Literature DB >> 23222650

Genomic prediction in animals and plants: simulation of data, validation, reporting, and benchmarking.

Hans D Daetwyler1, Mario P L Calus, Ricardo Pong-Wong, Gustavo de Los Campos, John M Hickey.   

Abstract

The genomic prediction of phenotypes and breeding values in animals and plants has developed rapidly into its own research field. Results of genomic prediction studies are often difficult to compare because data simulation varies, real or simulated data are not fully described, and not all relevant results are reported. In addition, some new methods have been compared only in limited genetic architectures, leading to potentially misleading conclusions. In this article we review simulation procedures, discuss validation and reporting of results, and apply benchmark procedures for a variety of genomic prediction methods in simulated and real example data. Plant and animal breeding programs are being transformed by the use of genomic data, which are becoming widely available and cost-effective to predict genetic merit. A large number of genomic prediction studies have been published using both simulated and real data. The relative novelty of this area of research has made the development of scientific conventions difficult with regard to description of the real data, simulation of genomes, validation and reporting of results, and forward in time methods. In this review article we discuss the generation of simulated genotype and phenotype data, using approaches such as the coalescent and forward in time simulation. We outline ways to validate simulated data and genomic prediction results, including cross-validation. The accuracy and bias of genomic prediction are highlighted as performance indicators that should be reported. We suggest that a measure of relatedness between the reference and validation individuals be reported, as its impact on the accuracy of genomic prediction is substantial. A large number of methods were compared in example simulated and real (pine and wheat) data sets, all of which are publicly available. In our limited simulations, most methods performed similarly in traits with a large number of quantitative trait loci (QTL), whereas in traits with fewer QTL variable selection did have some advantages. In the real data sets examined here all methods had very similar accuracies. We conclude that no single method can serve as a benchmark for genomic prediction. We recommend comparing accuracy and bias of new methods to results from genomic best linear prediction and a variable selection approach (e.g., BayesB), because, together, these methods are appropriate for a range of genetic architectures. An accompanying article in this issue provides a comprehensive review of genomic prediction methods and discusses a selection of topics related to application of genomic prediction in plants and animals.

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Year:  2012        PMID: 23222650      PMCID: PMC3567728          DOI: 10.1534/genetics.112.147983

Source DB:  PubMed          Journal:  Genetics        ISSN: 0016-6731            Impact factor:   4.562


  89 in total

1.  THE NUMBER OF ALLELES THAT CAN BE MAINTAINED IN A FINITE POPULATION.

Authors:  M KIMURA; J F CROW
Journal:  Genetics       Date:  1964-04       Impact factor: 4.562

2.  Accuracy of genomic predictions of residual feed intake and 250-day body weight in growing heifers using 625,000 single nucleotide polymorphism markers.

Authors:  J E Pryce; J Arias; P J Bowman; S R Davis; K A Macdonald; G C Waghorn; W J Wales; Y J Williams; R J Spelman; B J Hayes
Journal:  J Dairy Sci       Date:  2012-04       Impact factor: 4.034

3.  Increased accuracy of artificial selection by using the realized relationship matrix.

Authors:  B J Hayes; P M Visscher; M E Goddard
Journal:  Genet Res (Camb)       Date:  2009-02       Impact factor: 1.588

Review 4.  Genome-enabled prediction using the BLR (Bayesian Linear Regression) R-package.

Authors:  Gustavo de Los Campos; Paulino Pérez; Ana I Vazquez; José Crossa
Journal:  Methods Mol Biol       Date:  2013

5.  The sampling distribution of linkage disequilibrium under an infinite allele model without selection.

Authors:  R R Hudson
Journal:  Genetics       Date:  1985-03       Impact factor: 4.562

6.  Prediction of genetic values of quantitative traits in plant breeding using pedigree and molecular markers.

Authors:  José Crossa; Gustavo de Los Campos; Paulino Pérez; Daniel Gianola; Juan Burgueño; José Luis Araus; Dan Makumbi; Ravi P Singh; Susanne Dreisigacker; Jianbing Yan; Vivi Arief; Marianne Banziger; Hans-Joachim Braun
Journal:  Genetics       Date:  2010-09-02       Impact factor: 4.562

7.  Reliability of direct genomic values for animals with different relationships within and to the reference population.

