Prediction of genetic values according to the dimensionality reduction of SNP's markers in complex models

Author:

Siqueira Michele Jorge Silva1,Barbosa Ivan de Paiva2,Chagas Francyse Edite de Oliveira2,Júnior Antônio Carlos da Silva3ORCID,Cruz Cosme Damião2,Nascimento Moysés2

Affiliation:

1. ESALQ-USP: Universidade de Sao Paulo Escola Superior de Agricultura Luiz de Queiroz

2. UFV: Universidade Federal de Vicosa

3. Universidade Federal de Vicosa

Abstract

Abstract The presence of non-informative markers in Genome Wide Selection (GWS) needs to be evaluated so that the genomic prediction is more efficient in a breeding program. This study proposes to evaluate the efficiency of RR-BLUP after reducing the dimensionality of SNP's markers in the presence of different levels of dominance, heritability, and epistatic interactions in order to demonstrate that the results obtained with reduced information improve prediction and preserve the same biological conclusions when using a larger data set. 10 F2 populations of a diploid species (2n = 2x = 20) with an effective size of 1000 individuals were simulated, involved the random combination of 2000 gametes generated from contrasting homozygous parents. 10 linkage groups (LG) with a size of 100 cM each and comprised 2010 bi-allelic SNP´s distributed equally and equidistant form. Nine traits were simulated, formed by different degrees of dominance, heritability, and epistatic interactions. The dimensionality reduction was performed randomly in the simulated population and then the efficiency of RR-BLUP was tested in two different studies. The parameters square of correlation (r2), root mean squares error (RMSE), and the Akaike Information Criterion (AIC) was used to evaluate the efficiency of the model used in the RR-BLUP. The results obtained from the reduced information predicted by the RR-BLUP were able to improve the prediction and preserve the same biological conclusions when using a larger data set. Non-informational or small effect markers can be removed from the original data set. The inclusion of dominance effects was an efficient strategy to improve predictive capacity.

Publisher

Research Square Platform LLC

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