Literature DB >> 20667165

Radial basis function regression methods for predicting quantitative traits using SNP markers.

Nanye Long1, Daniel Gianola, Guilherme J M Rosa, Kent A Weigel, Andreas Kranis, Oscar González-Recio.   

Abstract

A challenge when predicting total genetic values for complex quantitative traits is that an unknown number of quantitative trait loci may affect phenotypes via cryptic interactions. If markers are available, assuming that their effects on phenotypes are additive may lead to poor predictive ability. Non-parametric radial basis function (RBF) regression, which does not assume a particular form of the genotype-phenotype relationship, was investigated here by simulation and analysis of body weight and food conversion rate data in broilers. The simulation included a toy example in which an arbitrary non-linear genotype-phenotype relationship was assumed, and five different scenarios representing different broad sense heritability levels (0.1, 0.25, 0.5, 0.75 and 0.9) were created. In addition, a whole genome simulation was carried out, in which three different gene action modes (pure additive, additive+dominance and pure epistasis) were considered. In all analyses, a training set was used to fit the model and a testing set was used to evaluate predictive performance. The latter was measured by correlation and predictive mean-squared error (PMSE) on the testing data. For comparison, a linear additive model known as Bayes A was used as benchmark. Two RBF models with single nucleotide polymorphism (SNP)-specific (RBF I) and common (RBF II) weights were examined. Results indicated that, in the presence of complex genotype-phenotype relationships (i.e. non-linearity and non-additivity), RBF outperformed Bayes A in predicting total genetic values using SNP markers. Extension of Bayes A to include all additive, dominance and epistatic effects could improve its prediction accuracy. RBF I was generally better than RBF II, and was able to identify relevant SNPs in the toy example.

Mesh:

Year:  2010        PMID: 20667165     DOI: 10.1017/S0016672310000157

Source DB:  PubMed          Journal:  Genet Res (Camb)        ISSN: 0016-6723            Impact factor:   1.588


  18 in total

Review 1.  Predicting genetic predisposition in humans: the promise of whole-genome markers.

Authors:  Gustavo de los Campos; Daniel Gianola; David B Allison
Journal:  Nat Rev Genet       Date:  2010-11-03       Impact factor: 53.242

2.  Marker-assisted prediction of non-additive genetic values.

Authors:  Nanye Long; Daniel Gianola; Guilherme J M Rosa; Kent A Weigel
Journal:  Genetica       Date:  2011-06-15       Impact factor: 1.082

3.  Application of support vector regression to genome-assisted prediction of quantitative traits.

Authors:  Nanye Long; Daniel Gianola; Guilherme J M Rosa; Kent A Weigel
Journal:  Theor Appl Genet       Date:  2011-07-08       Impact factor: 5.699

4.  Exploring the areas of applicability of whole-genome prediction methods for Asian rice (Oryza sativa L.).

Authors:  Akio Onogi; Osamu Ideta; Yuto Inoshita; Kaworu Ebana; Takuma Yoshioka; Masanori Yamasaki; Hiroyoshi Iwata
Journal:  Theor Appl Genet       Date:  2014-10-24       Impact factor: 5.699

5.  Genome-wide prediction of discrete traits using Bayesian regressions and machine learning.

Authors:  Oscar González-Recio; Selma Forni
Journal:  Genet Sel Evol       Date:  2011-02-17       Impact factor: 4.297

6.  Predicting complex quantitative traits with Bayesian neural networks: a case study with Jersey cows and wheat.

Authors:  Daniel Gianola; Hayrettin Okut; Kent A Weigel; Guilherme Jm Rosa
Journal:  BMC Genet       Date:  2011-10-07       Impact factor: 2.797

7.  Comparison between linear and non-parametric regression models for genome-enabled prediction in wheat.

Authors:  Paulino Pérez-Rodríguez; Daniel Gianola; Juan Manuel González-Camacho; José Crossa; Yann Manès; Susanne Dreisigacker
Journal:  G3 (Bethesda)       Date:  2012-12-01       Impact factor: 3.154

8.  Predicting genetic values: a kernel-based best linear unbiased prediction with genomic data.

Authors:  Ulrike Ober; Malena Erbe; Nanye Long; Emilio Porcu; Martin Schlather; Henner Simianer
Journal:  Genetics       Date:  2011-04-21       Impact factor: 4.562

9.  Estimating Dynamic Treatment Regimes in Mobile Health Using V-learning.

Authors:  Daniel J Luckett; Eric B Laber; Anna R Kahkoska; David M Maahs; Elizabeth Mayer-Davis; Michael R Kosorok
Journal:  J Am Stat Assoc       Date:  2019-04-17       Impact factor: 5.033

10.  Using whole-genome sequence data to predict quantitative trait phenotypes in Drosophila melanogaster.

Authors:  Ulrike Ober; Julien F Ayroles; Eric A Stone; Stephen Richards; Dianhui Zhu; Richard A Gibbs; Christian Stricker; Daniel Gianola; Martin Schlather; Trudy F C Mackay; Henner Simianer
Journal:  PLoS Genet       Date:  2012-05-03       Impact factor: 5.917

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