Genomic prediction of dichotomous traits with Bayesian logistic models

被引:0
|
作者
Frank Technow
Albrecht E. Melchinger
机构
[1] University of Hohenheim,Department of Applied Genetics, Institute of Plant Breeding, Seed Science and Population Genetics
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关键词
Quantitative Trait Locus; Generalize Linear Model; Prediction Accuracy; Genomic Prediction; Finite Mixture;
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摘要
Bayesian methods are a popular choice for genomic prediction of genotypic values. The methodology is well established for traits with approximately Gaussian phenotypic distribution. However, numerous important traits are of dichotomous nature and the phenotypic counts observed follow a Binomial distribution. The standard Gaussian generalized linear models (GLM) are not statistically valid for this type of data. Therefore, we implemented Binomial GLM with logit link function for the BayesB and Bayesian GBLUP genomic prediction methods. We compared these models with their standard Gaussian counterparts using two experimental data sets from plant breeding, one on female fertility in wheat and one on haploid induction in maize, as well as a simulated data set. With the aid of the simulated data referring to a bi-parental population of doubled haploid lines, we further investigated the influence of training set size (N), number of independent Bernoulli trials for trait evaluation (ni) and genetic architecture of the trait on genomic prediction accuracies and abilities in general and on the relative performance of our models. For BayesB, we in addition implemented finite mixture Binomial GLM to account for overdispersion. We found that prediction accuracies increased with increasing N and ni. For the simulated and experimental data sets, we found Binomial GLM to be superior to Gaussian models for small ni, but that for large ni Gaussian models might be used as ad hoc approximations. We further show with simulated and real data sets that accounting for overdispersion in Binomial data can markedly increase the prediction accuracy.
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页码:1133 / 1143
页数:10
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