About Us | Help Videos | Contact Us | Subscriptions
 

Crop Science Abstract - Special Submissions-Genotype by Environment Interactions

A Hierarchical Bayesian Estimation Model for Multienvironment Plant Breeding Trials in Successive Years

 

This article in CS

  1. Vol. 56 No. 5, p. 2260-2276
    unlockOPEN ACCESS
     
    Received: Aug 06, 2015
    Accepted: Nov 17, 2015
    Published: February 12, 2016


    * Corresponding author(s): j.crossa@cgiar.org
 View
 Download
 Alerts
 Permissions
Request Permissions
 Share

doi:10.2135/cropsci2015.08.0475
  1. Diego Jarquína,
  2. Sergio Pérez-Elizaldeb,
  3. Juan Burgueñoc and
  4. José Crossa *c
  1. a Dep. of Agronomy and Horticulture, Univ. of Nebraska–Lincoln, 321 Keim Hall, Lincoln, NE, 68503-0915
    b Colegio de Postgraduados, Km. 36.5 Carretera México–Texcoco, Montecillo, Estado de México, 56230, Mexico
    c Biometrics and Statistics Unit (BSU), International Maize and Wheat Improvement Center (CIMMYT), Apdo. Postal 6-641, 06600, Mexico D.F., Mexico

Abstract

In agriculture and plant breeding, multienvironment trials over multiple years are conducted to evaluate and predict genotypic performance under different environmental conditions and to analyze, study, and interpret genotype × environment interaction (G × E). In this study, we propose a hierarchical Bayesian formulation of a linear–bilinear model, where the conditional conjugate prior for the bilinear (multiplicative) G × E term is the matrix von Mises–Fisher (mVMF) distribution (with environments and sites defined as synonymous). A hierarchical normal structure is assumed for linear effects of sites, and priors for precision parameters are assumed to follow gamma distributions. Bivariate highest posterior density (HPD) regions for the posterior multiplicative components of the interaction are shown within the usual biplots. Simulated and real maize (Zea mays L.) breeding multisite data sets were analyzed. Results showed that the proposed model facilitates identifying groups of genotypes and sites that cause G × E across years and within years, since the hierarchical Bayesian structure allows using plant breeding data from different years by borrowing information among them. This model offers the researcher valuable information about G × E patterns not only for each 1-yr period of the breeding trials but also for the general process that originates the response across these periods.

  Please view the pdf by using the Full Text (PDF) link under 'View' to the left.

Copyright © 2016. Copyright © by the Crop Science Society of America, Inc.