Abstract

Whole genome prediction models are useful tools for breeders when selecting candidate individuals early in life for rapid genetic gains. However, most prediction models developed so far assume that the response variable is continuous and that its empirical distribution can be approximated by a Gaussian model. A few models have been developed for ordered categorical phenotypes, but there is a lack of genomic prediction models for count data. There are well-established regression models for count data that cannot be used for genomic-enabled prediction because they were developed for a large sample size (n) and a small number of parameters (p); however, the rule in genomic-enabled prediction is that p is much larger than the sample size n. Here we propose a Bayesian mixed negative binomial (BMNB) regression model for counts, and we present the conditional distributions necessary to efficiently implement a Gibbs sampler. The proposed Bayesian inference can be implemented routinely. We evaluated the proposed BMNB model together with a Poisson model, a Normal model with untransformed response, and a Normal model with transformed response using a logarithm, and applied them to two real wheat datasets from the International Maize and Wheat Improvement Center. Based on the criteria used for assessing genomic prediction accuracy, results indicated that the BMNB model is a viable alternative for analyzing count data.

Highlights

  • Of all the computationally intensive methods for fitting complex multilevel models, the Gibbs sampler is most popular

  • In this paper, we provide a derivation of the closed-form Gibbs sampler for implementing a Bayesian mixed negative binomial (BMNB) regression model for counts applied in genomic selection

  • For the data simulated according to Model Pois, we see that the estimates of β0 and σu2 are close to the true values when fitting both Models NB and Pois

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Summary

Introduction

Of all the computationally intensive methods for fitting complex multilevel models, the Gibbs sampler is most popular. Its popularity is due to its simplicity and its ability to effec-. Montesinos-López is a Biometrician at the Biometrics and Statistics Unit of the International Maize and Wheat Improvement Center (CIMMYT), México, DF, México. Abelardo Montesinos-López is a PhD Student in the Departamento de Estadística, Centro de Investigación en Matemáticas (CIMAT), Guanajuato, 36240 Guanajuato, México. Paulino Pérez-Rodríguez is a Professor of Statistics at Colegio de Postgraduados, CP 56230 Montecillos, Edo. de México, México. Kent Eskridge is a Professor of Statistics, Deparment of Statistics at the University of Nebraska, Lincoln, NE 68583-0963, USA. Philomin Juliana is a PhD Student at the

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