures and the ANN with three hidden layers obtained best predictive ability when compared with those obtained from GBLUP and ANN with one hidden layer.
format Online
Article
Text
id pubmed-8791507
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-87915072022-01-27 Marker effects and heritability estimates using additive-dominance genomic architectures via artificial neural networks in Coffea canephora Coelho de Sousa, Ithalo Nascimento, Moysés de Castro Sant’anna, Isabela Teixeira Caixeta, Eveline Ferreira Azevedo, Camila Damião Cruz, Cosme Lopes da Silva, Felipe Ruas Alkimim, Emilly Campana Nascimento, Ana Carolina Vergara Lopes Serão, Nick PLoS One Research Article Many methodologies are used to predict the genetic merit in animals and plants, but some of them require priori assumptions that may increase the complexity of the model. Artificial neural network (ANN) has advantage to not require priori assumptions about the relationships between inputs and the output allowing great flexibility to handle different types of complex non-additive effects, such as dominance and epistasis. Despite this advantage, the biological interpretability of ANNs is still limited. The aim of this research was to estimate the heritability and markers effects for two traits in Coffea canephora using an additive-dominance architecture ANN and to compare it with genomic best linear unbiased prediction (GBLUP). The data used consists of 51 clones of C. canephora varietal Conilon, 32 of varietal group Robusta and 82 intervarietal hybrids. From this, 165 phenotyped individuals were genotyped for 14,387 SNPs. Due to the high computational cost of ANNs, we used Bagging decision tree to reduce the dimensionality of the data, selecting the markers that accumulated 70% of the total importance. An ANN with three hidden layers was run, each varying from 1 to 40 neurons summing 64,000 neural networks. The network architectures with the best predictive ability were selected. The best architectures were composed by 4, 15, and 33 neurons in the first, second and third hidden layers, respectively, for yield, and by 13, 20, and 24 neurons, respectively for rust resistance. The predictive ability was greater when using ANN with three hidden layers than using one hidden layer and GBLUP, with 0.72 and 0.88 for yield and coffee leaf rust resistance, respectively. The concordance rate (CR) of the 10% larger markers effects among the methods varied between 10% and 13.8%, for additive effects and between 5.4% and 11.9% for dominance effects. The narrow-sense ([Image: see text] ) and dominance-only ([Image: see text] ) heritability estimates were 0.25 and 0.06, respectively, for yield, and 0.67 and 0.03, respectively for rust resistance. The ANN was able to estimate the heritabilities from an additive-dominance genomic architectures and the ANN with three hidden layers obtained best predictive ability when compared with those obtained from GBLUP and ANN with one hidden layer. Public Library of Science 2022-01-26 /pmc/articles/PMC8791507/ /pubmed/35081139 http://dx.doi.org/10.1371/journal.pone.0262055 Text en © 2022 Coelho de Sousa et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Coelho de Sousa, Ithalo
Nascimento, Moysés
de Castro Sant’anna, Isabela
Teixeira Caixeta, Eveline
Ferreira Azevedo, Camila
Damião Cruz, Cosme
Lopes da Silva, Felipe
Ruas Alkimim, Emilly
Campana Nascimento, Ana Carolina
Vergara Lopes Serão, Nick
Marker effects and heritability estimates using additive-dominance genomic architectures via artificial neural networks in Coffea canephora
title Marker effects and heritability estimates using additive-dominance genomic architectures via artificial neural networks in Coffea canephora
title_full Marker effects and heritability estimates using additive-dominance genomic architectures via artificial neural networks in Coffea canephora
title_fullStr Marker effects and heritability estimates using additive-dominance genomic architectures via artificial neural networks in Coffea canephora
title_full_unstemmed Marker effects and heritability estimates using additive-dominance genomic architectures via artificial neural networks in Coffea canephora
title_short Marker effects and heritability estimates using additive-dominance genomic architectures via artificial neural networks in Coffea canephora
title_sort marker effects and heritability estimates using additive-dominance genomic architectures via artificial neural networks in coffea canephora
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8791507/
https://www.ncbi.nlm.nih.gov/pubmed/35081139
http://dx.doi.org/10.1371/journal.pone.0262055
work_keys_str_mv AT coelhodesousaithalo markereffectsandheritabilityestimatesusingadditivedominancegenomicarchitecturesviaartificialneuralnetworksincoffeacanephora
AT nascimentomoyses markereffectsandheritabilityestimatesusingadditivedominancegenomicarchitecturesviaartificialneuralnetworksincoffeacanephora
AT decastrosantannaisabela markereffectsandheritabilityestimatesusingadditivedominancegenomicarchitecturesviaartificialneuralnetworksincoffeacanephora
AT teixeiracaixetaeveline markereffectsandheritabilityestimatesusingadditivedominancegenomicarchitecturesviaartificialneuralnetworksincoffeacanephora
AT ferreiraazevedocamila markereffectsandheritabilityestimatesusingadditivedominancegenomicarchitecturesviaartificialneuralnetworksincoffeacanephora
AT damiaocruzcosme markereffectsandheritabilityestimatesusingadditivedominancegenomicarchitecturesviaartificialneuralnetworksincoffeacanephora
AT lopesdasilvafelipe markereffectsandheritabilityestimatesusingadditivedominancegenomicarchitecturesviaartificialneuralnetworksincoffeacanephora
AT ruasalkimimemilly markereffectsandheritabilityestimatesusingadditivedominancegenomicarchitecturesviaartificialneuralnetworksincoffeacanephora
AT campananascimentoanacarolina markereffectsandheritabilityestimatesusingadditivedominancegenomicarchitecturesviaartificialneuralnetworksincoffeacanephora
AT vergaralopesseraonick markereffectsandheritabilityestimatesusingadditivedominancegenomicarchitecturesviaartificialneuralnetworksincoffeacanephora