Tournaments between markers as a strategy to enhance genomic predictions

Analysis of a large number of markers is crucial in both genome-wide association studies (GWAS) and genome-wide selection (GWS). However there are two methodological issues that restrict statistical analysis: high dimensionality (p≫n) and multicollinearity. Although there are methodologies that can...

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Veröffentlicht in:PloS one 2019-06, Vol.14 (6), p.e0217283-e0217283
Hauptverfasser: Filho, Diógenes Ferreira, Filho, Júlio Sílvio de Sousa Bueno, Regitano, Luciana Correia de Almeida, Alencar, Maurício Mello de, Alves, Rosiana Rodrigues, Meirelles, Sarah Laguna Conceição
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container_volume 14
creator Filho, Diógenes Ferreira
Filho, Júlio Sílvio de Sousa Bueno
Regitano, Luciana Correia de Almeida
Alencar, Maurício Mello de
Alves, Rosiana Rodrigues
Meirelles, Sarah Laguna Conceição
description Analysis of a large number of markers is crucial in both genome-wide association studies (GWAS) and genome-wide selection (GWS). However there are two methodological issues that restrict statistical analysis: high dimensionality (p≫n) and multicollinearity. Although there are methodologies that can be used to fit models for data with high dimensionality (eg, the Bayesian Lasso), a big problem that can occurs in this cases is that the predictive ability of the model should perform well for the individuals used to fit the model, but should not perform well for other individuals, restricting the applicability of the model. This problem can be circumvent by applying some selection methodology to reduce the number of markers (but keeping the markers associated with the phenotypic trait) before adjusting a model to predict GBVs. We revisit a tournament-based strategy between marker samples, where each sample has good statistical properties for estimation: n>p and low collinearity. Such tournaments are elaborated using multiple linear regression to eliminate markers. This method is adapted from previous works found in the literature. We used simulated data as well as real data derived from a study with SNPs in beef cattle. Tournament strategies not only circumvent the p≫n issue, but also minimize spurious associations. For real data, when we selected a few more than 20 markers, we obtained correlations greater than 0.70 between predicted Genomic Breeding Values (GBVs) and phenotypes in validation groups of a cross-validation scheme; and when we selected a larger number of markers (more than 100), the correlations exceeded 0.90, showing the efficiency in identifying relevant SNPs (or segregations) for both GWAS and GWS. In the simulation study, we obtained similar results.
doi_str_mv 10.1371/journal.pone.0217283
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subjects Animals
Bayesian analysis
Beef
Beef cattle
Biology and life sciences
Breeding
Cattle
Collinearity
Computer simulation
Correlation
Databases, Nucleic Acid
Estimates
Genetic Markers
Genetic research
Genetics
Genome
Genome-Wide Association Study
Genomes
Genomics
Hypotheses
Linear models (Statistics)
Markers
Mathematical models
Models, Genetic
Phenotypes
Physical Sciences
Polymorphism, Single Nucleotide
Predictions
Regression analysis
Research and analysis methods
Segregations
Single nucleotide polymorphisms
Statistical analysis
Statistical methods
Statistics
Tournaments & championships
title Tournaments between markers as a strategy to enhance genomic predictions
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