Authors:  M Pszczola; T Strabel; H A Mulder; M P L Calus
Journal:  J Dairy Sci       Date:  2012-01       Impact factor: 4.034

8.  A two-step approach combining the Gompertz growth model with genomic selection for longitudinal data.

Authors:  Ricardo Pong-Wong; Georgia Hadjipavlou
Journal:  BMC Proc       Date:  2010-03-31

9.  Accuracy of multi-trait genomic selection using different methods.

Authors:  Mario P L Calus; Roel F Veerkamp
Journal:  Genet Sel Evol       Date:  2011-07-05       Impact factor: 4.297

10.  Forward-time simulations of human populations with complex diseases.

Authors:  Bo Peng; Christopher I Amos; Marek Kimmel
Journal:  PLoS Genet       Date:  2007-02-15       Impact factor: 5.917

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  136 in total

Review 1.  Genomic approaches to selection in outcrossing perennials: focus on essential oil crops.

Authors:  David Kainer; Robert Lanfear; William J Foley; Carsten Külheim
Journal:  Theor Appl Genet       Date:  2015-08-04       Impact factor: 5.699

2.  An Equation to Predict the Accuracy of Genomic Values by Combining Data from Multiple Traits, Populations, or Environments.

Authors:  Yvonne C J Wientjes; Piter Bijma; Roel F Veerkamp; Mario P L Calus
Journal:  Genetics       Date:  2015-12-04       Impact factor: 4.562

3.  Optimizing the allocation of resources for genomic selection in one breeding cycle.

Authors:  Christian Riedelsheimer; Albrecht E Melchinger
Journal:  Theor Appl Genet       Date:  2013-08-27       Impact factor: 5.699

4.  Moving Beyond Managing Realized Genomic Relationship in Long-Term Genomic Selection.

Authors:  Herman De Beukelaer; Yvonne Badke; Veerle Fack; Geert De Meyer
Journal:  Genetics       Date:  2017-04-04       Impact factor: 4.562

5.  An efficient method to handle the 'large p, small n' problem for genomewide association studies using Haseman-Elston regression.

Authors:  Bujun Mei; Zhihua Wang
Journal:  J Genet       Date:  2016-12       Impact factor: 1.166

6.  Genomic prediction using an iterative conditional expectation algorithm for a fast BayesC-like model.

Authors:  Linsong Dong; Zhiyong Wang
Journal:  Genetica       Date:  2018-06-11       Impact factor: 1.082

7.  Accurate genomic prediction of Coffea canephora in multiple environments using whole-genome statistical models.

Authors:  Luís Felipe Ventorim Ferrão; Romário Gava Ferrão; Maria Amélia Gava Ferrão; Aymbiré Fonseca; Peter Carbonetto; Matthew Stephens; Antonio Augusto Franco Garcia
Journal:  Heredity (Edinb)       Date:  2018-06-25       Impact factor: 3.821

8.  DAIRRy-BLUP: a high-performance computing approach to genomic prediction.

Authors:  Arne De Coninck; Jan Fostier; Steven Maenhout; Bernard De Baets
Journal:  Genetics       Date:  2014-04-15       Impact factor: 4.562

9.  Genomic selection prediction accuracy in a perennial crop: case study of oil palm (Elaeis guineensis Jacq.).

Authors:  David Cros; Marie Denis; Leopoldo Sánchez; Benoit Cochard; Albert Flori; Tristan Durand-Gasselin; Bruno Nouy; Alphonse Omoré; Virginie Pomiès; Virginie Riou; Edyana Suryana; Jean-Marc Bouvet
Journal:  Theor Appl Genet       Date:  2014-12-07       Impact factor: 5.699

10.  Assessing the expected response to genomic selection of individuals and families in Eucalyptus breeding with an additive-dominant model.

Authors:  R T Resende; M D V Resende; F F Silva; C F Azevedo; E K Takahashi; O B Silva-Junior; D Grattapaglia
Journal:  Heredity (Edinb)       Date:  2017-07-05       Impact factor: 3.821

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