Literature DB >> 23629460

Sensitivity to prior specification in Bayesian genome-based prediction models.

Christina Lehermeier1, Valentin Wimmer, Theresa Albrecht, Hans-Jürgen Auinger, Daniel Gianola, Volker J Schmid, Chris-Carolin Schön.   

Abstract

Different statistical models have been proposed for maximizing prediction accuracy in genome-based prediction of breeding values in plant and animal breeding. However, little is known about the sensitivity of these models with respect to prior and hyperparameter specification, because comparisons of prediction performance are mainly based on a single set of hyperparameters. In this study, we focused on Bayesian prediction methods using a standard linear regression model with marker covariates coding additive effects at a large number of marker loci. By comparing different hyperparameter settings, we investigated the sensitivity of four methods frequently used in genome-based prediction (Bayesian Ridge, Bayesian Lasso, BayesA and BayesB) to specification of the prior distribution of marker effects. We used datasets simulated according to a typical maize breeding program differing in the number of markers and the number of simulated quantitative trait loci affecting the trait. Furthermore, we used an experimental maize dataset, comprising 698 doubled haploid lines, each genotyped with 56110 single nucleotide polymorphism markers and phenotyped as testcrosses for the two quantitative traits grain dry matter yield and grain dry matter content. The predictive ability of the different models was assessed by five-fold cross-validation. The extent of Bayesian learning was quantified by calculation of the Hellinger distance between the prior and posterior densities of marker effects. Our results indicate that similar predictive abilities can be achieved with all methods, but with BayesA and BayesB hyperparameter settings had a stronger effect on prediction performance than with the other two methods. Prediction performance of BayesA and BayesB suffered substantially from a non-optimal choice of hyperparameters.

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Year:  2013        PMID: 23629460     DOI: 10.1515/sagmb-2012-0042

Source DB:  PubMed          Journal:  Stat Appl Genet Mol Biol        ISSN: 1544-6115


  16 in total

1.  Priors in whole-genome regression: the bayesian alphabet returns.

Authors:  Daniel Gianola
Journal:  Genetics       Date:  2013-05-01       Impact factor: 4.562

2.  Genome-based prediction of maize hybrid performance across genetic groups, testers, locations, and years.

Authors:  Theresa Albrecht; Hans-Jürgen Auinger; Valentin Wimmer; Joseph O Ogutu; Carsten Knaak; Milena Ouzunova; Hans-Peter Piepho; Chris-Carolin Schön
Journal:  Theor Appl Genet       Date:  2014-04-11       Impact factor: 5.699

Review 3.  Walking through the statistical black boxes of plant breeding.

Authors:  Alencar Xavier; William M Muir; Bruce Craig; Katy Martin Rainey
Journal:  Theor Appl Genet       Date:  2016-07-19       Impact factor: 5.699

4.  Usefulness of multiparental populations of maize (Zea mays L.) for genome-based prediction.

Authors:  Christina Lehermeier; Nicole Krämer; Eva Bauer; Cyril Bauland; Christian Camisan; Laura Campo; Pascal Flament; Albrecht E Melchinger; Monica Menz; Nina Meyer; Laurence Moreau; Jesús Moreno-González; Milena Ouzunova; Hubert Pausch; Nicolas Ranc; Wolfgang Schipprack; Manfred Schönleben; Hildrun Walter; Alain Charcosset; Chris-Carolin Schön
Journal:  Genetics       Date:  2014-09       Impact factor: 4.562

5.  A robust Bayesian genome-based median regression model.

Authors:  Abelardo Montesinos-López; Osval A Montesinos-López; Enrique R Villa-Diharce; Daniel Gianola; José Crossa
Journal:  Theor Appl Genet       Date:  2019-02-12       Impact factor: 5.699

6.  Improving accuracy of genomic prediction by genetic architecture based priors in a Bayesian model.

Authors:  Ning Gao; Jiaqi Li; Jinlong He; Guang Xiao; Yuanyu Luo; Hao Zhang; Zanmou Chen; Zhe Zhang
Journal:  BMC Genet       Date:  2015-10-14       Impact factor: 2.797

7.  Improving the computational efficiency of fully Bayes inference and assessing the effect of misspecification of hyperparameters in whole-genome prediction models.

Authors:  Wenzhao Yang; Chunyu Chen; Robert J Tempelman
Journal:  Genet Sel Evol       Date:  2015-03-07       Impact factor: 4.297

8.  Ridge, Lasso and Bayesian additive-dominance genomic models.

Authors:  Camila Ferreira Azevedo; Marcos Deon Vilela de Resende; Fabyano Fonseca E Silva; José Marcelo Soriano Viana; Magno Sávio Ferreira Valente; Márcio Fernando Ribeiro Resende; Patricio Muñoz
Journal:  BMC Genet       Date:  2015-08-25       Impact factor: 2.797

9.  Enhancing genome-enabled prediction by bagging genomic BLUP.

Authors:  Daniel Gianola; Kent A Weigel; Nicole Krämer; Alessandra Stella; Chris-Carolin Schön
Journal:  PLoS One       Date:  2014-04-10       Impact factor: 3.240

10.  Impact of imputation methods on the amount of genetic variation captured by a single-nucleotide polymorphism panel in soybeans.

Authors:  A Xavier; William M Muir; Katy M Rainey
Journal:  BMC Bioinformatics       Date:  2016-02-02       Impact factor: 3.169

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